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<art>
	<ui>1471-2164-13-441</ui>
	<ji>1471-2164</ji>
	<fm>
		<dochead>Research article</dochead>
		<bibl>
			<title>
				<p>Transcriptomic and metabolomic profiling of chicken adipose tissue in response to insulin neutralization and fasting</p>
			</title>
			<aug>
				<au id="A1"><snm>Ji</snm><fnm>Bo</fnm><insr iid="I1"/><email>bji@utk.edu</email></au>
				<au id="A2"><snm>Ernest</snm><fnm>Ben</fnm><insr iid="I1"/><email>jernest1@utk.edu</email></au>
				<au id="A3"><snm>Gooding</snm><mi>R</mi><fnm>Jessica</fnm><insr iid="I2"/><email>gooding.jessica@gmail.com</email></au>
				<au id="A4"><snm>Das</snm><fnm>Suchita</fnm><insr iid="I1"/><email>sdas@utk.edu</email></au>
				<au id="A5"><snm>Saxton</snm><mi>M</mi><fnm>Arnold</fnm><insr iid="I1"/><email>asaxton@utk.edu</email></au>
				<au id="A6"><snm>Simon</snm><fnm>Jean</fnm><insr iid="I3"/><email>jesimon@tours.inra.fr</email></au>
				<au id="A7"><snm>Dupont</snm><fnm>Joelle</fnm><insr iid="I4"/><email>joelle.dupont@tours.inra.fr</email></au>
				<au id="A8"><snm>M&#233;tayer-Coustard</snm><fnm>Sonia</fnm><insr iid="I3"/><email>sonia.metayer@tours.inra.fr</email></au>
				<au id="A9"><snm>Campagna</snm><mi>R</mi><fnm>Shawn</fnm><insr iid="I2"/><email>campagna@ion.chem.utk.edu</email></au>
				<au id="A10" ca="yes"><snm>Voy</snm><mi>H</mi><fnm>Brynn</fnm><insr iid="I1"/><insr iid="I5"/><email>bhvoy@utk.edu</email></au>
			</aug>
			<insg>
				<ins id="I1"><p>Department of Animal Science, University of Tennessee, Knoxville, Tennessee, USA</p></ins>
				<ins id="I2"><p>Department of Chemistry, University of Tennessee, Knoxville, Tennessee, USA</p></ins>
				<ins id="I3"><p>Unit&#233; de Recherches Avicoles (U83), Institut National de la Recherche Agronomique (INRA), Nouzilly, 37380, France</p></ins>
				<ins id="I4"><p>Unit&#233; de Physiologie de la Reproduction et des Comportements (UMR85), Institut National de la Recherche Agronomique (INRA), Nouzilly, 37380, France</p></ins>
				<ins id="I5"><p>201E McCord Hall, Morgan Circle Dr. Knoxville, Tennessee, 2640, USA</p></ins>
			</insg>
			<source>BMC Genomics</source>
			<section><title><p>Non-human and non-rodent vertebrate genomics</p></title></section><issn>1471-2164</issn>
			<pubdate>2012</pubdate>
			<volume>13</volume>
			<issue>1</issue>
			<fpage>441</fpage>
			<url>http://www.biomedcentral.com/1471-2164/13/441</url>
			<xrefbib><pubidlist><pubid idtype="doi">10.1186/1471-2164-13-441</pubid><pubid idtype="pmpid">22938590</pubid></pubidlist></xrefbib>
		</bibl>
		<history><rec><date><day>23</day><month>12</month><year>2011</year></date></rec><acc><date><day>25</day><month>8</month><year>2012</year></date></acc><pub><date><day>31</day><month>8</month><year>2012</year></date></pub></history>
		<cpyrt><year>2012</year><collab>Ji et al.; licensee BioMed Central Ltd.</collab><note>This is an Open Access article distributed under the terms of the Creative Commons Attribution License (
				<url>http://creativecommons.org/licenses/by/2.0</url>), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</note></cpyrt>
		<kwdg>
			<kwd>Microarray</kwd>
			<kwd>Chicken adipose tissue</kwd>
			<kwd>Fasting</kwd>
			<kwd>Insulin neutralization</kwd>
			<kwd>Fatty acid metabolism</kwd>
			<kwd>Glucose metabolism</kwd>
			<kwd>Adipogenesis</kwd>
		</kwdg>
		<abs>
			<sec>
				<st>
					<p>Abstract</p>
				</st>
				<sec>
					<st>
						<p>Background</p>
					</st>
					<p>Domestic broiler chickens rapidly accumulate adipose tissue due to intensive genetic selection for rapid growth and are naturally hyperglycemic and insulin resistant, making them an attractive addition to the suite of rodent models used for studies of obesity and type 2 diabetes in humans. Furthermore, chicken adipose tissue is considered as poorly sensitive to insulin and lipolysis is under glucagon control. Excessive fat accumulation is also an economic and environmental concern for the broiler industry due to the loss of feed efficiency and excessive nitrogen wasting, as well as a negative trait for consumers who are increasingly conscious of dietary fat intake. Understanding the control of avian adipose tissue metabolism would both enhance the utility of chicken as a model organism for human obesity and insulin resistance and highlight new approaches to reduce fat deposition in commercial chickens.</p>
				</sec>
				<sec>
					<st>
						<p>Results</p>
					</st>
					<p>We combined transcriptomics and metabolomics to characterize the response of chicken adipose tissue to two energy manipulations, fasting and insulin deprivation in the fed state. Sixteen to 17 day-old commercial broiler chickens (ISA915) were fed <it>ad libitum</it>, fasted for five hours, or fed but deprived of insulin by injections of anti-insulin serum. Pair-wise contrasts of expression data identified a total of 2016 genes that were differentially expressed after correction for multiple testing, with the vast majority of differences due to fasting (1780 genes). Gene Ontology and KEGG pathway analyses indicated that a short term fast impacted expression of genes in a broad selection of pathways related to metabolism, signaling and adipogenesis. The effects of insulin neutralization largely overlapped with the response to fasting, but with more modest effects on adipose tissue metabolism. Tissue metabolomics indicated unique effects of insulin on amino acid metabolism.</p>
				</sec>
				<sec>
					<st>
						<p>Conclusions</p>
					</st>
					<p>Collectively, these data provide a foundation for further study into the molecular basis for adipose expansion in commercial poultry and identify potential pathways through which fat accretion may be attenuated in the future through genetic selection or management practices. They also highlight chicken as a useful model organism in which to study the dynamic relationship between food intake, metabolism, and adipose tissue biology.</p>
				</sec>
			</sec>
		</abs>
	</fm>
	<bdy>
		<sec>
			<st>
				<p>Background</p>
			</st>
			<p>The domestic chicken provides a widespread and relatively inexpensive source of dietary protein for humans. In addition to its role as a food animal, the chicken has a long history as a valuable model research organism 
				<abbrgrp>
					<abbr bid="B1">1</abbr>
				</abbrgrp>. These dual considerations led to the selection of chicken as the first agricultural animal model to be sequenced at the genome level 
				<abbrgrp>
					<abbr bid="B2">2</abbr>
				</abbrgrp>. While chickens have been used heavily for studies of developmental biology and immunology, a number of traits make them a viable model for studies of adipose biology, obesity and insulin resistance. Commercial broiler chickens, in particular, rapidly accumulate excess adipose tissue as a result of genetic selection for growth and are considered &#8220;obese&#8221; relative to leaner egg-laying or wild strains of chickens(rev. in 
				<abbrgrp>
					<abbr bid="B3">3</abbr>
				</abbrgrp>). Chickens mimic the early stage of type 2 diabetes in humans, exhibiting both hyperglycemia (up to 200 mg/dL in the fasting state) and resistance to exogenous insulin 
				<abbrgrp>
					<abbr bid="B4">4</abbr>
					<abbr bid="B5">5</abbr>
				</abbrgrp>. Like humans, but unlike rodents or pigs, chickens rely on liver rather than adipose tissue for the majority of <it>de novo</it> lipid synthesis 
				<abbrgrp>
					<abbr bid="B6">6</abbr>
					<abbr bid="B7">7</abbr>
					<abbr bid="B8">8</abbr>
				</abbrgrp>. Most metabolic genes are conserved with humans, and a number of the quantitative trait loci (QTLs) that have been linked to fatness in chickens contain genes implicated in human susceptibility to obesity or diabetes 
				<abbrgrp>
					<abbr bid="B9">9</abbr>
				</abbrgrp>. Chickens also represent a model for studying mechanisms of adipocyte hyperplasia during development, a process that may exacerbate adult obesity. During at least the first several weeks after hatch, chicken adipose tissue expands more through adipocyte hyperplasia than hypertrophy, and an early increase in adipocyte number is a common feature of some lines genetically selected for excess adiposity 
				<abbrgrp>
					<abbr bid="B10">10</abbr>
					<abbr bid="B11">11</abbr>
				</abbrgrp>. Finally, the egg presents opportunities to directly manipulate the developmental milieu and study the consequences on adipose metabolism via <it>in ovo</it> injection.</p>
			<p>Relatively little is known about regulation of adipose tissue deposition and metabolism in chicken. Because of its relative importance in lipogenesis, most studies have focused on the role of liver in adipose expansion. Several genetic lines of fat and lean chickens have been developed through phenotypic selection, most of which have both elevated plasma levels of very low density lipoprotein (VLDL) and lower levels of plasma glucose, reflecting the importance of hepatic lipogenesis and glucose consumption in fat accretion. Reciprocally, phenotypic selection for low plasma glucose simultaneously selects for fatness 
				<abbrgrp>
					<abbr bid="B12">12</abbr>
				</abbrgrp>. Both chicken and mammalian adipocytes develop through a sequence of molecular triggers including activation of CCAAT-enhancer-binding protein alpha (CEBP&#945;) and peroxisome proliferator-activated receptor gamma (PPAR&#947;) 
				<abbrgrp>
					<abbr bid="B13">13</abbr>
				</abbrgrp>. A clear point of divergence, however, is their responsiveness to insulin. Unlike in mammals, insulin has minimal effect on glucose uptake in chicken adipose tissue 
				<abbrgrp>
					<abbr bid="B14">14</abbr>
				</abbrgrp>. In fact, an avian homolog of the insulin-sensitive glucose transporter GLUT4 has not been identified in the current chicken genome database. Insulin does, however, stimulate uptake of acetate, which is the preferred substrate for <it>de novo</it> lipogenesis in chicken adipocytes, although the magnitude of the effect is relatively modest 
				<abbrgrp>
					<abbr bid="B15">15</abbr>
				</abbrgrp>. Insulin signaling appears to proceed through tissue specific cascades in chicken metabolic tissues. In liver, insulin elicits a signaling cascade that parallels the response in mammals, including tyrosine phosphorylation of insulin receptor &#946;-subunit (IR&#946;), insulin receptor substrate-1 (IRS-1) and Src homology 2 domain-containing substrate (Shc) and activation of phosphatidylinositol 3-kinase (PI3K) 
				<abbrgrp>
					<abbr bid="B16">16</abbr>
					<abbr bid="B17">17</abbr>
				</abbrgrp>. The situation in skeletal muscle is more complex. Tyrosine phosphorylation of IR&#946; and IRS-1 and PI3K activity are not regulated by insulin, whereas events downstream of PI3K (e.g. Akt and P70S6K activation) are accordingly sensitive 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. We recently reported that insulin also does not elicit a classical IR&#946; initiated cascade in chicken adipose tissue, including the downstream steps of Akt and P70S6K activation 
				<abbrgrp>
					<abbr bid="B19">19</abbr>
				</abbrgrp>. Insulin also does not inhibit lipolysis in chicken adipose tissue; glucagon, is the primary lipolytic hormone (rev. in 
				<abbrgrp>
					<abbr bid="B20">20</abbr>
				</abbrgrp>).</p>
			<p>In the present study we simultaneously characterized the effects of a short term (5 hours) fast or neutralization of insulin action (5 hours) on adipose tissue of young (16&#8211;17 day-old), fed commercial broiler chickens. The goals of this study were two-fold. First, we sought to identify pathways activated by feed restriction, reasoning that they may highlight potential strategies for control of fatness through either genetic selection or improved management practices. Simultaneously, we sought to understand the contribution of insulin, if any, into chicken adipose physiology. No experimental model of diabetes exist in chicken: total pancreatectomies are not achievable, and alloxan and streptozotocin are inefficient at destroying pancreatic chicken beta-cells (rev. in 
				<abbrgrp>
					<abbr bid="B5">5</abbr>
