DocumentCode :
1497738
Title :
Reduced False Positives in PDZ Binding Prediction Using Sequence and Structural Descriptors
Author :
Hawkins, John C. ; Zhu, Hongbo ; Teyra, Joan ; Pisabarro, M. Teresa
Author_Institution :
Struct. Bioinf., Tech. Univ. Dresden, Dresden, Germany
Volume :
9
Issue :
5
fYear :
2012
Firstpage :
1492
Lastpage :
1503
Abstract :
Identifying the binding partners of proteins is a problem of fundamental importance in computational biology. The PDZ is one of the most common and well-studied protein binding domains, hence it is a perfect model system for designing protein binding predictors. The standard approach to identifying the binding partners of PDZ domains uses multiple sequence alignments to infer the set of contact residues that are used in a predictive model. We expand on the sequence alignment approach by incorporating structural information to generate descriptors of the binding site geometry. Furthermore, we generate a real-value score for binary predictions by applying a filter based on models that predict the probability distributions of contact residues at each of the canonical PDZ ligand binding positions. Under training cross validation, our model produced an order of magnitude more predictions at a false positive proportion (FPP) of 10 percent than our benchmark model chosen from the literature. Evaluated using an independent cross validation, with computationally predicted structures, our model was able to make five times as many predictions as the benchmark model, with a Matthews´ correlation coefficient (MCC) of 0.33. In addition, our model achieved a false positive proportion of 0.14, while the benchmark model had a 0.25 false positive proportion.
Keywords :
biological techniques; molecular biophysics; probability; proteins; Matthew correlation coefficient; PDZ binding prediction; benchmark model; binding site geometry; computational biology; multiple sequence alignments; probability distributions; protein binding domains; reduced false positive proportion; sequence descriptors; structural descriptors; structural information; Computational modeling; Data models; Encoding; Peptides; Predictive models; Probability distribution; Proteins; PDZ binding; machine learning; protein binding prediction; protein structure classification.; Binding Sites; Databases, Protein; PDZ Domains; Protein Conformation; Proteins; Sequence Alignment;
fLanguage :
English
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1545-5963
Type :
jour
DOI :
10.1109/TCBB.2012.54
Filename :
6185532
Link To Document :
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