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Tripeptide analysis of protein structures

Sharmila Anishetty12, Gautam Pennathur12 and Ramesh Anishetty3*

Author Affiliations

1 AU-KBC Research Centre, Anna University, Chennai-44, India

2 Centre for Biotechnology, Anna University, Chennai-25, India

3 The Institute of Mathematical Sciences, Chennai-113, India

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BMC Structural Biology 2002, 2:9  doi:10.1186/1472-6807-2-9

The electronic version of this article is the complete one and can be found online at:

Received:13 July 2002
Accepted:21 December 2002
Published:21 December 2002

© 2002 Anishetty et al; licensee BioMed Central Ltd. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose, provided this notice is preserved along with the article's original URL.



An efficient building block for protein structure prediction can be tripeptides. 8000 different tripeptides from a dataset of 1220 high resolution (≤ 2.0°A) structures from the Protein Data Bank (PDB) have been looked at, to determine which are structurally rigid and non-rigid. This data has been statistically analyzed, discussed and summarized. The entire data can be utilized for the building of protein structures.


Tripeptides have been classified into three categories: rigid, non-rigid and intermediate, based on the relative structural rigidity between Cα and Cβ atoms in a tripeptide. We found that 18% of the tripeptides in the dataset can be classified as rigid, 4% as non-rigid and 78% as intermediate. Many rigid tripeptides are made of hydrophobic residues, however, there are tripeptides with polar side chains forming rigid structures. The bulk of the tripeptides fall in the intermediate class while very small numbers actually fall in the non-rigid class. Structurally all rigid tripeptides essentially form two structural classes while the intermediate and non-rigid tripeptides fall into one structural class. This notion of rigidity and non-rigidity is designed to capture side chain interactions but not secondary structures.


Rigid tripeptides have no correlation with the secondary structures in proteins and hence this work is complementary to such studies. Tripeptide data may be used to predict plausible structures for oligopeptides and for denovo protein design.

Tripeptide; Structural homologs; Hydrophobicity; Structural rigidity


The exact conformation of a tripeptide in a protein can be determined from its side chain and hydrogen bond interactions. The backbone conformation is captured in the Ramachandran angles φ, ψ [1]. The rotamer degrees of freedom fixes the entire side chain. A fixed tripeptide occurring in different proteins will have different side chain interactions, which in turn determine the range of φ, ψ angles. These ranges are typically fairly wide and hence their utility in protein structure prediction is limited. The use of Ramachandran angles comes about from the well known planarity of the peptide bond. In this work we would like to complement this bias. We expect that Cβ locations are more directly constrained by the side chain interactions. The data was therefore analyzed in terms of the Cα and Cβ locations, without the bias of the planarity of the peptide bond. For structure prediction, we need the side chain interaction statistics in terms of Cα and Cβ locations. The planarity of the peptide bonds can be imposed as a further constraint.

In theory there are 8000 tripeptides and 160,000 tetrapeptides. With the dataset of about 1220 polypeptide chain structures of high resolution (≤ 2°A), an analysis of tripeptide study is feasible and a tetrapeptide study will be statistically insignificant. In our representative protein data set, for each tripeptide "R1 R2 R3" (Figure 1) we pick the corresponding Cαi, Cβi i = 1,2,3 positions, and then compute distances (αi,αj), (αi,βj) and (βi,βj) for i not equal to j. These 12 distances along with the covalent bond length (αi,βi) capture the entire solid structure of the tripeptide as embedded in the protein. This information is sufficient to fix a unique φ, ψ value along with the position of the Cβ. The same " R1 R2 R3" is picked up from different proteins and from different locations within the same protein. This data is statistically analyzed without any further physico-chemical bias about the residues. In this way, data about various possible conformations of a tripeptide is gathered and analyzed as explained in the discussion section.

thumbnailFigure 1. Tripeptide "R1 R2 R3" with Cα and Cβ positions

Attempts to understand and capture structural features were first done as inter residue contact statistics [2,3] involving long range interactions. Short range pairwise residue statistics is contained in the Protein Atlas [4]. In the literature [5-12] there have been many attempts to predict new protein or peptide structures using small amino acid subsequences or fragments of length 3 to10. In the seminal paper [5], Unger et al. analyzed hexamers and identified about 100 structural building blocks, in which, each amino acid has a position dependent probability of occurrence. Others [10] classified the 20 amino acids into 4 classes (Glycine, Proline, hydrophobic and hydrophilic) and identified structural clusters. Baker et al [11,12] used fragments with definite amino acid sequences, and their structural variations in different known proteins, as potential templates for predicting new protein structures. In all the cases they have only used the backbone structure (i.e. Cα co-ordinates only). In contrast, we have used the Cα and Cβ co-ordinates, which then captures a significant side chain configuration. Recently, de novo protein design [13-19,22] is gaining importance and our data can also be used for this purpose.