				</abbrgrp>). The two treatments were compared to distinguish potential insulin-specific changes from those that could be mimicked by fasting through changes in nutrient availability. Both treatments were shown previously to elicit significant alterations in several plasma metabolic and endocrine parameters 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>; in the studies reported herein, samples of abdominal adipose tissue were issued from the same experiment. Tissue metabolomics was combined with microarrays to bridge the gap between gene expression, metabolic and physiological responses, and to identify the composite effects of both fasting and insulin deprivation on chicken adipose tissue.</p>
		</sec>
		<sec>
			<st>
				<p>Results</p>
			</st>
			<p>Expression levels of a total of 2016 genes were significantly altered by fasting and/or insulin neutralization when compared to fed controls based on an FDR adjusted p-value&#8201;&lt;&#8201;0.05 ( Additional file 
				<supplr sid="S1">1</supplr>; Figure 
				<figr fid="F1">1A</figr>). Sixty-nine percent of these genes showed a fold-change&#8201;&#8805;&#8201;|1.5| (Figure 
				<figr fid="F1">1B</figr>). The majority of changes in expression were attributable to fasting, with 917 up-regulated and 863 down-regulated genes in fasted vs. fed adipose tissue. Insulin neutralization altered expression of 92 genes, 72 of which were also differentially expressed with fasting (Figure 
				<figr fid="F1">1A</figr>). All genes that were affected by both treatments changed in the same direction (i.e., up- or down-regulated in both groups). Real-time RT-PCR was employed to validate differential expression based on the microarray data. Eleven genes were selected based on fold-change or biological functions of interest (Table 
				<tblr tid="T1">1</tblr>). Differential expression under fasting versus fed conditions was validated for all genes except pre-B-cell leukemia homeobox 3 (PBX3). Ten of the eleven genes were also differentially expressed in insulin neutralized compared to fed birds based on QPCR.</p>
			<suppl id="S1">
				<title>
					<p>Additional file 1</p>
				</title>
				<text>
					<p>
						<b>Differentially expressed genes for fasted vs. fed chickens with fold change&#8201;&gt;&#8201;|1.5|.</b> Probe ID, gene symbol, gene title and fold change are provided.</p>
				</text>
				<file name="1471-2164-13-441-S1.xls">
   <p>Click here for file</p>
</file>
			</suppl>
			<fig id="F1"><title><p>Figure 1</p></title><caption><p>Venn diagram of overlapping and unique effects of fasting and insulin neutralization on gene expression</p></caption><text>
   <p><b>Venn diagram of overlapping and unique effects of fasting and insulin neutralization on gene expression.</b> (<b>A</b>) A total of 2016 unique genes were differentially expressed (FDR adjusted p-value &lt;0.05) between one or more pairwise treatment comparisons; (<b>B</b>) A total of 1401 genes with absolute fold change &#8805;1.5 among the differentially expressed genes.</p>
</text><graphic file="1471-2164-13-441-1"/></fig>
			<table id="T1">
				<title>
					<p>Table 1</p>
				</title>
				<caption>
					<p>
						<b>Fold change verification of gene expression by RT-PCR</b>
					</p>
				</caption>
				<tgroup align="left" cols="8">
					<colspec align="left" colname="c1" colnum="1" colwidth="1*"/>
					<colspec align="left" colname="c2" colnum="2" colwidth="1*"/>
					<colspec align="left" colname="c3" colnum="3" colwidth="1*"/>
					<colspec align="left" colname="c4" colnum="4" colwidth="1*"/>
					<colspec align="left" colname="c5" colnum="5" colwidth="1*"/>
					<colspec align="left" colname="c6" colnum="6" colwidth="1*"/>
					<colspec align="left" colname="c7" colnum="7" colwidth="1*"/>
					<colspec align="left" colname="c8" colnum="8" colwidth="1*"/>
					<thead valign="top">
						<row rowsep="1">
							<entry colname="c1" morerows="1">
								<p>
									<b>Gene  symbol</b>
								</p>
							</entry>
							<entry colname="c2" morerows="1">
								<p>
									<b>Gene title</b>
								</p>
							</entry>
							<entry colname="c3" nameend="c5" namest="c3">
								<p>
									<b>Microarray fold change</b>
								</p>
							</entry>
							<entry colname="c6" nameend="c8" namest="c6">
								<p>
									<b>Quantitative PCR fold change</b>
								</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c3">
								<p>
									<b>Fasting  vs. Fed</b>
								</p>
							</entry>
							<entry colname="c4">
								<p>
									<b>Ins-Neu  vs. Fed</b>
								</p>
							</entry>
							<entry colname="c5">
								<p>
									<b>Ins-Neu  vs. Fasting</b>
								</p>
							</entry>
							<entry colname="c6">
								<p>
									<b>Fasting  vs. Fed</b>
								</p>
							</entry>
							<entry colname="c7">
								<p>
									<b>Ins-Neu  vs. Fed</b>
								</p>
							</entry>
							<entry colname="c8">
								<p>
									<b>Ins-Neu  vs. Fasting</b>
								</p>
							</entry>
						</row>
					</thead>
					<tfoot>
						<p>FDR p-value: * p&#8201;&lt;&#8201;0.05, ** p&#8201;&lt;&#8201;0.005, *** p&#8201;&lt;&#8201;0.0005.</p>
					</tfoot>
					<tbody valign="top">
						<row>
							<entry colname="c1">
								<p>FBXO8</p>
							</entry>
							<entry colname="c2">
								<p>F-box protein 8</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>4.16***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.09**</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;1.99***</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>2.59***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>2.76***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>1.06</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DUSP5</p>
							</entry>
							<entry colname="c2">
								<p>Dual specificity phosphatase 5</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>9.43***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.05</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;8.98***</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>8.13***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.69***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;4.82***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>BNIP3</p>
							</entry>
							<entry colname="c2">
								<p>BCL2/adenovirus E1B 19 kDa interacting protein 3</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.98***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.53</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;1.95**</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>3.45***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>2.26***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;1.52*</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PBX3</p>
							</entry>
							<entry colname="c2">
								<p>Pre-B-cell leukemia homeobox 3</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>&#8722;1.62***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.07</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>1.75***</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>&#8722;1.22</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.83***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>2.22***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>IL10RB</p>
							</entry>
							<entry colname="c2">
								<p>Interleukin 10 receptor, beta</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.74***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.02</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;1.71**</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>1.76***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.42*</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;1.24</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>EGR1</p>
							</entry>
							<entry colname="c2">
								<p>Early growth response 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.43*</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>&#8722;1.58</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;3.86**</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>2.58***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>&#8722;1.36</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;3.52***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>NAB1</p>
							</entry>
							<entry colname="c2">
								<p>NGFI-A binding protein 1 (EGR1 binding protein 1)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.43***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.06</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;2.29***</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>1.67**</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.52**</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;1.10</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PDK4</p>
							</entry>
							<entry colname="c2">
								<p>Pyruvate dehydrogenase kinase, isozyme 4</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>17.28***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>7.06**</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;2.45**</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>18.33***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>4.01***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;4.57***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>CTSL2</p>
							</entry>
							<entry colname="c2">
								<p>Cathepsin L2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.09***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.55*</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;1.35*</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>2.96***</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>2.053***</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;1.44</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>AGTR1</p>
							</entry>
							<entry colname="c2">
								<p>Angiotensin II receptor, type 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>4.15 ***</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.05*</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;2.02**</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>3.52**</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.72*</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>&#8722;2.05*</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c1">
								<p>SESN1</p>
							</entry>
							<entry colname="c2">
								<p>Sestrin 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.86**</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.125</p>
							</entry>
							<entry align="char" char="." colname="c5">
								<p>&#8722;1.65</p>
							</entry>
							<entry align="char" char="." colname="c6">
								<p>1.58*</p>
							</entry>
							<entry align="char" char="." colname="c7">
								<p>1.47*</p>
							</entry>
							<entry align="char" char="." colname="c8">
								<p>1.07</p>
							</entry>
						</row>
					</tbody>
				</tgroup>
			</table>
			<p>Genes that were differentially expressed in at least one pairwise comparison were clustered to visualize the similarities between groups and to determine if insulin-neutralized expression profiles were more similar to fasted or to fed status. As shown in Figure 
				<figr fid="F2">2</figr>A, samples within each of the three experimental groups clustered together. The dendrogram also showed that the fasting group was distant from fed and insulin-neutralized groups, which were closer to each other. To further visualize relationships between treatments with regard to gene expression, distinct clusters of genes were extracted and submitted to gene set enrichment analysis to identify GO terms and pathways that were significantly overrepresented among genes contained in these clusters. Seven clusters represented four general patterns of similarities between treatments (Figure 
				<figr fid="F2">2</figr>B). Clusters 1, 3 and 4 consisted of genes with higher expression in fasting compared to both insulin-neutralized and fed conditions, with insulin-neutralized intermediate between fasted and fed. This set of genes was significantly enriched in GO terms related to protein and lipid catabolism and to cell signaling, including regulation of the stress-sensitive NF&#954;B cascade (Table 
