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Epigenetics modifications and Subclinical Atherosclerosis in Obstructive Sleep Apnea: The EPIOSA study

Abstract

Background

Obstructive sleep apnea (OSA) is associated with increased risk for cardiovascular morbidity and mortality. Epidemiological and animal models studies generate hypotheses for innovative strategies in OSA management by interfering intermediates mechanisms associated with cardiovascular complications. We have thus initiated the Epigenetics modification in Obstructive Sleep Apnea (EPIOSA) study (ClinicalTrials.gov identifier: NCT02131610).

Methods/design

EPIOSA is a prospective cohort study aiming to recruit 350 participants of caucasian ethnicity and free of other chronic or inflammatory diseases: 300 patients with prevalent OSA and 50 non-OSA subjects. All of them will be follow-up for at least 5Ā years. Recruitment and study visits are performed in single University-based sleep clinic using standard operating procedures. At baseline and at each one year follow-up examination, patients are subjected to a core phenotyping protocol. This includes a standardized questionnaire and physical examination to determine incident comorbidities and health resources utilization, with a primary focus on cardiovascular events. Confirmatory outcomes information is requested from patient records and the regional Department of Health Services. Every year, OSA status will be assessed by full sleep study and blood samples will be obtained for immediate standard biochemistry, hematology, inflammatory cytokines and cytometry analysis. For biobanking, aliquots of serum, plasma, urine, mRNA and DNA are also obtained. Bilateral carotid echography will be performed to assess subclinical atherosclerosis and atherosclerosis progression. OSA patients are treated according with national guidelines.

Discussion

EPIOSA will enable the prospective evaluation of inflammatory and epigenetics mechanism involved in cardiovascular complication of treated and non-treated patients with OSA compared with non OSA subjects.

Peer Review reports

Background

Obstructive sleep apnea (OSA) is the most common respiratory sleep disorder characterized by recurrent episodes of partial or complete pharyngeal obstruction [1]. Though obesity is the main risk to develop OSA, craniofacial morphology and ventilator drive abnormalities are also important in OSA pathogenesis. Collapse of the upper airway during sleep leads to recurrent arousals, intermittent hypoxia, and surges in sympathetic activity. These intermediate mechanics may explain to some extent, the increased risk of mortality [2], incident hypertension [3, 4], coronary artery disease [5] and stroke [6] described in OSA. In this context, circulating biomarkers of inflammation and oxidative stress have been described to be elevated in some OSA patients, and lowered with CPAP therapy regardless of weight changes [7]. A cause-effect relationship has been suggested between this systemic inflammatory state and cardiovascular disease, based on the induction of inflammatory processes in the vessel wall [8]. Such processes are considered to be critical determinants of pathological alterations of the vasculature such as thickening of vessel wall, fatty streak formation, or promotion of atherosclerotic plaques. Furthermore, raised levels of proinflammatory cytokines involved in the atherosclerotic process, such as Interleukin-6 (IL-6) and C-reactive protein (CRP), have been reported in OSA. Nevertheless, these cytokines are also increased in obesity [9] and some studies do not show an independent association between OSA and IL-6 and/or CRP levels [10ā€“12]. Other studies carried in obese patients with and without OSA, found that untreated OSA, rather than obesity, is a major determinant of vascular endothelial dysfunction, inflammation, and elevated oxidative stress in obese patients [13].

Among patients with OSA, the systemic inflammatory variability response can be explained by different pattern of epigenetic modifications induced by the apneic episodes and consequently altered expression of genes involved in the atherosclerotic process. Continuous hypoxia can induce hypermethylation of genes involved in cardiovascular diseases [14, 15], but the role of intermittent hypoxia -a characteristic feature of OSA- is not so well known. However, increased methylation in the promoter region of the FOXP3 gene has been recently described in children with OSA and systemic inflammation [16]. The FOXP3 gene controls the differentiation of lymphocytes into regulatory T lymphocytes (Treg), a subset of T helper cells that inhibit atherosclerosis by modulating lipoprotein metabolism [17].

Most OSA patients attending sleep clinics have many confounding comorbidities, e.g. smoking and alcohol habits, obesity, dyslipemia, hypertension, etc.ā€¦,. These confounding variables are also associated with systemic low-grade inflammation that makes it difficult to determine the independent role of OSA in the pathogenesis of cardiovascular diseases. Furthermore, the onset of epigenetic changes in adults with OSA remains unknown. Our hypothesis is that changes in epigenetic regulation of systemic inflammation and metabolic dysfunction in OSA, are linked to accelerated cardiovascular morbidity. The Epigenetics Status and Subclinical Atherosclerosis in Obstructive Sleep Apnea (EPIOSA) study is a 5-yr longitudinal study with the overall aim to identify epigenetic markers associated to prevalent and progression of subclinical atherosclerosis in individuals with OSA, as well as biomarkers that may serve as surrogate end-points. The present article describes the purpose and design of the study.

