Title of article :
Atom-wise statistics and prediction of solvent accessibility in proteins Original Research Article
Author/Authors :
Y. Hemajit Singh، نويسنده , , M. Michael Gromiha، نويسنده , , Akinori Sarai، نويسنده , , Shandar Ahmad، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
10
From page :
145
To page :
154
Abstract :
In this work, we explore a novel method to broaden the scope of sequence-based predictions of solvent accessibility or accessible surface area (ASA) to the atomic level. All 167 heavy atoms from the 20 types of amino acid residues in proteins have been studied. An analysis of ASA distribution of these atomic groups in different proteins has been performed and rotamer-style libraries have been developed. We observe that the ASA of some atomic groups (e.g., backbone C and N atoms) can be estimated from the sequence environment within a mean absolute error of 2–3 Å2. However, some side chain atoms such as CG in Pro, NH1 in Arg and NE2 in Gln show a strong variability making it more difficult to estimate their ASA from sequence environment. In general, the prediction of ASA becomes more difficult for atomic positions at the side chain extremities of long amino acid residues (aromatic side chain terminals being the exception). Several atomic groups are frequently exposed to solvent. Some of them have a bimodal distribution, suggesting two stable conformations in terms of their solvent exposure. More detailed understanding and prediction of solvent accessibility, i.e., at an atomic level is expected to help in bioinformatics approaches to structure prediction, functional relevance of atomic solvent accessibilities and other interaction analyses.
Keywords :
Neural network , Solvent accessibility , Solvation energy , structure prediction
Journal title :
Biophysical Chemistry
Serial Year :
2006
Journal title :
Biophysical Chemistry
Record number :
1119740
Link To Document :
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