				<tblr tid="T2">2</tblr>). These three clusters were also enriched in members of the KEGG pathways ubiquitin mediated proteolysis, sphingolipid metabolism, PPAR signaling, fatty acid metabolism and the peroxisome. The rate-limiting genes for fatty acid oxidation (ACOX1 and CPT1A), along with fatty acid binding proteins 5 and 6, are contained in these three clusters. Clusters 5 and 7 also contained genes with higher levels in fasted vs. the other two groups, but with comparable expression levels between insulin-neutralized and fed, and thus no clear effect of insulin loss. These two clusters were significantly enriched in pathways related to signaling and metabolism, including enzyme linked receptor protein signaling pathway (p&#8201;=&#8201;0.0097) and in the KEGG pathways for glycerolipid metabolism and PPAR. Genes responsible for the latter enrichment include PPAR&#916;, which was recently shown to increase total oxidative metabolism in white adipose tissue 
				<abbrgrp>
					<abbr bid="B21">21</abbr>
				</abbrgrp>. Clusters 2 and 6 contained genes expressed at lowest levels in fasted chickens. Genes in cluster 2 were expressed at intermediate levels in the insulin-neutralized group relative to fed and fasted. This set of genes was significantly enriched in GO annotations related to monosaccharide catabolic process and glucose metabolism, and in genes comprising the KEGG pathways for carbohydrate metabolism, TCA cycle and glycolysis (Table 
				<tblr tid="T2">2</tblr>). Finally, cluster 6 consisted of genes that were also lowest in fasting but showed no clear effect of insulin loss, with similar expression in fed and insulin-neutralized groups. This set of genes was significantly enriched for the KEGG pathways steroid biosynthesis (p&#8201;=&#8201;0.0043), glyoxylate and dicarboxylate metabolism (P&#8201;=&#8201;0.012) and pyruvate metabolism (P&#8201;=&#8201;0.033), along with a number of genes involved in lipid biosynthesis, which was the highest scoring GO category (p&#8201;=&#8201;0.6). Cluster 8 was a distinct, small cluster with variable expression within group and no significant GO or KEGG annotations. </p>
			<fig id="F2"><title><p>Figure 2</p></title><caption><p>Cluster analysis of differentially expressed genes</p></caption><text>
   <p><b>Cluster analysis of differentially expressed genes.</b> The 2016 genes differentially expressed in one or both treatment groups vs. fed controls were subjected to hierarchical clustering to visualize similarities and differences between treatment groups. (<b>A</b>). Hierarchical cluster analysis of the 2016 genes (FDR adjusted p-value &lt;0.05) that were differentially expressed between insulin-neutralized vs. fed and/or fasted vs. fed states. (<b>B</b>) Seven clusters (numbers) representing the most distinct effects of treatment were selected to further analyze expression profiles across treatments. Sample ID number on the X-axis corresponds to treatment group: sample 1&#8211;5, fasted; 6&#8211;10, insulin neutralized; 11&#8211;15,fed control. Y-axis represents relative gene expression value.</p>
</text><graphic file="1471-2164-13-441-2"/></fig>
			<table id="T2">
				<title>
					<p>Table 2</p>
				</title>
				<caption>
					<p>
						<b>Gene ontology (GO) and KEGG annotation for representative clusters of differentially expressed genes</b>
					</p>
				</caption>
				<tgroup align="left" cols="4">
					<colspec align="left" colname="c2" colnum="2" colwidth="1*"/>
					<colspec align="left" colname="c3" colnum="3" colwidth="1*"/>
					<colspec align="right" colname="c4" colnum="4" colwidth="1*"/>
					<thead valign="top">
						<row rowsep="1">
							<entry colname="c1">
								<p>
									<b>Cluster</b>
								</p>
							</entry>
							<entry colname="c2">
								<p>
									<b>Annotation</b>
								</p>
							</entry>
							<entry align="left" colname="c3">
								<p>
									<b>GO term (Biological Process, level 6 or 7) or KEGG pathway name</b>
								</p>
							</entry>
							<entry align="right" colname="c4">
								<p>
									<b>FDR p-value</b>
								</p>
							</entry>
						</row>
					</thead>
					<tbody valign="top">
						<row>
							<entry colname="c1" morerows="16">
								<p>1, 3 and 4 (731 genes)</p>
							</entry>
							<entry colname="c2" morerows="1">
								<p>GO</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Positive regulation of protein metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>6.0 E-3</p>
							</entry>
						</row>
						<row>
							<entry align="left" colname="c3">
								<p>Negative regulation of cellular macromolecule biosynthetic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>7.3 E-3</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Triglyceride metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.0 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Negative regulation of gene expression</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.0 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Proteolysis involved in cellular protein catabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.0 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Negative regulation of kinase activity</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Regulation of transcription, DNA-dependent</p>
							</entry>
							<entry align="right" colname="c4">
								<p>2.1 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Protein phosphorylation</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.3 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Antigen receptor-mediated signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.3 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Regulation of phosphate metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.4 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Regulation of kinase activity</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.4 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Regulation of I-kappaB kinase/NF-kappaB cascade</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2">
								<p>KEGG</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Ubiquitin mediated proteolysis</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.0 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Sphingolipid metabolism</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.8 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>PPAR signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>2.4 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Fatty acid metabolism</p>
							</entry>
							<entry align="right" colname="c4">
								<p>4.6 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Peroxisome</p>
							</entry>
							<entry align="right" colname="c4">
								<p>5.0 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1" morerows="3">
								<p>2 (557 genes)</p>
							</entry>
							<entry colname="c2" morerows="1">
								<p>GO</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Monosaccharide catabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>2.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry align="left" colname="c3">
								<p>DNA dependent DNA replication</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.6 E-3</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Hexose metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.1 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Glucose metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.4 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Regulation of cell shape</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>DNA replication</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Nucleoside triphosphate metabolic</p>
							</entry>
							<entry align="right" colname="c4">
								<p>2.3 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2">
								<p>KEGG</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Glycolysis / Gluconeogenesis</p>
							</entry>
							<entry align="right" colname="c4">
								<p>4.9 E-4</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Citrate cycle (TCA cycle)</p>
							</entry>
							<entry align="right" colname="c4">
								<p>8.9 E-4</p>
							</entry>
						</row>
						<row>
							<entry colname="c1" morerows="1">
								<p>6 (402 genes)</p>
							</entry>
							<entry colname="c2">
								<p>KEGG</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Steroid biosynthesis</p>
							</entry>
							<entry align="right" colname="c4">
								<p>4.4 E-3</p>
							</entry>
						</row>
						<row>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Glyoxylate and dicarboxylate metabolism</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.2 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Pyruvate metabolism</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.3 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1" morerows="1">
								<p>5 and 7 (250 genes)</p>
							</entry>
							<entry colname="c2" morerows="1">
								<p>GO</p>
							</entry>
							<entry align="left" colname="c3">
								<p>Enzyme linked receptor protein signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>9.7 E-3</p>
							</entry>
						</row>
						<row>
							<entry align="left" colname="c3">
								<p>Regulation of cellular protein metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.1 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Negative regulation of macromolecule metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.5 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Transmembrane receptor protein serine/threonine kinase signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.6 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Negative regulation of protein metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>3.7 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Positive regulation of cellular metabolic process</p>
							</entry>
							<entry align="right" colname="c4">
								<p>4.4 E-2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2">
								<p>KEGG</p>
							</entry>
							<entry align="left" colname="c3">
								<p>PPAR signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.0 E-4</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>Glycerolipid metabolism</p>
							</entry>
							<entry align="right" colname="c4">
								<p>1.8 E-2</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry align="left" colname="c3">
								<p>MAPK signaling pathway</p>
							</entry>
							<entry align="right" colname="c4">
								<p>4.6 E-2</p>
							</entry>
						</row>
					</tbody>
				</tgroup>
			</table>
			<p>Global biological responses to fasting and to insulin neutralization were further characterized using KEGG pathway matching, based on genes with statistically significant differential expression (FDR&#8201;&lt;&#8201;0.05) and absolute fold-change &#8805;1.5. Genes altered exclusively by fasting represented a wide range of cellular pathways, indicating significant effects of even a five hour fast on adipose function and metabolism in chicken. Fasting exerted significant effects on pathways related to carbohydrate, amino acid and lipid metabolism and synthesis. Within the categories related to lipid metabolism, fasting up-regulated expression of genes involved in fatty acid oxidation (e.g., acyl-CoA oxidase 1 (ACOX1), acetyl-CoA carboxylase beta (ACACB), carnitine palmitoyltransferase 1A (CPT1A)) and down-regulated expression of genes that control fatty acid, cholesterol and triacylglycerol synthesis (e.g., 1-acylglycerol-3-phosphate O-acyltransferase 9 (AGPAT9), ATP citrate lyase (ACLY), farnesyl diphosphate synthase (FDPS), acetyl-Coenzyme A carboxylase alpha (ACACA) and acetoacetyl-CoA synthetase (AACS)). Fasting also up-regulated expression of many genes involved in proteolysis and amino acid degradation. In addition to pathways highlighted by KEGG analysis, fasting down-regulated a number of genes (e.g., TGF&#946;, BMP) that mediate mesenchymal stem cell (MSC) commitment, an early step in the formation of new adipocytes ( Additional file 