Methods/Design

Study objective

The EPIOSA study has the following specific aims: 1) Use of questionnaires, sleep studies, carotid ultrasonography and cerebral magnetic resonance imaging (MRI) for the definition of OSA subpopulations and controls among individuals without comorbidities; 2) Identification and definition of the parameters that predict disease progression over 5Ā yrs of follow-up. For the purposes of the present study, disease progression is defined in terms of changes in sleep disordered breathing variables, symptoms, carotid artery intima-media thickness (IMT) and plaque and new microblebs in MRI; 3) Identification of useful biomarkers for disease progression by measuring known biomarkers that correlate with OSA severity, in blood and urine samples; 4) Identification of novel epigenetic factors and/or biomarkers correlating with poor outcomes in OSA and controls. This will be analyzed by cytometry analysis, DNA methylation in genes subserving inflammatory functions RNA transcriptomics; and 5) assessment of the effect of CPAP (Continuous positive airway pressure) on inflammatory and epigenetic mechanisms and disease progression.

Study design

EPIOSA is a 5-yr non-interventional longitudinal prospective study being conducted at the Sleep Clinic of the Hospital Universitario Miguel Servet, a large teaching hospital in Zaragoza (Spain). Following a baseline visit, subjects are to be followed-up at 3, and then every year. All subjects will continue to receive their usual care by their primary physician and sleep specialist throughout the study. CPAP treatment will be started according to the Spanish National guidelines, free of cost for the patients [18].

Subject participation

We have estimated to enroll up to 300 consecutive OSA male patients aged 20ā€“60Ā yrs, with baseline apnea-hipopnea indexā€‰ā‰„ā€‰5 events per hour of sleep (AHI). In addition, we expect to recruit 50 control subjects (AHIā€‰<ā€‰5) aged 20ā€“60Ā yrs and matched by body mass index (BMI). The inclusion and exclusion criteria for OSA patients and control subjects are shown in TableĀ 1. All participants will be advised regarding life-style modification, exercise, diet and to avoid smoking or alcohol consumption.

Table 1 Selection criteria

Measurements

Clinical data

A questionnaire for data collection was developed. This included assessment of socio-demographic data, weight, height, waist, hip and neck circumferences, healthy behaviors, daily exercise routines, smoking history, consumption of alcohol or other toxic habits, previous medical diagnosis, presence of comorbidities, personal and family history of disease, and medication use. Daytime somnolence is assessed with the Epworth test [19]. Blood pressure is measured according to international guidelines by certified nurses blinded to the presence or absence of OSA [20]. Spirometry is performed according to the standard criteria [21].

Sleep study

At our clinic, full polysomnography is used for patients believed to suffer from sleep disorders other than or in addition to sleep apnea, which are not to be included in the present study. For the rest of the patients with suspected OSA diagnosis, a type 3 portable sleep monitor will be used. The sleep study includes continuous recording of airflow from a nasal pressure cannula, thoracic-abdominal motion, oxygen saturation, snoring and body position. Results from all sleep studies are analyze using standard criteria by trained personnel that are blind to the present protocol. An apnea is defined as an absence of airflow of 10Ā seconds or longer; a hypopnea as an airflow reduction (>50%) lastingā€‰ā‰„ā€‰10Ā seconds with a decrease in oxygen saturation over 4%. Obstructive apneas are defined as the absence of airflow in the presence of thoracic-abdominal motion. The AHI is calculated based on the average number of apnea plus hypopnea episodes per hour of recording time. Optimal titration of CPAP is obtained by using auto-CPAP (Autoset-T; ResMed, Sydney, Australia), according to previous validation procedures by the Spanish Sleep and Breathing Group [22]. Compliance with CPAP will be measured using the machinesā€™ internal timers. All patients will attend a new sleep study every year.

Laboratory analysis

At baseline and every year, whole blood samples are drawn using a 21G butterfly needle into serum gel, EDTA, sodium fluoride and PaxgeneW tubes (PreAnalytix GmbH, Switzerland). Serum glucose, triglycerides, total cholesterol and HDL cholesterol will be measured by spectrophotometry (Chemical Analyzer ILAB 650, Instrumentation Laboratory), and serum apolipoproteins A and B, will be measured by kinetic nephelometry (Immunochemistry Analyzer IMMAGE 800, BeckmanCoulter). Within two hours after collection, high sensitive C-reactive protein (CRP) will be measured based on a particle-enhanced turbidimetric immunoassay technique. For biobanking, about 15Ā ml of EDTA blood and 5Ā ml of blood without anticoagulant for serum preparation are to be fractionated into plasma, serum and whole blood and in 1Ā ml dot-coded metal-free cryotubes are to be stored at -80Ā°C. Inflammatory markers to be assessed are shown in TableĀ 2.