Tripeptides have been classified into three categories: rigid, non-rigid and intermediate based on the relative structural rigidity of various distances between Cα and Cβ atoms in a tripeptide. In our sample of crystallized proteins, of the possible 8000 tripeptides, only 7964 occurred. The 36 tripeptides, which do not occur in our sample, however do occur in the SWISS-PROT [20] sequence data. The tripeptides, which occurred more than 5 times in our sample, were taken into consideration in our analysis. We found that 1294 (18%) tripeptides can be classified as rigid, 302 (4%) as non-rigid and 5731(78%) as intermediate. We classify rigid tripeptides as those, where at least one (1,3) distance has a fluctuation less than 0.4°A and non-rigid tripeptides as those with all the (1,3) distance fluctuations greater than 0.7°A. After accounting for rigid and non-rigid, all the intermediates have at least one (1,3) distance fluctuation between 0.4 to 0.7°A. The entire dataset of 7964 tripeptides along with all the 12 relative average distances, standard deviations and frequencies is available at the URL webcite. A profile of this large data set can be obtained by studying side chain relative abundance (Table 3) and structural homology (Table 4). To find correlation between the three classes of tripeptides and known secondary structure subsequences, 9986 helices of sequence length ≥ 5, 4541 helices of sequence length ≥ 12, 9544 beta strands of length ≥ 3 and 3120 beta strands of length ≥ 7 from DSMP [21] were analyzed and the results are tabulated in Table 5. The distribution of the three classes of tripeptides in these secondary structure elements mirrors their distribution in the entire dataset, occurrence being predominantly intermediate followed by rigid and non-rigid. It can be inferred that the rigid tripeptides have no definite correlation with secondary structure elements.

Table 3. Column 1 shows the amino acid. Columns 2 to 4 show percentage of occurrence of the 20 amino acids in Intermediate (I), Rigid (R) And Non-rigid (N) categories respectively.

Table 4. Column 1 has the mean (α1,α3) distance ranges (first bin 5.2 to 5.4°A and so on) Columns 2 to 4 have counts of intermediate, rigid and non-rigid tripeptides respectively, falling in each bin.

Table 5. Intermediate, rigid and non-rigid tripeptide occurrence in relative percentages ± Standard deviation (in %), in secondary structures and in the entire dataset.

Table 3 shows the frequency of various amino acid residues occurring in the three categories intermediate, rigid and non-rigid. In any category we have mentioned the relative percentage of occurrence within the same tripeptide category. The amino acids Methionine, Proline, Tryptophan and Glutamine occur predominantly in the rigid tripeptides and not as much in the other two categories, suggesting that Methionine, Proline, Tryptophan and Glutamine can cause structural rigidity in a tripeptide. Similarly, it can be inferred that Serine and Threonine can cause structural non-rigidity in a tripeptide. The amino acid Cysteine tends to be either in the rigid or in the non-rigid category, but rarely in the intermediate category. The sum of all the percentage numbers within a category falls a little short of 300, since the residues occur at any of the three possible positions in a tripeptide. Multiple occurrences of a residue within a tripeptide are counted only once.

Table 3 does not reflect the absolute frequency of occurrence in our dataset. For example Methionine and Tryptophan actually occur rarely. Therefore, we looked at those tripeptides that occur with more than the average frequency which is greater than 40 in our sample. This high frequency sample dataset again shows that Serine and Threonine are predominant amongst non-rigids, while Proline, Alanine, Isoleucine, and Leucine occur often amongst the rigids.