				<supplr sid="S1">1</supplr>). Finally, a number of phosphodiesterases were up-regulated with fasting, presumably in response to the increased plasma glucagon 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp> and subsequent elevations in cyclic adenosine monophosphate (cAMP; Additional file 
				<supplr sid="S1">1</supplr>). Collectively, these categories indicate that chicken adipose tissue responds to a relatively short duration (five hour) fast with sweeping changes in gene expression that suppress synthesis and storage of lipids and other macromolecules and up-regulate mobilization and metabolism of fatty acids and proteins.</p>
			<p>Loss of insulin action also resulted in significant effects on adipose gene expression, the majority of which overlapped with the response to fasting (Table 
				<tblr tid="T3">3</tblr>; Additional file 
				<supplr sid="S2">2</supplr>). Several genes central to energy metabolism were affected. Diacylglycerol O-acyltransferase homolog 2 (DGAT2), which catalyzes the final and only committed step in triacylglycerol synthesis, was down-regulated (10.5-and 6.1-fold, respectively, fasted and insulin neutralized) in both treatment groups relative to the fed group. Conversely, acyl-Coenzyme A binding domain containing 5 (ACBD5) and pyruvate dehydrogenase kinase 4 (PDK4) were significantly up-regulated in both treatments relative to fed controls. ACBD5 is one of a family of long chain fatty acyl CoA trafficking proteins that play roles in both triglyceride synthesis and beta-oxidation 
				<abbrgrp>
					<abbr bid="B22">22</abbr>
				</abbrgrp>. PDK4, which was up-regulated vs. fed by&#8201;~&#8201;17-fold with fasting and 6-fold with insulin neutralization, acts as a fuel switch by phosphorylating and inactivating pyruvate dehydrogenase, shifting metabolism from glycolysis to fatty acid oxidation 
				<abbrgrp>
					<abbr bid="B23">23</abbr>
				</abbrgrp>. Fasting and insulin neutralization also up-regulated expression of the type I angiotensin II receptor (AGTR1). Angiotensin II alters adipocyte lipid metabolism and insulin signaling 
				<abbrgrp>
					<abbr bid="B24">24</abbr>
					<abbr bid="B25">25</abbr>
					<abbr bid="B26">26</abbr>
				</abbrgrp>, and increased AGTR1 expression in adipose tissue is associated with enhanced insulin sensitivity 
				<abbrgrp>
					<abbr bid="B27">27</abbr>
				</abbrgrp>. Finally, a number of genes regulated by both fasting and insulin neutralization function in general processes related to protein synthesis. </p>
			<suppl id="S2">
				<title>
					<p>Additional file 2</p>
				</title>
				<text>
					<p>
						<b>Differentially expressed genes for insulin neutralized vs. fed chickens.</b> Probe ID, gene symbol, gene title and fold change are provided.</p>
				</text>
				<file name="1471-2164-13-441-S2.xls">
   <p>Click here for file</p>
</file>
			</suppl>
			<table id="T3">
				<title>
					<p>Table 3</p>
				</title>
				<caption>
					<p>
						<b>Shared effects of fasting and insulin-neutralization on differential gene expression</b>
					</p>
				</caption>
				<tgroup align="left" cols="4">
					<colspec align="left" colname="c1" colnum="1" colwidth="1*"/>
					<colspec align="left" colname="c2" colnum="2" colwidth="1*"/>
					<colspec align="left" colname="c3" colnum="3" colwidth="1*"/>
					<colspec align="left" colname="c4" colnum="4" colwidth="1*"/>
					<thead valign="top">
						<row rowsep="1">
							<entry colname="c1">
								<p>
									<b>Gene  symbol</b>
								</p>
							</entry>
							<entry colname="c2">
								<p>
									<b>Gene title</b>
								</p>
							</entry>
							<entry colname="c3">
								<p>
									<b>Fold change  Insu-Neu vs. Fed</b>
								</p>
							</entry>
							<entry colname="c4">
								<p>
									<b>Fold change  Fasting vs. Fed</b>
								</p>
							</entry>
						</row>
					</thead>
					<tfoot>
						<p>FDR p-value &lt;0.05.</p>
					</tfoot>
					<tbody valign="top">
						<row>
							<entry colname="c1" nameend="c4" namest="c1">
								<p>
									<b>Up-regulated genes</b>
								</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PDK4</p>
							</entry>
							<entry colname="c2">
								<p>pyruvate dehydrogenase kinase, isozyme 4</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>7.06</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>17.28</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>AOX1</p>
							</entry>
							<entry colname="c2">
								<p>aldehyde oxidase 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.94</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>6.66</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PLEKHH2</p>
							</entry>
							<entry colname="c2">
								<p>pleckstrin homology domain containing, family H (with MyTH4 domain) member 2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.41</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.77</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>FBXO8</p>
							</entry>
							<entry colname="c2">
								<p>F-box protein 8</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.09</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>4.15</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>AGTR1</p>
							</entry>
							<entry colname="c2">
								<p>angiotensin II receptor, type 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.04</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>4.15</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PCMTD1</p>
							</entry>
							<entry colname="c2">
								<p>protein-L-isoaspartate (D-aspartate) O-methyltransferase domain containing 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.99</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.25</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PSME4</p>
							</entry>
							<entry colname="c2">
								<p>proteasome (prosome, macropain) activator subunit 4</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.97</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>3.86</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>ICA1</p>
							</entry>
							<entry colname="c2">
								<p>islet cell autoantigen 1, 69 kDa</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.85</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.8</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>IP6K2</p>
							</entry>
							<entry colname="c2">
								<p>inositol hexakisphosphate kinase 2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.77</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.75</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>UHRF2</p>
							</entry>
							<entry colname="c2">
								<p>ubiquitin-like, containing PHD and RING finger domains, 2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.72</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.89</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>ACBD5</p>
							</entry>
							<entry colname="c2">
								<p>acyl-Coenzyme A binding domain containing 5</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.72</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.51</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>LOC417776</p>
							</entry>
							<entry colname="c2">
								<p>similar to hypothetical protein</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.62</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.84</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>CTSL2</p>
							</entry>
							<entry colname="c2">
								<p>cathepsin L2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.54</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.09</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>ZNF217</p>
							</entry>
							<entry colname="c2">
								<p>zinc finger protein 217</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.54</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.6</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>IFNAR1</p>
							</entry>
							<entry colname="c2">
								<p>Interferon (alpha, beta and omega) receptor 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.52</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>3.47</p>
							</entry>
						</row>
						<row>
							<entry align="left" colname="c1" nameend="c4" namest="c1">
								<p>
									<b>Down-regulated genes</b>
								</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DGAT2</p>
							</entry>
							<entry colname="c2">
								<p>diacylglycerol O-acyltransferase homolog 2 (mouse)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>6.1</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>10.5</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>EEPD1</p>
							</entry>
							<entry colname="c2">
								<p>endonuclease/exonuclease/phosphatase family domain containing 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.4</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.17</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>ANKRD9</p>
							</entry>
							<entry colname="c2">
								<p>ankyrin repeat domain 9</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>2.19</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.98</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DLST</p>
							</entry>
							<entry colname="c2">
								<p>dihydrolipoamide S-succinyltransferase (E2 component of 2-oxo-glutarate complex</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.95</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.76</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>PTP4A3</p>
							</entry>
							<entry colname="c2">
								<p>protein tyrosine phosphatase type IVA, member 3</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.8</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.3</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>HSPA5</p>
							</entry>
							<entry colname="c2">
								<p>heat shock 70 kDa protein 5 (glucose-regulated protein, 78 kDa)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.76</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.74</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>NOLA2</p>
							</entry>
							<entry colname="c2">
								<p>nucleolar protein family A, member 2 (H/ACA small nucleolar RNPs)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.73</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.57</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>MST1R</p>
							</entry>
							<entry colname="c2">
								<p>macrophage stimulating 1 receptor (c-met-related tyrosine kinase)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.71</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.2</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>GRAMD2</p>
							</entry>
							<entry colname="c2">
								<p>GRAM domain containing 2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.69</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.37</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DHDDS</p>
							</entry>
							<entry colname="c2">
								<p>dehydrodolichyl diphosphate synthase</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.63</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.58</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DYNLL2</p>
							</entry>
							<entry colname="c2">
								<p>dynein, light chain, LC8-type 2</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.6</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>2.52</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>CDT1</p>
							</entry>
							<entry colname="c2">
								<p>chromatin licensing and DNA replication factor 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.57</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.51</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>FAHD1</p>
							</entry>
							<entry colname="c2">
								<p>fumarylacetoacetate hydrolase domain containing 1</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.56</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.61</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>DOT1L</p>
							</entry>
							<entry colname="c2">
								<p>DOT1-like, histone H3 methyltransferase (S. cerevisiae)</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.56</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.82</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c1">