Table 2 Outcome measurements in the Epigenetics in Obstructive Sleep Apnea (EPIOSA) study

Flow cytometry

At baseline, whole fresh blood with EDTA will be obtained for flow cytometry. TableĀ 3 shows the cells stained, and also the antibodies and kits used. The samples will be incubated for 15Ā min at room temperature, then acquired in a GALLIOS flow cytometer (Beckman Coulter) and analyzed with the KALUZA software (Beckman Coulter).

Table 3 Subset of T cell population to be analyzed

DNA methylation analysis

Part of the blood samples collected in EDTA tubes are stored at -80Ā°C until DNA isolation, which is performed in the Department of Molecular Biology at the Faculty of Veterinary of the University of Zaragoza. Genomic DNA is obtained with the use of the illustra blood genomic Prep Midi Flow Kit (GE Healthcare, UK) following the manufacturerā€™s instructions. Genome-wide DNA methylation profiles will be studied in approximately 1Ā Ī¼g of genomic DNA treated with sodium bisulfite. The converted DNA will be analyzed using Illuminaā€™s Infinium Human Methylation 450 BeadChip assay (Illumina, San Diego, CA, USA). To minimize position effects, cases and controls will be randomly distributed. The assay allows determination of DNA methylation levels at >450,000 CpG sites covering all designable RefSeq genes, including promoter, 5ā€², and 3ā€² regions. It captures CpG islands and shores, non-CpG methylated sites, microRNA promoter regions and disease-associated regions identified through genome-wide association studies [24]. Illumina array data will be processed using the Methylation Module of GenomeStudio v1.9 software. To identify differentially methylated regions (DMRs), we will use a 1-kb sliding window and apply Fisherā€™s method to combine P values for each 1-kb region on the basis of all probes within each window [25]. Significant DMRs will be selected at a 1% FDR on autosomes and 5% FDR on chrX. After statistical analyses, the methylation patterns of the gene of interest will be confirmed by sequencing of the 24 bisulfite-treated DNA samples used for the genome wide analysis.

Gene expression analysis

Blood samples stored at -80Ā°C in PaxGene (TM) tubes will be used for total RNA isolation using PAXgene Blood RNA Kit (Qiagen, Venlo, Netherlands). Quantitative real time polymerase chain reactions (qRT-PCR) will be performed to test whether differential methylation patterns of the selected genes affect their expression level. Complementary DNA will be synthesized from total RNA using random hexamers and the SuperScriptĀ® III First Strand Synthesis Kit (Life Technologies, Carlsbad, California, US). Primers and TaqManĀ® probes will be selected from the Applied Biosystems Inventories Assays and qRT-PCR will be performed in a The StepOneā„¢ Real-Time PCR System (Applied Biosystems, Life Technologies, Carlsbad, California, US).

MicroRNA analysis

This study is based in the expression of 96 miRNAs. These miRNAs have been carefully selected based on those predicted by bioinformatic algorithms and databases to regulate genes known to be relevant to inflammation. Total RNA will be extracted from cryopreserved samples using Paxgene Blood miRNA kit (PreAnalitiX) according to the manufacturerā€™s protocol. RNA integrity will be tested using the 2100 Bioanalyzer (Agilent Technologies, Santa Clara, California, US). Samples will be reverse transcribed using the TaqmanĀ®MicroRNA Reverse Transcription Kit (Applied Biosystems, Life Technologies, Carlsbad, California, US) and mature miRNAs will be quantified by real-time PCR using the TaqmanĀ®MicroRNA Assays [26]. miRNA expression will be analyzed using the BioMark 96:96 Dynamic Array (Fluidigm Corporation, San Francisco, California, US). Data will be analyzed using the BioMark Real-Time PCR Analysis Software v2.0 (Fluidigm). The Ct value will be used for analysis by the 2-āˆ†āˆ†Ct method [27].

Subclinical atherosclerosis imaging

Carotid intima-media thickness (CIMT)

At baseline and every year, CMIT are to be assessed in all subjects with an ultrasound system (IU22 Philips). Ultrasound images are acquired by linear high frequency 2-dimensional probes following the protocol of the Bioimage Study [28]. Carotid plaque is defined as a focal structure that protrudes into the lumen of the carotid artery at least 0.5Ā mm or ā‰„50% thicker than the surrounding. Three measurements each are made on the far wall of the left and right common carotid arteries in end diastole, 1Ā cm below the point of bifurcation. The average of the 6 readings will be taken as the CIMT value.

