4.3 Article

A sequence-based computational approach to predicting PDZ domain-peptide interactions

期刊

出版社

ELSEVIER
DOI: 10.1016/j.bbapap.2013.04.008

关键词

Dipeptide composition; Feature selection; PDZ domain-peptide interaction; Protein interaction; Protein sequence encoding

资金

  1. Thailand Research Fund (TRF) [MRG5580188]
  2. CAS Fellowship for Young International Scientist [2010Y1Sb10]
  3. NSFC [31050110435, 91029301, 61134013, 61072149, 31100949]
  4. Chief Scientist Program of SIBS of CAS [2009CSP002]
  5. Knowledge Innovation Program of SIBS of CAS [2011KIP203]
  6. Knowledge Innovation Program of CAS [KSCX2-EW-R-01]
  7. Key Project of Shanghai Education Committee [B.10-0412-08-001]
  8. Shanghai NSF [11ZR1443100]
  9. Japan (JSPS) FIRST Program initiated by CSTP

向作者/读者索取更多资源

The PDZ domain is one of the most ubiquitous protein domains that is involved in coordinating signaling complex formation and protein networking by reversibly interacting with multiple binding partners. It has been linked to many devastating diseases such as avian influenza, Fraser syndrome, Usher syndrome and Dejerine-Sottas neuropathy. Understanding the selectivity of PDZ domains can help elucidate how defects in PDZ proteins and their binding partners lead to human diseases. Since experimental methods to determine the interaction specificity of the PDZ domains are expensive and labor intensive, an accurate computational method is thus needed. Our developed support vector machine-based predictor using dipeptide composition is shown to qualitatively predict PDZ domain-peptide interaction with a high accuracy rate. Furthermore, since most of the dipeptide compositions are redundant and irrelevant, we propose a new hybrid feature selection technique to select only a subset of these compositions for interaction prediction. The experimental results show that only approximately 25% of dipeptide features are needed and that our method improves the prediction results significantly. The selected dipeptide features are also analyzed and shown to play important roles in specificity patterns of PDZ domains. Our method is based only on primary sequence information, and it can be used for the research of drug target and drug design in identifying PDZ domain-ligand interactions. This article is part of a Special Issue entitled: Computational Proteomics, Systems Biology & Clinical Implications. Guest Editor: Yudong Cai. (C) 2013 Elsevier B.V. All rights reserved.

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