								<p>BTBD11</p>
							</entry>
							<entry colname="c2">
								<p>BTB (POZ) domain containing 11</p>
							</entry>
							<entry align="char" char="." colname="c3">
								<p>1.55</p>
							</entry>
							<entry align="char" char="." colname="c4">
								<p>1.71</p>
							</entry>
						</row>
					</tbody>
				</tgroup>
			</table>
			<p>A total of thirteen genes (four up-regulated and nine down-regulated) were differentially expressed only with insulin neutralization (Table 
				<tblr tid="T4">4</tblr>). The most interesting of these responses were upregulation of GCG, which encodes preproglucagon (fold change&#8201;=&#8201;2.91), in parallel with downregulation of the glucagon receptor (LOC425670, fold change&#8201;=&#8201;&#8722;2.77). Other genes uniquely affected by insulin have less clear relevance to adipose biology according to current knowledge.</p>
			<table id="T4">
				<title>
					<p>Table 4</p>
				</title>
				<caption>
					<p>
						<b>Unique effects of insulin neutralization on differential gene expression</b>
					</p>
				</caption>
				<tgroup align="left" cols="6">
					<colspec align="left" colname="c1" colnum="1" colwidth="1*"/>
					<colspec align="left" colname="c2" colnum="2" colwidth="1*"/>
					<colspec align="left" colname="c3" colnum="3" colwidth="1*"/>
					<colspec align="left" colname="c4" colnum="4" colwidth="1*"/>
					<colspec align="left" colname="c5" colnum="5" colwidth="1*"/>
					<colspec align="left" colname="c6" colnum="6" colwidth="1*"/>
					<thead valign="top">
						<row rowsep="1">
							<entry colname="c1" nameend="c2" namest="c1">
								<p>
									<b>Up-regulated genes</b>
								</p>
							</entry>
							<entry colname="c3"/>
							<entry colname="c4" nameend="c5" namest="c4">
								<p>
									<b>Down-regulated genes</b>
								</p>
							</entry>
							<entry colname="c6"/>
						</row>
						<row rowsep="1">
							<entry colname="c1">
								<p>
									<b>Gene  symbol</b>
								</p>
							</entry>
							<entry colname="c2">
								<p>
									<b>Gene title</b>
								</p>
							</entry>
							<entry colname="c3">
								<p>
									<b>Fold  change</b>
								</p>
							</entry>
							<entry colname="c4">
								<p>
									<b>Gene  symbol</b>
								</p>
							</entry>
							<entry colname="c5">
								<p>
									<b>Gene title</b>
								</p>
							</entry>
							<entry colname="c6">
								<p>
									<b>Fold  change</b>
								</p>
							</entry>
						</row>
					</thead>
					<tfoot>
						<p>FDR p-value &lt;0.05.</p>
					</tfoot>
					<tbody valign="top">
						<row>
							<entry colname="c1">
								<p>GCG</p>
							</entry>
							<entry colname="c2">
								<p>Glucagon</p>
							</entry>
							<entry colname="c3">
								<p>2.91</p>
							</entry>
							<entry colname="c4">
								<p>LOC425670</p>
							</entry>
							<entry colname="c5">
								<p>glucagon receptor precursor</p>
							</entry>
							<entry colname="c6">
								<p>2.77</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>TCP11L2</p>
							</entry>
							<entry colname="c2">
								<p>t-complex 11 (mouse)-like 2</p>
							</entry>
							<entry colname="c3">
								<p>2.08</p>
							</entry>
							<entry colname="c4">
								<p>BAK1</p>
							</entry>
							<entry colname="c5">
								<p>BCL2-antagonist/killer 1</p>
							</entry>
							<entry colname="c6">
								<p>1.83</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>LOC416916</p>
							</entry>
							<entry colname="c2">
								<p>hypothetical LOC416916</p>
							</entry>
							<entry colname="c3">
								<p>1.98</p>
							</entry>
							<entry colname="c4">
								<p>CCT3</p>
							</entry>
							<entry colname="c5">
								<p>chaperonin containing TCP1, subunit 3 (gamma)</p>
							</entry>
							<entry colname="c6">
								<p>1.62</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>MAGI1</p>
							</entry>
							<entry colname="c2">
								<p>membrane associated guanylate kinase,  WW and PDZ domain containing 1</p>
							</entry>
							<entry colname="c3">
								<p>1.84</p>
							</entry>
							<entry colname="c4">
								<p>SETD7</p>
							</entry>
							<entry colname="c5">
								<p>SET domain containing (lysine methyltransferase) 7</p>
							</entry>
							<entry colname="c6">
								<p>1.62</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>SEPT10</p>
							</entry>
							<entry colname="c2">
								<p>septin 10</p>
							</entry>
							<entry colname="c3">
								<p>1.79</p>
							</entry>
							<entry colname="c4">
								<p>ST13</p>
							</entry>
							<entry colname="c5">
								<p>suppression of tumorigenicity 13 (colon carcinoma)  (Hsp70 interacting protein)</p>
							</entry>
							<entry colname="c6">
								<p>1.62</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>LSM14A</p>
							</entry>
							<entry colname="c2">
								<p>LSM14A, SCD6 homolog A (S. cerevisiae); similar  to LSM14 homolog A (SCD6, S. cerevisiae)</p>
							</entry>
							<entry colname="c3">
								<p>1.71</p>
							</entry>
							<entry colname="c4">
								<p>AHSA1</p>
							</entry>
							<entry colname="c5">
								<p>AHA1, activator of heat shock 90 kDa protein  ATPase homolog 1 (yeast)</p>
							</entry>
							<entry colname="c6">
								<p>1.62</p>
							</entry>
						</row>
						<row>
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry colname="c3"/>
							<entry colname="c4">
								<p>TOE1</p>
							</entry>
							<entry colname="c5">
								<p>target of EGR1, member 1 (nuclear)</p>
							</entry>
							<entry colname="c6">
								<p>1.59</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c1"/>
							<entry colname="c2"/>
							<entry colname="c3"/>
							<entry colname="c4">
								<p>AZIN1</p>
							</entry>
							<entry colname="c5">
								<p>antizyme inhibitor 1</p>
							</entry>
							<entry colname="c6">
								<p>1.56</p>
							</entry>
						</row>
					</tbody>
				</tgroup>
			</table>
			<p>Tissue metabolomic analysis was used to identify the metabolic intermediates that were altered by fasting and insulin neutralization. A total of 92 metabolites were detected based on signal-to-noise ratios ( Additional file 
				<supplr sid="S3">3</supplr>). It is worth noting that glucose-6-phosphate content was similar in fasted or &#8220;diabetic&#8221; <it>vs.</it> fed status, despite a large range of plasma glucose levels (232&#8211;747 mg/100 ml). A total of 12 metabolites were significantly different between treatment groups based on p&#8201;&lt;&#8201;0.05 and an additional five were suggestive of significance (p&#8201;&lt;&#8201;0.10; Table 
				<tblr tid="T5">5</tblr>). Tissue levels of amino acids were consistently lower in fasted vs. fed tissue, with statistically significant reductions in asparagine and glutamine (p&#8201;&lt;&#8201;0.01). Presumably, these effects were due to a change in the balance of protein synthesis/proteolysis and to the catabolism of carbon skeletons for energy in response to energy restriction, which is consistent with up-regulated expression of genes involved in amino acid catabolism (Figure 
				<figr fid="F3">3</figr>). They may also reflect a decrease in plasma amino acid supply as suggested by the decrease in total plasma amino acid levels (evaluated by the content in total &#945;-NH<sub>2</sub>-non-protein nitrogen (&#945;NH<sub>2</sub>NPN), i.e., mostly total amino acids), as compared to fed controls 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. In contrast to fasting, tissue amino acid levels tended to be increased in insulin-neutralized vs. fed, although only glutamine showed a statistically significant response. Comparison of insulin-neutralized vs. fasted chickens highlights the divergent effects of treatments on amino acids (Figure 
				<figr fid="F4">4</figr>). Alanine, arginine, asparagine, glutamine, histidine, proline, serine, threonine and tyrosine levels were all significantly higher in insulin-neutralized vs. fasted, with differences ranging from 1.7- to 3.4-fold. Two metabolites related to glucose metabolism, D-glucono-1,5-lactone-6-phosphate and glycerol-3-phosphate, were lower in both fasted and insulin-neutralized treatments vs. fed, with the latter comparison nearing statistical significance (p&#8201;&lt;&#8201;0.1). D-glucono-1,5-lactone-6-phosphate is a product of glucose-6-phosphate dehydrogenase (G6PDH), an enzyme that, in mammals is insulin-sensitive and rate-limiting for pentose phosphate pathway activity and production of cellular NADPH, an important cofactor for lipid metabolism 
				<abbrgrp>
					<abbr bid="B28">28</abbr>
				</abbrgrp>. However, pentose phosphate pathway activity is intrinsically low in chicken and is not stimulated when lipogenesis is high; the production of cellular NADPH is more closely related to malic enzyme activity 
				<abbrgrp>
					<abbr bid="B29">29</abbr>
				</abbrgrp>. Glycerol-3-phosphate is a product of both glucose and pyruvate metabolism and is used in triacylglycerol synthesis. Lower levels with both treatments may reflect glycerol demand for fatty acid reesterification in light of the apparent increase in lipolysis in both treatment groups 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. </p>
			<suppl id="S3">
				<title>
					<p>Additional file 3</p>
				</title>
				<text>
					<p>
						<b>Metabolite levels across the three pairwise comparisons of treatments.</b> Metabolite, fold-change and p-value are provided.</p>
				</text>
				<file name="1471-2164-13-441-S3.xls">
   <p>Click here for file</p>
</file>
			</suppl>
			<table id="T5">
				<title>
					<p>Table 5</p>
				</title>
				<caption>
					<p>
						<b>Fold change of fasting and insulin neutralization on adipose tissue metabolites</b>
					</p>
				</caption>
				<tgroup align="left" cols="4">
					<colspec align="left" colname="c1" colnum="1" colwidth="1*"/>
					<colspec align="left" colname="c2" colnum="2" colwidth="1*"/>
					<colspec align="left" colname="c3" colnum="3" colwidth="1*"/>
					<colspec align="left" colname="c4" colnum="4" colwidth="1*"/>
					<thead valign="top">
						<row rowsep="1">
							<entry colname="c1">
								<p>
									<b>Metabolite</b>
								</p>
							</entry>
							<entry colname="c2">
								<p>
									<b>Fasting/ Fed</b>
								</p>
							</entry>
							<entry colname="c3">
								<p>
									<b>Ins-Neu/ Fed</b>
								</p>
							</entry>
							<entry colname="c4">
								<p>
									<b>Ins-Neu/ Fasting</b>
								</p>
							</entry>
						</row>
					</thead>
					<tfoot>
						<p>* p&#8201;&lt;&#8201;0.10, ** p&#8201;&lt;&#8201;0.05, *** p&#8201;&lt;&#8201;0.01, **** p&#8201;&lt;&#8201;0.001.</p>
					</tfoot>
					<tbody valign="top">
						<row>
							<entry colname="c1">
								<p>adenosine</p>
							</entry>
							<entry colname="c2">
								<p>0.57</p>
							</entry>
							<entry colname="c3">
								<p>1.21</p>
							</entry>
							<entry colname="c4">
								<p>2.12*</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>alanine</p>
							</entry>
							<entry colname="c2">
								<p>0.66</p>
							</entry>
							<entry colname="c3">
								<p>1.57</p>
							</entry>
							<entry colname="c4">
								<p>2.38***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>arginine</p>
							</entry>
							<entry colname="c2">
								<p>0.75</p>
							</entry>
							<entry colname="c3">
								<p>1.34</p>
							</entry>
							<entry colname="c4">
								<p>1.78**</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>asparagine</p>
							</entry>
							<entry colname="c2">
								<p>0.47***</p>
							</entry>
							<entry colname="c3">
								<p>1.00</p>
							</entry>
							<entry colname="c4">
								<p>2.15***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>D-glucono-1,5-lactone-6-phosphate</p>
							</entry>
							<entry colname="c2">
								<p>0.86</p>
							</entry>
							<entry colname="c3">
								<p>0.75*</p>
							</entry>
							<entry colname="c4">
								<p>0.87</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>glutamine</p>