Magnetic resonance imaging (MRI)

At baseline and after the 5-year follow up, all subjects are to undergo a cerebral MRI. We use a multisequence MRI protocol on a 1.5-T scanner (GE Healthcare). For cerebral microbleeds detection we will use an accelerated three-dimensional T2*-weighted gradient-recalled echo sequence. MRI scans are viewed by radiology physicians blinded to the OSA status of the subject. As previously described cerebral microbleeds are defined as focal areas of very low signal intensity on T2*-weighted imaging without signal abnormalities on other structural sequences [29]. Microbleeds are classified according to cerebral localization (lobar brain sites or infratentorial locations).

Power considerations

The calculation of EPIOSAā€™s planned sample size of 300 patients and 50 matched controls, is based on three estimations: a) in pediatric patients, those with OSA (nā€‰=ā€‰37), showed a reduced Treg population and altered Th1:Th2 balance toward Th1 predominance compared with non-OSA controls (nā€‰=ā€‰13) [30]; b) differences among DNA methylation in inflammatory genes were observed among OSA patients with high hsCRP (nā€‰=ā€‰31), compared with normal non-OSA controls (nā€‰=ā€‰31) [16]; and C) a randomized study showed that effective treatment of OSA with continuous positive airway pressure for 4Ā months significantly decreases IMT as early signs of atherosclerosis in 24 patients with severe OSA [31]. We expected a loss to follow-up of an average of 2% per year. In this way at the end of the 5-year follow-up we hope to analyze outcomes in 270 patients with OSA and 45 without OSA. This sample size ensures to analyze subgroups of patients according with prescribed treatment for OSA. Specifically, the sample will have 80% power to detect average IMT differences when comparing OSA patient treated and non-treated CPAP. The power is calculated based on a 2 SD with a significance level of 0.0125.

Statistical analyses

Groupwise comparisons (n >2) will be performed using a nonparametric Kruskal-Wallis test followed by a Mannā€“Whitney U test as appropriate. Pairwise comparisons were performed using a nonparametric Mannā€“Whitney test unless otherwise indicated. Chi square tests will be performed for categorical variables. Regression models will be applied to assess the effect of OSA, biomarkers, peripheral lymphocytes and epigenetic changes on CIMT, carotid plaque and cerebral microbleeds. All models will be adjusted for age and BMI, and additionally for covariables that may change the estimated risk beyond 5% Specific statistics procedures will be performed for the arrays as described above. STATA-12 for Windows (STATA CORP, TX, USA) are to be used for all analyses.

Discussion

The Epigenetics Status and Subclinical Atherosclerosis in Obstructive Sleep Apnea (EPIOSA) study is a clinical based study of patients with OSA and non-OSA, both without other associated comorbid conditions. EPIOSA aims to elucidate mechanisms involved in the development of OSA complications with a focus on OSA-associated subclinical atherosclerosis. To achieve this, standardized phenotyping of OSA is being performed at baseline and at one and 5Ā years, with imaging techniques and biobanking of serum, plasma, DNA, mRNA and urine. EPIOSA aims to recruit ambulatory patients attending the Sleep Clinic for study of suspected obstructive sleep apnea.

Prevalence of OSA is increasing in industrialized countries. OSA prevalence parallels the ā€œobesity pandemicā€. Both disorders share metabolic and cardiovascular complications that are a major public health and financial challenge. Obesity is a well known risk factor for cardiovascular disorders but the role of OSA as an independent contributor of cardiovascular outcomes is more controversial since most patients with severe OSA are obese. To minimized this problem, in this study we will exclude patients with a BMIā€‰>ā€‰35Ā kg/m2.

Atherosclerosis is considered the principal contributor of cardiovascular disease. Atherosclerotic lesions and atheromas are localized in the arterial intima-media layers due to accumulation of lipids and inflammatory cells. Endothelial dysfunction triggered by oxidized low-density lipoprotein (OxLDL) is the first step in atherosclerosis. Endothelial cells activation results in the expression of adhesion molecules, cytokines and chemokines that attract circulating monocytes and naĆÆve T lymphocytes. These cells migrate across the endothelium and infiltrate the vascular wall. Monocytes then differentiate into macrophages that take OxLDL to transform in ā€œfoam cellsā€. The accumulation and activation of T cells recognizing OxLDL in the intima constitute the adaptive immunity component in the pathogenesis of atherosclerosis and elicit proinflammatory stimuli that further exacerbate and propagate this disease [32]. The importance of adaptive immune activation has been underlined in the Multi-Ethnic Study of Atherosclerosis (MESA). In the MESA study, which included otherwise healthy individuals, higher circulating CD4+ to CD4+ naĆÆve cells ratio were found to be associated with subclinical atherosclerosis as estimated by carotid ultrasonography [33]. Several subsets of T cells are found within the plaque mainly of the CD4+ phenotypes including Th1, Th2, Th17 and regulatory T cells (Treg) subtypes. Th1 is the most abundant T cell in the human plaque and together with Th17 are considered pro-atherogenic T cells. Th2 cells are rarely detected in lesions and have been suggested to be anti-atherogenic. Treg control the Th1/Th2 balance and are considered to be atheroprotective [34]. Epigenetic regulation is being recognized as an important factor in the pathogenesis of atherosclerosis. The forkhead box transcription factor, FOXP3, is considered the master switch in the regulation of Treg development and function [35]. Furthermore, FOXP3+ Tregs inhibit atherosclerosis by modulating lipoprotein metabolism [17]. A dose-dependent increase in the methylation of the Treg-specific demethylated region in FOXP3 was observed in cultures of peripheral blood mononuclear cells in patients with acute coronary syndromes [36], suggesting that epigenetic suppression of FOXP3 might lead to down-regulation of Treg cells, and in turn increase the risk of atherosclerosis.