The structural homology of most tripeptides is shown in Table 4. The fluctuating nature of tripeptides is quite often captured by (α13) distances. So, we chose to classify various structural similarities by looking at the (α13) distances alone. This was done by taking the (α13) mean distances in bins of 0.2°A (range being 5.0 to 7.8°A) and counting the number of tripeptides falling into each bin. Table 4 shows that almost all the intermediate tripeptides have an (α13) distance of (6.0 ± 0.7)°A. We take the range to be 1.4 as the allowed fluctuation in any single tripeptide is 0.7°A. The tabulated results show that all intermediates are broadly similar in structure. Among the rigid tripeptides where the maximum allowed fluctuation in any individual tripeptide is 0.4°A only, we find that there are essentially two structural categories namely (5.8 ± 0.4)°A and (6.4 ± 0.4)°A. Finally the non-rigid tripeptides, whose fluctuations are certainly larger than 0.7°A, can be thought of having essentially one structure.

The frequency with which each of the tripeptides occurs in our sample set of 0.27 million tripeptides from 1220 polypeptide chains is shown in Figure 2.

thumbnailFigure 2. Legend: Series1 (All tripeptides) Series2 (Intermediate tripeptides) Series3 (Rigid tripeptides) Series 4 (Non-rigid tripeptides).

In the graph (Figure 2), Series 1 indicates the frequency profile of all the tripeptides, Series 2 is for intermediate, Series 3 is for rigid and Series 4 is for non-rigid. About 10% of the tripeptides occur with a frequency of less than 6. All the categories except the non-rigid do show that tripeptides that occur very frequently are fewer. They obey Poisson like statistics. Most tripeptides occur with a frequency of 15. Non-rigids are rare and almost each non-rigid tripeptide occurs with a different frequency. We find in our sample size of 0.27 million tripeptides, 12.6% fall into the rigid category, 4% in non-rigids and the remaining in intermediate.


Every tripeptide, which occurs in a particular protein and in a particular position, may yield one possible conformation. Examining the entire crystallized data will give the other possible conformations of the tripeptide structures in proteins. When this is statistically analyzed, it will give a clue to the magnitude of conformational fluctuations. It should be borne in mind that in every event, there are particular chemical bonds or steric hindrance, which makes the conformation possible.

The data set that we studied typically has about 0.2°A (R factor) uncertainty in the position of any co-ordinates of the atom. Consequently, most of the nearest neighbour distance data show a standard deviation ranging from 0 to 0.4°A. Next nearest neighbour (R1, R3) data will typically have a standard deviation of 0.4°A to 0.7°A. Let us say, we start with a rigid structure in three dimensions given by mutual distances between Cα1, Cβ1, Cα2, Cβ2 points. We have to find the Cα3 and Cβ3 co-ordinates. Eight additional distances with corresponding standard deviations (fluctuations) are given in Table 1 for each of the tripeptides. Many of the distances are actually redundant. Therefore, the best distances are picked to achieve our goal. It can be noted that the nearest neighbour distances have smaller fluctuations, and to fix a point we need the distance of a said point from three other known points. This translates to saying that we should know, at least one next to nearest neighbour distance. We can choose from amongst all the (1,3) distances, the one, which has the lowest fluctuation and thus fix Cα3 and then Cβ3 or vice versa. This yields the optimum procedure for fixing the three co-ordinates accurately. In Table 2 we have boldfaced the significant range around the medians within the category. This helps us in demarcating those with fewer fluctuations than the median.

Table 1. Sample of the Mean (M), Standard Deviation (SD) in Angstroms and Frequency (F).

Table 2. Column 1 shows the standard deviation ranges in °A. For example the first range is between 0 and 0.1°A and the second range is between 0.1 and 0.2°A and so on. Columns 2 to 12 show for the 12 distances, number of tripeptides, which fall in the range.

In Table 2 there are occasions where R1, R2 or R2, R3 distances show a large standard deviation, greater than 0.2°A. These abnormalities are artificial fluctuations in our crystallized data sample. For example, in certain PDB data, the authors have given more than one possible coordinate information due to experimental uncertainties in data interpretation. In our analysis, the first choice with its uncertainties has been taken. This is reflected in Table 2. These occasions are rare, and therefore, we have taken them as random errors causing fluctuations.

We discuss some possibilities for the rigidity of certain tripeptides. At the outset, we cannot make any strict criterion for rigidity. However, statistically more often than not the following observations hold. Rigidity due to Proline is well understood because of the side chain interacting covalently with the backbone. Consequently, Cβ is held rigidly upto trans and cis ambiguity. This amounts to the fact that essentially φ is frozen to -60° ± 20° [22]. The tripeptide therefore tends to be rigid. On closer examination, we find Proline in position 3 in the tripeptide, makes the tripeptide rigid. This is in agreement with the expectations from the covalent bond structure.