							</entry>
							<entry colname="c2">
								<p>0.48***</p>
							</entry>
							<entry colname="c3">
								<p>1.64*</p>
							</entry>
							<entry colname="c4">
								<p>3.43****</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>glycerol-3-phosphate</p>
							</entry>
							<entry colname="c2">
								<p>0.82</p>
							</entry>
							<entry colname="c3">
								<p>0.72*</p>
							</entry>
							<entry colname="c4">
								<p>0.87</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>histidine</p>
							</entry>
							<entry colname="c2">
								<p>0.64</p>
							</entry>
							<entry colname="c3">
								<p>1.38</p>
							</entry>
							<entry colname="c4">
								<p>2.17***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>hypoxanthine</p>
							</entry>
							<entry colname="c2">
								<p>1.31</p>
							</entry>
							<entry colname="c3">
								<p>0.80</p>
							</entry>
							<entry colname="c4">
								<p>0.61**</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>N-acetyl-glutamate</p>
							</entry>
							<entry colname="c2">
								<p>0.64</p>
							</entry>
							<entry colname="c3">
								<p>1.34</p>
							</entry>
							<entry colname="c4">
								<p>2.09*</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>N-acetyl-L-serine</p>
							</entry>
							<entry colname="c2">
								<p>0.23**</p>
							</entry>
							<entry colname="c3">
								<p>1.70</p>
							</entry>
							<entry colname="c4">
								<p>7.30***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>ornithine</p>
							</entry>
							<entry colname="c2">
								<p>0.77</p>
							</entry>
							<entry colname="c3">
								<p>1.59</p>
							</entry>
							<entry colname="c4">
								<p>2.05*</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>proline</p>
							</entry>
							<entry colname="c2">
								<p>0.63</p>
							</entry>
							<entry colname="c3">
								<p>1.50</p>
							</entry>
							<entry colname="c4">
								<p>2.39***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>serine</p>
							</entry>
							<entry colname="c2">
								<p>0.67</p>
							</entry>
							<entry colname="c3">
								<p>1.61</p>
							</entry>
							<entry colname="c4">
								<p>2.39***</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>threonine</p>
							</entry>
							<entry colname="c2">
								<p>0.77</p>
							</entry>
							<entry colname="c3">
								<p>1.38</p>
							</entry>
							<entry colname="c4">
								<p>1.80**</p>
							</entry>
						</row>
						<row>
							<entry colname="c1">
								<p>tyrosine</p>
							</entry>
							<entry colname="c2">
								<p>0.74</p>
							</entry>
							<entry colname="c3">
								<p>1.30</p>
							</entry>
							<entry colname="c4">
								<p>1.76**</p>
							</entry>
						</row>
						<row rowsep="1">
							<entry colname="c1">
								<p>a hexose-phosphate</p>
							</entry>
							<entry colname="c2">
								<p>1.05</p>
							</entry>
							<entry colname="c3">
								<p>1.32**</p>
							</entry>
							<entry colname="c4">
								<p>1.26*</p>
							</entry>
						</row>
					</tbody>
				</tgroup>
			</table>
			<fig id="F3"><title><p>Figure 3</p></title><caption><p>KEGG pathway analysis of genes differentially expressed in fasting vs. fed</p></caption><text>
   <p><b>KEGG pathway analysis of genes differentially expressed in fasting vs. fed.</b> Genes differentially expressed in fasting vs. fed were matched to KEGG pathway membership using ClueGO. The percentage and #genes/term indicates the percentage and number of the genes in the pathway that are contained in the set of genes altered by fasting. &#183; p&#8201;&lt;&#8201;0.1 * p&#8201;&lt;&#8201;0.05 **, p&#8201;&lt;&#8201;0.01, based on Benjamini-corrected p-value.</p>
</text><graphic file="1471-2164-13-441-3"/></fig>
			<fig id="F4"><title><p>Figure 4</p></title><caption><p>Heat map of metabolites</p></caption><text>
   <p><b>Heat map of metabolites.</b> The median value of each metabolite in each treatment group was used to calculate fold-change of fasted vs. fed, insulin-neutralized (insneut) vs. fed, and insulin-neutralized vs. fasted, and then values were subjected to hierarchical clustering.</p>
</text><graphic file="1471-2164-13-441-4"/></fig>
			<p>Correlated patterns of gene expression and metabolite abundance were extracted using hierarchical clustering to interconnect treatment effects on transcripts and metabolites. Clusters 2 and 3 contained genes and metabolites with lower abundance in fasted vs. fed or insulin neutralized tissue. The two clusters differed with respect to the insulin neutralized group: cluster 3 contained analytes at intermediate levels between fasted and fed, while cluster 2 contained those at levels comparable to or greater than fed. Twelve of the 17 metabolites with statistically suggestive or significant effects of treatment, including all of the amino acids and amino acid derivatives ( Additional file 
				<supplr sid="S4">4</supplr>), were present in cluster 2 along with a set of genes that included the p85&#945; regulatory subunit of PI3 kinase (PIK3R1), as well as ME, malonyl CoA decarboxylase and ELOVL6. Cluster 3 contained several metabolites including both NAD&#8201;+&#8201;and NADPH and was significantly enriched in GO annotations related to carbohydrate metabolism and in the KEGG pathways TCA cycle, glycolysis/gluconeogenesis, pyruvate metabolism and steroid biosynthesis (p&#8201;&lt;&#8201;0.05; Additional file 
				<supplr sid="S4">4</supplr>). Clusters 7 and 8 consisted of genes and metabolites with higher levels in fasted than in the other two treatment groups. These clusters were significantly enriched in GO categories PPAR signaling and negative regulation of cellular biosynthesis and also contained citrate and pyruvate (p&#8201;&lt;&#8201;0.05; Additional file 
				<supplr sid="S4">4</supplr>).</p>
			<suppl id="S4">
				<title>
					<p>Additional file 4</p>
				</title>
				<text>
					<p>
						<b>Metabolite-gene clusters.</b> Cluster, metabolite,gene Ontology and KEGG annotation and benjamini corrected pvalue are provided for clusters that contained both metabolites and genes. </p>
				</text>
				<file name="1471-2164-13-441-S4.xls">
   <p>Click here for file</p>
</file>
			</suppl>
		</sec>
		<sec>
			<st>
				<p>Discussion</p>
			</st>
			<p>Despite roles as both a domestic food animal of worldwide economic importance and a widely used model organism with relevance for human obesity and insulin resistance, few studies have examined regulation of gene expression in chicken adipose tissue. To our knowledge, no studies of nutritional regulation of chicken adipose tissue at the genomic level have been reported in the published literature. Likewise, although insulin is the most well-defined hormonal mediator of metabolism in mammalian adipose tissue, its role in chicken remains to be clarified. Therefore the current study addressed two objectives: 1) characterize the transcriptomic and metabolomic response to energy manipulation as a step toward enhanced understanding of adipose biology in chicken; and 2) identify the effects of insulin on chicken adipose tissue by including a group of birds in which insulin action was blocked by immunoneutralization with an anti-insulin antibody. We sought to both identify potential new targets for genetic selection or management strategies to reduce fat accumulation in commercial broilers and to further develop chicken as a model organism for studies of human obesity.</p>
			<p>Although intrinsic lipogenic activity is low in chicken adipose tissue, genes involved in fatty acid synthesis and storage were suppressed and those in fatty acid mobilization and oxidation were up-regulated by fasting. The 40 down-regulated genes with fold changes greater than three were significantly enriched for the GO annotation lipid biosynthetic process (FDR &lt;0.05), including genes that control triglyceride synthesis (DGAT2 and AGPAT9) and fatty acid synthesis (ACACA, ACLY and ME), elongation (ELOVL6), and desaturation (FADS1). AGPAT9 and DGAT2 catalyze the initial and final steps, respectively, of <it>de novo</it> triglyceride synthesis. ACLY is the main enzyme for synthesis of cytosolic acetyl-CoA, which is carboxylated to malonyl-CoA by ACACA, the rate-limiting step in fatty acid synthesis. Reducing equivalents for the conversion of malonyl-CoA to palmitate are supplied by malic enzyme (ME). ELOVL6 catalyzes elongation of palmitate to stearate and appears to play a key role in insulin sensitivity 
				<abbrgrp>
					<abbr bid="B30">30</abbr>
					<abbr bid="B31">31</abbr>
				</abbrgrp>. Finally, FADS1 is rate-limiting for polyunsaturated fatty acids (PUFA) biosynthesis and was recently implicated in control of fasting glucose homeostasis in humans 
				<abbrgrp>
					<abbr bid="B32">32</abbr>
				</abbrgrp>. Genes altered by fasting in adipose tissue in this study overlapped with those shown to be differentially expressed in chicken liver after 16 or 48 hours of fasting, including ACLY, ACOX1, BCAT1 and PDK4 
				<abbrgrp>
					<abbr bid="B33">33</abbr>
				</abbrgrp>. These authors used a different array platform than ours, which precludes precise quantitative comparisons. However, among the genes changed in both studies, the fold changes observed in adipose tissue were consistently greater than those in liver, despite the longer duration of fasting in that study. For example, PDK4 expression was up-regulated&#8201;~&#8201;18-fold by a five hour fast in adipose tissue, but only&#8201;~&#8201;1.5-fold after a 16 hour fast in liver. While differences in sensitivity between the two array platforms must be kept in mind, these data suggest that adipose tissue metabolism in chicken is at least as sensitive to energy status as hepatic metabolism. Our results indicate that both fatty acid synthesis and storage are dynamically regulated by energy status in chicken adipose tissue, despite its modest (~ 15%) contribution to the amount of stored fatty acids.</p>
			<p>Both fasted and insulin-neutralized birds exhibited significant increases in plasma glucagon. Parallel elevations in plasma NEFA suggested that this resulted in significant lipolysis of stored triacylglycerol in both treatment groups. During fasting, a considerable percentage of the liberated fatty acids are re-esterified in adipocytes, and only a small fraction traditionally have been thought to be oxidized in the mitochondria of adipocytes through beta oxidation 
				<abbrgrp>
					<abbr bid="B34">34</abbr>
				</abbrgrp>. However, recent studies in mice and in human adipose tissue demonstrate that in some conditions fatty acid oxidation in white adipose tissue is considerable and may be an important determinant of obesity 
				<abbrgrp>
					<abbr bid="B35">35</abbr>
					<abbr bid="B36">36</abbr>
					<abbr bid="B37">37</abbr>
				</abbrgrp>. Consistent with this concept, we found significant increases in a number of key enzymes that mediate mobilization of fatty acids and their oxidation, including the rate-limiting enzymes in both mitochondrial and peroxisomal fatty acid oxidation (CPT1A and ACOX1, respectively). We measured tissue levels of beta-hydroxybutyrate, a ketone product of beta oxidation, to confirm that changes in gene expression had functional consequences and found them to be significantly elevated in adipose tissue of fasted vs. fed chickens. Levels were numerically but not statistically higher in insulin-neutralized adipose tissue (data not shown). Qualitatively, fasting-induced changes in gene expression resemble those induced by the fibrate class of drugs, which activate PPAR&#945; and promote fatty acid oxidation in white adipose tissue and are used clinically to treat hyperlipidemia 
				<abbrgrp>
					<abbr bid="B35">35</abbr>
					<abbr bid="B37">37</abbr>
					<abbr bid="B38">38</abbr>
					<abbr bid="B39">39</abbr>
					<abbr bid="B40">40</abbr>
				</abbrgrp>. These data suggest that dietary activation of PPAR&#945;, for example through supplementation with fatty acids that preferentially bind and activate this member of the PPAR family 
				<abbrgrp>
