4.3 Article

An automated decision-tree approach to predicting protein interaction hot spots

Journal

PROTEINS-STRUCTURE FUNCTION AND BIOINFORMATICS
Volume 68, Issue 4, Pages 813-823

Publisher

WILEY
DOI: 10.1002/prot.21474

Keywords

atomic density; complemented pocket; computational alanine scanning; decision tree; FADE; protein-protein interface; shape complementarity; shape specificity; sitedirected mutagenesis

Funding

  1. NLM NIH HHS [5T15LM007359] Funding Source: Medline

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Protein-protein interactions can be altered by mutating one or more hot spots, the subset of residues that ' account for most of the interface binding free energy. The identification of hot spots requires a significant experimental effort, highlighting the practical value of hot spot predictions. We present two knowledge-based models that improve the ability to predict hot spots: K-FADE uses shape specificity features calculated by the Fast Atomic Density Evaluation (FADE) program, and K-CON uses biochemical contact features. The combined, K-FADE/CON (KFC) model displays bet- ter overall predictive accuracy than computational alanine scanning (Robetta-Ala). In addition, because these methods predict different subsets of known hot spots, a large and significant increase in accuracy is achieved by combining KFC and Robetta-Ala. The KFC analysis is applied to the calmodulin (CaM)/smooth muscle myosin light chain kinase (smMLCK) interface, and to the bone morphogenetic protein-2 (BMP-2)/BMP receptor-type I (BMPR-LA) interface. The results indicate a strong correlation between KFC hot spot predictions and mutations that significantly reduce the binding affinity of the interface.

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