There are many potential mechanisms linking OSA, endothelial dysfunction, atherosclerosis and cardiovascular diseases. Sleep loss and fragmentation could trigger endothelial dysfunction and immune response but its remains to be demonstrated if this occurs in patients with OSA. Chronic intermittent hypoxia (CHI) is the other hallmark of OSA. CIH can induce endothelial dysfunction independently of respiratory effort in animal models [37]. In patient with OSA, oxygen desaturation index (ODI), a surrogate of CHI severity has been associated with endothelial dysfunction [38]. On the other hand, ODI emerged as an independent predictor of carotid and aortic wall thickness in OSA patients using cardiovascular magnetic resonance study [39]. CPAP treatment of OSA significantly reduces carotid intima-media thickness, supporting the concept that OSA is an independent risk factor for atherosclerosis [31]. There is growing evidence that OSA is associated with increased activation of immune and inflammatory cells including circulating monocytes, platelets and lymphocytes and proinflammatory cytokines such as leukotrienes, interferon-Ī³, TNF-Ī± and IL-6 have been reported elevated in OSA [8]. CRP levels have been particularly studied with conflicting results [7, 40]. The intermediate process for an increased risk of atherosclerosis in OSA could be the presence of this systemic inflammation and immunity activation as a result of the CHI. There is no evidence of genetic alterations in patients with OSA that favor the development of systemic inflammation, changes the adaptive immunity or that specifically encourage the emergence of early atherosclerosis. However, it is likely a different response from the pro-inflammatory genes to CIH. This response depends in part on epigenetic mechanisms that promote or suppress the expression of these genes. Recently in pediatric OSA those children with elevated CRP, were more likely to have increased DNA methylation of the FOXP3 gene [16]. This result in a reduced Treg population and in a swift Th1:Th2 balance towards Th1 predominance [29]. These immune-inflammatory changes favor endothelial dysfunction and a pro-atherogenic state and ultimately an increased risk for cardiovascular diseases. If those mechanisms also play a role in accelerated atherosclerosis in adults with sleep apnea is unknown. In conclusion, the current study is novel in several ways: 1) It is the first study to evaluate the relationship between baseline OSA phenotypes and normal matched controls without comorbidities and subclinical atherosclerosis and 2) it will allow prospective analysis of inflammatory biomarkers, as well as methylation and miRNA abnormalities in non-OSA subjects and patients with treated or non-treated OSA. Our results may provide more information on the association of OSA and cardiovascular diseases and possibly identifying novel targets for therapeutic intervention. It could also provide evidence that CPAP can not only improve daytime symptoms, but also have a positive effect on progression of subclinical atherosclerosis.

Ethical aspects

The study is being conducted in accordance with the Declaration of Helsinki and good clinical practice guidelines. All participants must provide written informed consent.

The study has been approved by the Regional Institutional Review Board of Aragon (IACS), Spain, project 03/2013. The study has also been registered at ClinicalTrials.gov identifier: NCT01475421.

References

  1. Young T, Peppard PE, Gottlieb DJ: Epidemiology of obstructive sleep apnea. A population health perspective. Am J RespirCrit Care Med. 2002, 165: 1217-1239. 10.1164/rccm.2109080.