					<abbr bid="B41">41</abbr>
				</abbrgrp>, may be a means to attenuate fat deposition in commercial broilers. Such action may underlie the reduced abdominal fat mass reported in broilers that were fed diets rich in n-3 PUFA 
				<abbrgrp>
					<abbr bid="B42">42</abbr>
				</abbrgrp>.</p>
			<p>Both fasting and insulin neutralization elicited marked upregulation of PDK4. PDK4 is a nutrient sensing fuel switch that phosphorylates and inactivates pyruvate dehydrogenase, which shifts fuel use from glucose to fatty acids and spares glucose for the brain during periods of fasting 
				<abbrgrp>
					<abbr bid="B23">23</abbr>
					<abbr bid="B43">43</abbr>
					<abbr bid="B44">44</abbr>
					<abbr bid="B45">45</abbr>
				</abbrgrp>. PDK4 also enhances glycerol synthesis in white adipose tissue by shunting pyruvate into glyceroneogenesis, at least in the fed state 
				<abbrgrp>
					<abbr bid="B46">46</abbr>
				</abbrgrp>. Hepatic and skeletal muscle expression of PDK4 is increased by fatty acids, acetyl CoA, NADH and the diabetic state and decreased by insulin and pyruvate (rev. in 
				<abbrgrp>
					<abbr bid="B23">23</abbr>
					<abbr bid="B47">47</abbr>
				</abbrgrp>). Little is known about PDK4 in chicken, but a recent study suggests it acts as a glycogen sensor in muscle and thus plays comparable roles to those in mammals 
				<abbrgrp>
					<abbr bid="B48">48</abbr>
				</abbrgrp>. In mouse white adipose tissue, PDK4 expression was shown to be induced by activation of p38MAPK 
				<abbrgrp>
					<abbr bid="B49">49</abbr>
				</abbrgrp>, which we found to be significantly up-regulated with fasting and, to a lesser extent, with insulin neutralization 
				<abbrgrp>
					<abbr bid="B19">19</abbr>
				</abbrgrp>. Although PDK4 was up-regulated in both treatment groups, and both groups showed evidence of increased lipolysis 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>, only fasted chickens presented a gene expression signature and tissue beta-hydroxybutyrate levels that were clearly indicative of fatty acid oxidation. Although we did not measure malonyl-CoA levels, we predict that they were reduced with fasting, but not insulin neutralization, based on reduced expression of ACACA. Malonyl-CoA allosterically binds and inhibits CPT1A, minimizing fatty acid transport and subsequent oxidation in mitochondria 
				<abbrgrp>
					<abbr bid="B50">50</abbr>
				</abbrgrp>. With insulin neutralization, increased PDK4 may thus be more aligned with the demand for glycerol needed to re-esterify fatty acids liberated by lipolysis 
				<abbrgrp>
					<abbr bid="B46">46</abbr>
				</abbrgrp>. Additional experiments are needed to confirm that manipulation of PDK4 alters fatty acid oxidation in chicken adipose tissue and to delineate its relative contributions to fatty acid oxidation and glyceroneogenesis under varying metabolic states. If manipulation of PDK4 does alter fatty acid oxidation, our results highlight this pathway as a potential target for reducing fatness, which has relevance for both poultry and humans.</p>
			<p>Microarray data indicate that the effects of fasting in chicken adipose tissue extend beyond metabolism. GO analysis highlighted pathways such as cell cycle and cytokine-cytokine receptor interaction that are most likely related to changes in the stromal vascular fraction, which contains proliferating preadipocytes and cells of the immune system. In particular, a number of genes that regulate multiple steps in adipogenesis were significantly altered by fasting. Chickens rapidly accumulate abdominal fat after hatch, and until approximately 7 weeks of age this is due more to formation of new adipocytes than to adipocyte hypertrophy 
				<abbrgrp>
					<abbr bid="B11">11</abbr>
				</abbrgrp>. Adipocytes arise from mesenchymal stem cells in a two stage process of lineage commitment to an adipocyte fate, followed by differentiation of fibroblast-like preadipocytes into mature fat-storing cells 
				<abbrgrp>
					<abbr bid="B51">51</abbr>
				</abbrgrp>. Members of both the Wnt (MSC lineage commitment) and TGF&#946;/BMP (MSC lineage commitment and preadipocyte competence) signaling pathways were significantly regulated by fasting. Fasting down-regulated expression of CEBP&#945; and PPAR&#947;, two transcription factors that orchestrate the cascade of gene expression changes that lead to terminal adipocyte differentiation 
				<abbrgrp>
					<abbr bid="B51">51</abbr>
				</abbrgrp>. Expression of other adipogenic mediators including fibroblast growth factor 2 (FGF2), fibroblast growth factor receptor 1 (FGFR1) 
				<abbrgrp>
					<abbr bid="B52">52</abbr>
				</abbrgrp>, and nuclear receptor corepressor 1 (NCOR1) 
				<abbrgrp>
					<abbr bid="B53">53</abbr>
				</abbrgrp> were also significantly regulated by fasting. Collectively, these changes suggest that adipocyte number in chickens is dynamically tied to energy status, at least in young chicks (such as those used herein) that are rapidly forming new adipocytes. An elegant study by Arner <it>et al</it>. concluded that adipocyte number in humans is a major determinant of adult fat mass and is determined during early childhood 
				<abbrgrp>
					<abbr bid="B54">54</abbr>
				</abbrgrp>. Less is known about this process in humans due to the limitations of sampling adipose tissue, particularly during development and from different abdominal depots. In light of what appears to be sensitive regulation of adipogenesis by nutritional state, chickens may thus be particularly valuable models in which to elucidate mechanisms of adipocyte hyperplasia during development that would inform the study of human obesity.</p>
			<p>It is worth noting that, despite the uncertainty about insulin signaling in chicken adipose tissue, fasting altered the expression of several messengers encoding elements of the insulin signaling cascade. Expression of PIK3CB, which encodes the catalytic p110 subunit of PI3K, was up-regulated with fasting, while PIK3R1, which encodes the regulatory p85 subunit, was down-regulated. Such regulation could maintain some insulin signals despite a fall in plasma insulin level. CBLB and CRK, which mediate insulin signals that are associated with lipid rafts 
				<abbrgrp>
					<abbr bid="B55">55</abbr>
				</abbrgrp>, were also up-regulated with fasting. In mammals, this pathway stimulates glucose uptake independently of PI3K activation, which may shed light on the apparent refractoriness of PI3K activity to insulin that was described in chicken skeletal muscle 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. Therefore, the potential effects of insulin on lipid storage and energy utilization appear to be defended in the fasting state, when insulin levels fall, by enhanced insulin sensitivity at the post-receptor level. Additional studies are needed to confirm this effect and to further explore the potential of PI3K-independent effects of insulin on glucose utilization in chicken adipose tissue.</p>
			<p>Insulin is not considered to be a key regulator of glucose metabolism in chicken adipose tissue, although it does induce glucose disposal in chicken liver and muscle 
				<abbrgrp>
					<abbr bid="B14">14</abbr>
				</abbrgrp>. It is therefore not surprising that the majority of genes significantly altered by both insulin neutralization and fasting are not related to glucose metabolism and lipid synthesis. The main exception is DGAT2, which catalyzes the final step in esterification of fatty acids into triglycerides. In fact, DGAT2 showed the most extreme down-regulation (6.1- and 10.5-fold, insulin-neutralized and fasted, respectively) in each treatment group, which is surprising considering that other genes related to lipogenesis were only regulated by fasting. Suppression of DGAT2 expression may be due to feedback by lipolysis, which appeared to be increased in both treatment groups based on plasma NEFA levels. In general, our data indicate that insulin deprivation altered fatty acid and glucose metabolism in a manner comparable to fasting but to a lesser extent, such that most genes involved in these pathways did not exhibit statistically significant changes in expression. For example, cluster analysis (Figure 
				<figr fid="F2">2</figr>) revealed that some genes upregulated by fasting were also increased by insulin neutralization (clusters 1, 3 and 4); these three clusters were enriched with genes in the KEGG pathways for fatty acid metabolism and PPAR signaling, including both ACOX1 and CPT1A, among others. Similarly, among genes that were downregulated by fasting, clustering discriminated a set of genes (Figure 
				<figr fid="F2">2</figr>, cluster 2) with a trend to also be decreased (albeit to a lesser extent than in fasting) by insulin deprivation. Interestingly, this cluster was significantly enriched in functions related to carbohydrate metabolism, suggesting that insulin does play some role in chicken adipose glucose metabolism. Comparable trends appeared in the metabolomic data. For example, stearate and palmitate (the only fatty acids measured by our MS platform) were lower (although not significantly) in both fasted and insulin neutralized compared to fed birds ( Additional file 
				<supplr sid="S3">3</supplr>). While the purpose of our study design was to determine the specific effects of insulin on chicken adipose tissue, we cannot exclude the possibility that some of the overlapping changes in gene expression were secondary to systemic factors, such as hyperglucagonemia present in both treatment groups 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. <it>In vitro</it> experiments using primary adipocytes or adipose explants will be useful to confirm specific effects of insulin on genes identified herein.</p>
			<p>Of the 13 changes in expression that were unique to insulin neutralization, the most interesting responses were up-regulation of GCG, which encodes preproglucagon (fold change&#8201;=&#8201;2.91), and down-regulation of the glucagon receptor (LOC425670, fold change&#8201;=&#8201;&#8722;2.77). The proglucagon system in avians is more complex than in mammals. The avian preproglucagon locus encodes two distinct precursor proteins that yield different peptides through alternative posttranslational processing: the class A transcript (PGA) yields glucagon and glucagon-like peptide-1 (GLP-1), while the class B transcript (PGB) additionally produces glucagon-like peptide-2 (GLP-2) and is more like the mammalian transcript (rev. in 
				<abbrgrp>
					<abbr bid="B56">56</abbr>
				</abbrgrp>). Adipose tissue expresses both transcripts, with PGA being slightly more abundant, and is the third highest preproglucagon expressing tissue in chicken, behind pancreas and the proventriculus 
				<abbrgrp>
					<abbr bid="B57">57</abbr>
				</abbrgrp>. We used transcript-specific QPCR to determine that only the PGB transcript was up-regulated by insulin neutralization (data not shown). Additional experiments are necessary to delineate which of the encoded peptides are up-regulated in parallel, but the coincident down-regulation of the glucagon receptor suggests a paracrine glucagon axis in chicken adipose tissue, and one that is regulated by insulin. In support of this concept, plasma glucagon (presumably derived largely from pancreas) was elevated comparably in both treatment groups 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>, while GCG expression in adipose tissue was only up-regulated by insulin neutralization.</p>
			<p>Tissue metabolomic analysis highlighted effects of insulin neutralization that were divergent from fasting and not readily apparent from microarray data. Most of the tissue amino acids that were measured were higher with insulin-neutralization but lower with fasting when each group was compared to <it>ad libitum</it> fed controls. This pattern parallels the levels of &#945;NH<sub>2</sub>NPN levels in blood 
				<abbrgrp>
					<abbr bid="B18">18</abbr>
				</abbrgrp>. Low levels in fasted adipose tissue were most likely due to oxidation of the carbon skeletons for cellular energy through the tricarboxylic acid cycle (TCA) cycle and/or for glyceroneogenesis, in the absence of dietary glucose. Increased amino acid catabolism was reflected in the differential expression profiles of the fasted vs. fed comparison (Figure 
