| Literature DB >> 26833816 |
Ghazaleh Taherzadeh1, Yuedong Yang1,2, Tuo Zhang3, Alan Wee-Chung Liew1, Yaoqi Zhou1,2.
Abstract
Protein-peptide interactions are essential for all cellular processes including DNA repair, replication, gene-expression, and metabolism. As most protein-peptide interactions are uncharacterized, it is cost effective to investigate them computationally as the first step. All existing approaches for predicting protein-peptide binding sites, however, are based on protein structures despite the fact that the structures for most proteins are not yet solved. This article proposes the first machine-learning method called SPRINT to make Sequence-based prediction of Protein-peptide Residue-level Interactions. SPRINT yields a robust and consistent performance for 10-fold cross validations and independent test. The most important feature is evolution-generated sequence profiles. For the test set (1056 binding and non-binding residues), it yields a Matthews' Correlation Coefficient of 0.326 with a sensitivity of 64% and a specificity of 68%. This sequence-based technique shows comparable or more accurate than structure-based methods for peptide-binding site prediction. SPRINT is available as an online server at: http://sparks-lab.org/.Keywords: binding site; features; machine learning; prediction; protein-peptide; sequence-based; support vector machine
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Year: 2016 PMID: 26833816 DOI: 10.1002/jcc.24314
Source DB: PubMed Journal: J Comput Chem ISSN: 0192-8651 Impact factor: 3.376