    ArticleĀ  Google ScholarĀ 

  2. Marin JM, Carrizo SJ, Vicente E, Agusti AG: Long-term cardiovascular outcomes in men with obstructive sleep apnoea-hypopnoea with or without treatment with continuous positive airway pressure: an observational study. Lancet. 2005, 365: 1046-1053. 10.1016/S0140-6736(05)71141-7.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  3. BarbĆ© F, DurĆ”n-Cantolla J, SĆ”nchez-de-la-Torre M, MartĆ­nez-Alonso M, Carmona C, BarcelĆ³ A, Chiner E, Masa JF, Gonzalez M, Marin JM, Garcia-Rio F, Diaz de Aturi J, Teran J, Mayos M, de la PeƱa M, Monasterio C, del Campo F, Montserrat JM, Spanish Sleep And Breathing Network: Effect of continuous positive airway pressure on the incidence of hypertension and cardiovascular events in nonsleepy patients with obstructive sleep apnea: a randomized controlled trial. JAMA. 2012, 307: 2161-2168.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  4. Marin JM, Agusti A, Villar I, Forner M, Nieto D, Carrizo SJ, BarbƩ F, Vicente E, Wei Y, Nieto FJ, Jelic S: Association between treated and untreated obstructive sleep apnea and risk of hypertension. JAMA. 2012, 307: 2169-2176.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  5. Gottlieb DJ, Yenokyan G, Newman AB, OĀ“Connor GT, Punjabi NM, Quan SF, Redline S, Resnick HE, Tong EK, Diener-West M, Shahar E: Prospective study of obstructive sleep apnea and incident coronary heart disease and heart failure: the sleep heart health study. Circulation. 2010, 122: 352-360. 10.1161/CIRCULATIONAHA.109.901801.

    ArticleĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  6. Redline S, Yenokyan G, Gottlieb DJ, Shahar E, Oā€™Connor GT, Resnick HE, Dieter-West M, Sandres MH, Wolf PA, Geragthy EM, Lebowith M, Punjabi NM: Obstructive sleep apnea-hypopnea and incident stroke: the sleep heart health study. Am J Respir Crit Care Med. 2010, 182: 269-277. 10.1164/rccm.200911-1746OC.

    ArticleĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  7. Yokoe T, Minoguchi K, Matsuo H, Oda N, Minogucho H, Yoshino G, Hirano T, Adachi M: Elevated levels of C-reactive protein and interleukin-6 in patients with obstructive sleep apnea syndrome are decreased by nasal continuous positive airway pressure. Circulation. 2003, 107: 1129-1134. 10.1161/01.CIR.0000052627.99976.18.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  8. Pack AI, Gislason T: Obstructive sleep apnea and cardiovascular disease: a perspective and future directions. Prog Car Dis. 2009, 51: 434-451. 10.1016/j.pcad.2009.01.002.

    ArticleĀ  CASĀ  Google ScholarĀ 

  9. Bastard JP, Maachi M, Lagathu C, Kim MJ, Caron M, Vidal H, Capeau J, Feve B: Recent advances in the relationship between obesity, inflammation, and insulin resistance. Eur Cytokine Netw. 2006, 17: 4-12.

    CASĀ  PubMedĀ  Google ScholarĀ 

  10. Barcelo A, Barbe F, Llompart E, Mayoralas LR, Ladaria A, Bosch M, Agusti AG: Effects of obesity on C-reactive protein level and metabolic disturbances in male patients with obstructive sleep apnea. Am J Med. 2004, 117: 118-121. 10.1016/j.amjmed.2004.01.025.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  11. Taheri S, Austin D, Lin L, Nieto FJ, Young T, Mignot E: Correlates of serum C-reactive protein (CRP)ā€“no association with sleep duration or sleep disordered breathing. Sleep. 2007, 30: 991-996.

    PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  12. Arnardottir ES, Maislin G, Schwab RJ, Staley B, Benediktsdottir B, Olafsson I, Juliusson S, Romer M, Gislason T, Pack AI: The interaction of obstructive sleep apnea and obesity on the inflammatory markers c-reactive protein and interleukin-6: the Icelandic Sleep Apnea Cohort. Sleep. 2012, 35 (7): 921-932.

    PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  13. Jelic S, Lederer DJ, Adams T, Padeletti M, Colombo PC, Factor PH, Le Jemtel TH: Vascular inflammation in obesity and sleep apnea. Circulation. 2010, 121 (8): 1014-1021. 10.1161/CIRCULATIONAHA.109.900357.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  14. Watson JA, Watson CJ, McCann A, Baugh J: Epigenetics, the epicenter of the hypoxic response. Epigenetics. 2010, 5: 293-296. 10.4161/epi.5.4.11684.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  15. Stenvinkel P, Karimi M, Johansson S, Axelsson J, Suliman M, Lindholm B, HeimbuĆ¼rger O, Barany P, Alvestrand A, Nordfords L, Qureshi AR, Ekstrƶm TJ, Schalling M: Impact of inflammation on epigenetic DNA methylation: a novel risk factor for cardiovascular disease?. J Intern Med. 2007, 261: 488-499. 10.1111/j.1365-2796.2007.01777.x.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  16. Kim J, Bhattacharjee R, Khalyfa A, Kheirandish-Gozal L, Capdevila OS, Wang Y, Gozal D: DNA methylation in inflammatory genes among children with obstructive sleep apnea. Am J Respir Crit Care Med. 2012, 185: 330-338. 10.1164/rccm.201106-1026OC.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  17. Klingenberg R, Gerdes N, Badeau RM, GisterƄ A, Strodthoff D, Ketelhuth DF, Lundberg AM, Rudling M, Nilsson SK: Depletion of FOXP3+ regulatory T cells promotes hypercholesterolemia and atherosclerosis. J Clin Invest. 2013, 123: 1323-1334. 10.1172/JCI63891.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  18. Grupo EspaƱol de SueƱo: Consenso nacional sobre el sƭndrome de apneas-hipopneas del sueƱo. Arch Bronconeumol. 2005, 41 (Suppl 4): 1-100.