				<figr fid="F3">3</figr>; Additional file 
				<supplr sid="S1">1</supplr>). In the insulin neutralized group, however, glucose supply from food was maintained and preferentially oxidized for energy. Elevated amino acids in the insulin neutralized group may also reflect reduced utilization due to the lack of insulin&#8217;s anabolic effects, particularly on the proliferating cell population within adipose tissue. The metabolomics approach used here measured only metabolite pool sizes at the time that tissues were harvested, rather than the effect of fasting or insulin neutralization on the rates of metabolism through glycolysis and the TCA cycle. The latter would be much more informative with respect to the dynamic impact of treatment, but requires the use of isotopic labeling (e.g., by feeding <sup>13</sup>C-labelled glucose) which was not performed in this study. Nonetheless, we were able to demonstrate significant effects on some metabolites that inform the parallel changes in gene expression, particularly in relation to amino acid metabolism. Combined clustering of metabolomic and gene expression together identified a set of genes correlated with many amino acid levels, including PIK3R1, ME and MCD.</p>
		</sec>
		<sec>
			<st>
				<p>Conclusions</p>
			</st>
			<p>In summary, we determined that adipose tissue metabolism in the chicken is regulated by energy status and, to a lesser extent by insulin. Although adipose tissue is not a primary site of lipogenesis in chicken, the rate-limiting genes for fatty acid synthesis were suppressed by fasting. Likewise, fasting appeared to increase aspects of insulin sensitivity based on expression profiles, despite the view that chicken adipose tissue is relatively insensitive to insulin. Consistent with this paradigm, insulin neutralization significantly altered the expression of only a few genes related to glucose and lipid metabolism. Nonetheless, a considerable number of genes were altered by insulin neutralization, many of which thus far have unclear roles in adipose biology. Expression profiles suggest that even short term fasting alters fat storage in broilers by enhancing the oxidation of fatty acids. The initiating events that trigger upregulation of the corresponding genes are unclear, but there is considerable evidence for activation of PPARa, LXRa, and potentially other transcription factors that are activated by fatty acid ligands. Further studies are warranted to identify these triggers because of their potential impact on fat storage. Our data also suggest that broiler chicks may be an informative model organism in which to investigate dietary effects on adipose development in light of what appears to be a relationship between energy intake and adipogenesis. The results of this study thus have dual benefit for both the poultry industry and for studies of obesity in humans.</p>
		</sec>
		<sec>
			<st>
				<p>Methods</p>
			</st>
			<sec>
				<st>
					<p>Animals</p>
				</st>
				<p>Male broiler chicks (ISA 915, Institut de S&#233;lection Animale, Saint Brieuc, France) from which samples were collected for this study were hatched and raised under standard conditions, as originally described by Dupont 
					<abbrgrp>
						<abbr bid="B18">18</abbr>
					</abbrgrp> and in accordance with the guidelines for Care and Use of Agricultural Animals in Agricultural Research and Teaching. Briefly, at 16&#8211;17 days of age, chicks of similar body weights were either allowed to continue feeding (<it>ad libitum</it> fed controls), fasted for five hours, or fed but injected at 0, 2 and 4 hours with porcine anti-insulin serum (insulin neutralized). Both the fed and fasted groups received injections of normal porcine serum as a vehicle control. Abdominal adipose tissue samples were harvested and rapidly snap-frozen in liquid nitrogen, pulverized, then stored at -80&#176;C until analysis. Adipose samples from five birds in each group were used for both microarray and metabolomic analyses.</p>
			</sec>
			<sec>
				<st>
					<p>Gene expression</p>
				</st>
				<p>Total RNA was isolated from chicken adipose samples using the RNeasy Lipid kit and incorporating an on-column DNase treated with the RNase-free DNase Set according to the manufacturer's protocol (Qiagen.com). RNA quality and concentration were measured using the Experion System (Bio-Rad.com); only RNA passing recommended standards of quality was used for further studies. Transcriptome profiling was performed by Genome Quebec (Montreal, Canada) using the Affymetrix GeneChip Chicken Genome Array (San Diego, CA). Microarray data from this study are deposited in the Gene Expression Omnibus (GEO) under the accession number GSE35581. For real time RT-PCR validation, cDNA was synthesized using the iScript cDNA Synthesis kit (Bio-Rad.com). Commercially designed and validated primer sets (QuantiTect) and the associated SYBR Green master mix (Qiagen.com) were used to assay gene expression on a CFX96 real-time PCR detection system (Bio-Rad.com). All samples were analyzed in triplicate and normalized to &#223;-tubulin. Relative differences in gene expression were determined using the 2<sup>-&#916;&#916;CT</sup> method and statistical differences were tested by analysis of variance (ANOVA) 
					<abbrgrp>
						<abbr bid="B58">58</abbr>
					</abbrgrp>.</p>
			</sec>
			<sec>
				<st>
					<p>Liquid chromatography coupled with tandem mass spectrometry (LC-MS/MS)</p>
				</st>
				<p>Abdominal adipose tissue samples from five birds in each treatment group (the same five birds used for expression profiling) were extracted by placing tissue in a mortar containing liquid nitrogen and then powdering with a pestle. Portions (8&#8211;40 mg) of the powered tissue were weighed into 1.5 mL centrifuge tubes. Chilled methanol (0.5 mL at &#8722;80&#176;C) and internal standard (5 &#956;L of 1.7 mM benzoic acid in negative mode or 4.25 mM tris(hydroxymethyl)aminomethane in positive mode) were added to each tube. Each tube was mixed thoroughly by vortexing for two minutes, and the metabolites were extracted from the tissue for 30 min at 4&#176;C. The tubes were then centrifuged (5 min, 4&#176;C, 16.1 rcf) and supernatant (210 &#956;L) was split into two autosampler vials. One of these samples was immediately placed on the LC-MS/MS for analysis, while the other was stored at &#8722;80&#176;C for analysis in the opposite polarity ion mode on the following day.</p>
				<p>Samples were placed in an autosampler tray chilled to 4&#176;C, and 10 &#956;L of each was injected onto an LC column for analysis. The chromatography method for positive ion mode was reported previously by Bajad and coworkers 
					<abbrgrp>
						<abbr bid="B59">59</abbr>
					</abbrgrp>, with one exception that the column was cooled to 10&#176;C. The chromatography method for negative ion mode was performed as reported by Waters and coworkers 
					<abbrgrp>
						<abbr bid="B60">60</abbr>
					</abbrgrp>, except the gradient was allowed to run 50 min instead of 45 min to allow more thorough equilibration of the column. The eluent was introduced directly into the MS via an electrospray ionization (ESI) source fitted to a Finnigan TSQ Quantum Discovery Max triple quadrupole MS (Thermo Electron, Waltham, MA) through a 0.1 mm internal diameter fused silica capillary. The spray voltage was 4500 V in positive mode or 3000 V in negative mode. The sheath gas (nitrogen) was set to 40 psi, and the capillary temperature was set to 290&#176;C. The collision cell gas (argon) was set to a pressure of 1.5 mTorr. Samples were analyzed using selected reaction monitoring (SRM) mode with a scan width of 1&#8201;<it>m/z</it> and a scan time of 0.05 s. The SRM parameters for most metabolites have been published previously 
					<abbrgrp>
						<abbr bid="B59">59</abbr>
					</abbrgrp>. This method was used to scan for almost 300 metabolites. Xcalibur software (Thermo Scientific, Waltham, MA) was used to manually assess the elution time of the correct LC spectral peak for each metabolite-specific SRM. The Quan Browser utility in Xcalibur was then used to integrate the LC spectral peak area (in ion counts) for each detected compound, and these data were exported to a Microsoft Excel spreadsheet for further processing.</p>
			</sec>
			<sec>
				<st>
					<p>Statistical analysis</p>
				</st>
				<p>Statistical analysis of the microarray data was performed using R 2.9.0 and routines contained in Bioconductor (bioconductor.org). GC robust multi-array average (GCRMA) was used to normalize and scale the raw data from CEL files. The normalized data were filtered for low expression by removing any probes with normalized expression less than 3 in at least 5 arrays. Statistical significance of gene expression differences were analyzed by one-way ANOVA and empirical bayes using the limma package. Differential expression was defined based on false discovery rate (FDR) adjusted p-value &lt;0.05. False discovery rate for differential expression and for GO and KEGG enrichment testing was controlled using the Benjamini-Hochberg method 
					<abbrgrp>
						<abbr bid="B61">61</abbr>
					</abbrgrp>. Venn diagrams of differentially expressed genes were plotted to visualize the number of differentially expressed genes for each treatment comparison and their intersections. Hierarchical clustering of significant genes was performed using the hclust function and a hierarchical clustering heatmap was created using heatmap.2 in the gplots package. Hierarchical clustering also was used to identify correlated patterns of gene expression and metabolites. The Database for Annotation, Visualization and Integrated Discovery (DAVID, version 6.7) and ClueGO, a Cytoscape plug-in, were used for Gene Ontology (GO) at level 6 and 7 and KEGG analysis of differentially expressed genes 
					<abbrgrp>
						<abbr bid="B62">62</abbr>
						<abbr bid="B63">63</abbr>
					</abbrgrp>. Statistical analysis of metabolomic data was performed using an analysis tool that we developed specifically for metabolomic data analyses (Ernest et al., manuscript in review). The script (metabR), written in the language R, uses linear mixed-effect modeling to normalize metabolomics data containing both fixed- and random-effect confounding variables. The script averages any replicate measurements (statistical sampling) made on experimental units and performs ANOVA to test for statistical differences between experimental groups.</p>
			</sec>
		</sec>
		<sec>
			<st>
				<p>Abbreviations</p>
			</st>
			<p>VLDL: Very low density lipoprotein; CEBP&#945; :CCAAT: Enhancer-binding protein alpha; PPAR: Peroxisome proliferator-activated receptor; IR&#946;: Insulin receptor &#946;-subunit; IRS-1: Insulin receptor substrate-1; Shc: Src homology 2 domain-containing substrate; PI3K: Phosphatidylinositol 3-kinase; QPCR: Quantitative PCR; FDR: False discovery rate; GO: Gene ontology; PDGF: Platelet derived growth factor; MSC: Mesenchymal stem cell; Camp: Cyclic adenosine monophosphate; DGAT2: Diacylglycerol O-acyltransferase homolog 2; PDK4: Dehydrogenase kinase 4; ACBD5: Acyl-Coenzyme A binding domain containing 5; AGTR1: Type I angiotensin II receptor; PUFA: Polyunsaturated fatty acids; NEFA: Non-esterified fatty acid; ATGL: Adipose triglyceride lipase; PD: Pyruvate dehydrogenase; LXR: Liver X receptor; GCG: Preproglucagon; PGB: Preproglucagon class B transcript; BCAAs: Branched chain amino acids.</p>
		</sec>
		<sec>
			<st>
				<p>Competing interests</p>
			</st>
			<p>The authors declare that they have no competing interests.</p>
		</sec>
		<sec>
			<st>
				<p>Authors&#8217; contributions</p>
			</st>
			<p>BJ performed the experimental assays, analyzed genomic data and drafted the manuscript. BE, JG and SC generated and analyzed metabolomics data. SD provided technical support and AM provided statistical support. JS, SM-C and JD performed the original in vivo study and provided tissue samples. BV designed and supervised the study and personnel and edited the manuscript. All authors read and approved the final manuscript.</p>
		</sec>
	</bdy>
	<bm>
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