Methionine and Tryptophan are fairly bulky; perhaps, the good space filling is the cause for rigidity. Rigid tripeptides with Glutamine invariably also have another polar side chain residue; consequently they form a weak ionic bond within the tripeptide. Usually residues with long side chains have more rotameric fluctuations [23]. Occasionally we find they may bind with another residue within the tripeptide and end up being rigid. Lastly, non-rigids tend to have Serine and Threonine residues, which is consistent with their high polarity. Cysteine, which is well known for its tendency to form di-sulfide bridge, can fall into either rigid or non-rigid category but rarely in the intermediate category.

A single tripeptide does not have a unique structure, indeed it varies as the position of the tripeptide changes within a protein and across proteins. This fluctuation is captured by the standard deviations in Table 1. The classification of rigid, non-rigid and intermediate is most often determined by (α1,α3) distance alone. Therefore we can assess that two different tripeptides have similar structure, when their (α1,α3) distance along with their standard deviations overlap. This criterion implies that structurally homologous tripeptides have similar backbones. We have also looked at various other cross co-relations such as (α1,α3) vs (β1,β3) distances, (α1,α3) vs (α1,β3) distances etc. The structural homology conclusion, as presented in the results remains unaltered.


Tripeptide analysis is shown to be feasible and statistically significant results have been obtained. Some regular features of side chain interactions suggest that there are essentially three classes of tripeptides: rigid, non-rigid and intermediate. These have no correlation with the secondary structures in proteins and hence are complementary to such studies. This data may be used to predict plausible structures for oligopeptides and for denovo protein design. Attempts are being made by us to develop useful pseudo energy functions to realize the above aims.


A representative data set of 1220 protein structures was obtained from Protein Data Bank PDB [24] with a sequence identity ranging from 0–90% and ≤ 2°A resolution. This PDB list was generated from CulledPDB (R.L.Dunbrack Jr., webcite), which uses an algorithm similar to the remove-until-done algorithm of Hobohm and Sander [25]. A statistical analysis of 0.27 million tripeptides from this set was done. If the distribution of tripeptides across proteins were random, we would expect each of these tripeptides to occur on an average about 34 times. For each of these 0.27 million tripeptides 12 distances (α1,α2), (α1,β2), (β1,α2), (β1,β2), (α1,α3), (α1,β3), (β1,α3), (β1,β3), (α2,α3), (α2,β3), (β2,α3), (β2,β3) were calculated. The mean and standard deviation was then computed for each of these distances. The frequency of occurrence of each of the 12 distances was also calculated. The objective is to find if there is a conservation of distances in these tripeptides irrespective of where they occur in a protein sequence, or which protein they came from.

As a countercheck for the statistical reliability of our analysis, another representative dataset of 0.15 million tripeptides in 700 proteins with sequence identity ranging from 0–20% and ≤ 2°A resolution was taken and similar computational analysis was done. The quantitative results as reflected in Table 2 remained the same in both the sets. Statistical significance became better in the 0–90% sequence identity set. The standard deviation obtained in the 0–90% set is therefore much more reliable.

In order to determine the structural homologs in the tripeptides, (α1,α3) mean distances were taken in bins of 0.2°A in a range of 5.0°A to 7.8°A. The number of tripeptides from each of the three categories rigid, non-rigid and intermediate which fall into these 0.2°A bins was counted. The results are tabulated in Table 4. Helix and beta strand subsequences from DSMP [21] were extracted and the frequency of the three classes of tripeptides was computed. The results are tabulated in Table 5.

Supplementary material

The tripeptide distance data is available on the World Wide Web at the following URL: webcite

Authors' contributions

SA did the data analysis, programming and webcasting. PG introduced the subject and background chemistry to RA and SA. The concept was conceived by RA. Development of the concept was done by all the three authors.


We thank S.V.Ramanan, G.Baskaran and N.Gautham for their valuable discussions and comments. P.Gautam is grateful to DBT India for support through Department of Biotechnology grant number BT/PR1737/BID/18/015/99. We thank the anonymous referees' for their suggestions, which helped us make the manuscript more contextual.


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