    Google ScholarĀ 

  19. Johns MW: A new method for measuring daytime sleepiness: the Epworth sleepiness scale. Sleep. 1991, 14: 540-545.

    CASĀ  PubMedĀ  Google ScholarĀ 

  20. Chobanian AV, Bakris GL, Black HR, Cushman WC, Green LA, Izzo JL, Jones DW, Materson BJ, Oparil S, Wright JT, Rocella EJ: The seventh report of the Joint National Committee on Prevention, Detection, Evaluation, and Treatment of High Blood Pressure: the JNC 7 report. JAMA. 2003, 289 (19): 2560-2572. 10.1001/jama.289.19.2560.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  21. Miller MR, Hankinson J, Brusasco V, Burgos F, Casaburi R, Coates A, Crapo R, Enright P, van der Grinten CP, Gustafsson P, Jensen R, Johnson DC, MacIntyre N, McKay R, Navajas D, Pedersen OF, Pellegrino OR, Pellegrino R, Viegi G, Wanger J: ATS/ERS Task Force. Standardisation of spirometry. Eur Respir J. 2005, 26: 319-338. 10.1183/09031936.05.00034805.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  22. Masa JF, JimĆ©nez A, DurĆ”n J, Capote F, Monasterio C, Mayos M, TerĆ”n J, HernĆ”ndez L, BarbĆ© F, MaimĆ³ A, Rubio M, Montserrat JM: Alternative methods of titrating continuous positive airway pressure: a large multicenter study. Am J Respir Crit Care Med. 2004, 170 (11): 1218-1224. 10.1164/rccm.200312-1787OC.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  23. Liu W, Putnam AL, Xu-Yu Z, Szot GL, Lee MR, Zhu S, Gottlieb PA, Kapranov P, Gingeras TR, Fazekas de St Groth B, Clayberger C, Soper DM, Ziegler SF, Bluestone JA: CD127 expression inversely correlates with FoxP3 and suppressive function of human CD4+ T reg cells. J Exp Med. 2006, 203: 1701-1711. 10.1084/jem.20060772.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  24. Bibikova M, Barnes B, Tsan C, Ho V, Klotzle B, Le JM, Delano D, Zhang L, Schroth GP, Gunderson KL, Fan JB, Shen R: High density DNA methylation array with single CpG site resolution. Genomics. 2011, 98: 288-295. 10.1016/j.ygeno.2011.07.007.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  25. Bock C: Analysing and interpreting DNA methylation data. Nat Rev Genet. 2012, 13: 705-719.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  26. Chen C, Ridzon DA, Broomer AJ, Zhou Z, Lee DH, Nguyen JT, Barbisin M, Xu NL, Mahuvakar VR, Andersen MR, Lao KQ, Livak KJ, Guegler KJ: Real-time quantification of microRNAs by stem-loop RT-PCR. Nucleic Acids Res. 2005, 33: e179-10.1093/nar/gni178.

    ArticleĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  27. Livak KJ, Schmittgen TD: Analysis of relative gene expression data using real-time quantitative PCR and the 2(-Delta Delta C(T)) Method. Methods. 2001, 25: 402-408. 10.1006/meth.2001.1262.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  28. Muntendam P, McCall C, Sanz J, Falk E, Fuster V: The BioImage Study: novel approaches to risk assessment in the primary prevention of atherosclerotic cardiovascular disease: study design and objectives. Am Heart J. 2010, 160: 49-57. 10.1016/j.ahj.2010.02.021.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  29. Greenberg SM, Vernooij MW, Cordonnier C, Viswanathan A, Al-Shahi Salman R, Warach S, Launer LJ, Van Buchem MA, Breteler MM, Microbleed Study Group: Cerebral microbleeds: a guide to detection and interpretation. Lancet Neurol. 2009, 8: 165-174.

    ArticleĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  30. Tan HL, Gozal D, Wang Y, Bandla HP, Bhattacharjee R, Kulkarni R, Kheirandish-Gozal L: Alterations in circulating T-cell lymphocyte populations in children with obstructive sleep apnea. Sleep. 2013, 36: 913-922.

    PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  31. Drager LF, Bortolotto LA, Figueiredo AC, Krieger EM, Lorenzi GF: Effects of continuous positive airway pressure on early signs of atherosclerosis in obstructive sleep apnea. Am J Respir Crit Care Med. 2007, 176: 706-712. 10.1164/rccm.200703-500OC.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  32. Hermansson A, Ketelhuth DF, Strodthoff D, Wurm M, Hansson EM, Nicoletti A, Paulsson-Berne G, Hansson GK: Inhibition of T cell response to native low-density lipoprotein reduces atherosclerosis. J Exp Med. 2010, 207 (5): 1081-1093. 10.1084/jem.20092243.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  33. Olson NC, Doyle MF, Swords N, Huber SA, Psaty BM, Kronmal RA, Tracy RP: Decrease naĆÆve and increased memory CD4+ T cells are associated with subclinical atherosclerosis: the Milti-Ethnic Study of Atherosclerosis. PLoS One. 2013, 8 (8): e71498-10.1371/journal.pone.0071498.

    ArticleĀ  CASĀ  PubMedĀ  PubMed CentralĀ  Google ScholarĀ 

  34. Hansson GK, Hermansson A: The immune system in atherosclerosis. Nat Immunol. 2011, 12: 204-212.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  35. Hori S, Nomura T, Sakaguchi S: Control of regulatory T cell development by the transcription factor Foxp3. Science. 2003, 299 (5609): 1057-1061. 10.1126/science.1079490.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  36. Jia L, Zhu L, Wang JZ, Wang XJ, Chen JZ, Song L, Wu YJ, Sun K, Yuan ZY, Hui R: Methylation of FOXP3 in regulatory T cells is related to the severity of coronary artery disease. Atherosclerosis. 2013, 228: 346-352. 10.1016/j.atherosclerosis.2013.01.027.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  37. NƔcher M, FarrƩ R, Montserrat JM, Torres M, Navajas D, Bulbena O, Serrano-Mollar A: Biological consequences of oxygen desaturation and respiratory effort in an acute animal model of obstructive sleep apnea (OSA). Sleep Med. 2009, 10: 892-897. 10.1016/j.sleep.2008.09.014.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  38. Nieto FJ, Herrington DM, Redline S, Benjamin EJ, Robbins JA: Sleep apnea and markers of vascular endothelial function in a large community sample of older adults. Am J Respir Crit Care Med. 2004, 169: 354-360. 10.1164/rccm.200306-756OC.

    ArticleĀ  PubMedĀ  Google ScholarĀ 

  39. Kylintireas I, Craig S, Nethononda R, Kohler M, Francis J, Choudhury R, Stradling J, Neubauer S: Atherosclerosis and arterial stiffness in obstructive sleep apneaā€“a cardiovascular magnetic resonance study. Atherosclerosis. 2012, 222: 483-489. 10.1016/j.atherosclerosis.2012.03.036.

    ArticleĀ  CASĀ  PubMedĀ  Google ScholarĀ 

  40. Tahini S, Austin D, Lin L, Nieto FJ, Young T, Mignot E: Correlates of C-reactive protein (CRP) ā€“ no association with sleep duration or sleep disordered breathing. Sleep. 2007, 30: 991-996.

    Google ScholarĀ 

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Acknowledgements

We appreciate the nurses support of the Sleep Unit and Respiratory Department of the Hospital Universitario Miguel Servet to assist with recruitment, data collection and follow-up. We thank Marta Marin-Oto for proofreading the manuscript.

Funding

EPIOSA is financed by Grants from the Instituto de Salud Carlos III (PI12/01275; Ministry of Economy, Madrid, Spain), the Spanish Society of Pneumology (071/2012; SEPAR, Barcelona, Spain), the Aragon Society of Pneumology (02/2013; SADAR, Zaragoza, Spain).

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Correspondence to Jose M Marin.

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The authors declare that they have no competing interests that are relevant to the content of this article.

Authorsā€™ contributions

JMM, JA, TM, SJC, BG, study concept and design. MA, IM-B, RB, AS, JG, JAG-E, will carried out the molecular genetic studies and the immunoassays. IV will performed the statistical analysis. VG, MF, JPC will collect the data. LR will interpret the MRI data. All authors critically reviewed and approved the final manuscript.

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Marin, J.M., Artal, J., Martin, T. et al. Epigenetics modifications and Subclinical Atherosclerosis in Obstructive Sleep Apnea: The EPIOSA study. BMC Pulm Med 14, 114 (2014). https://doi.org/10.1186/1471-2466-14-114

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