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      BindProfX: Assessing Mutation-Induced Binding Affinity Change by Protein Interface Profiles with Pseudo-Counts

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          Abstract

          Understanding how gene-level mutations affect the binding affinity of protein–protein interactions is a key issue of protein engineering. Due to the complexity of the problem, using physical force field to predict the mutation-induced binding free-energy change remains challenging. In this work, we present a renewed approach to calculate the impact of gene mutations on the binding affinity through the structure-based profiling of protein–protein interfaces, where the binding free-energy change (ΔΔ G) is counted as the logarithm of relative probability of mutant amino acids over wild-type ones in the interface alignment matrix; three pseudo-counts are introduced to alleviate the limit of the current interface library. Compared with a previous profile score that was based on the log-odds likelihood calculation, the correlation between predicted and experimental ΔΔ G of single-site mutations is increased in this approach from 0.33 to 0.68. The structure-based profile score is found complementary to the physical potentials, where a linear combination of the profile score with the FoldX potential could increase the ΔΔ G correlation from 0.46 to 0.74. It is also shown that the profile score is robust for counting the coupling effect of multiple individual mutations. For the mutations involving more than two mutation sites where the correlation between FoldX and experimental data vanishes, the profile-based calculation retains a strong correlation with the experimental measurements.

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          Author and article information

          Journal
          2985088R
          4967
          J Mol Biol
          J. Mol. Biol.
          Journal of molecular biology
          0022-2836
          1089-8638
          17 May 2018
          27 November 2016
          03 February 2017
          22 May 2018
          : 429
          : 3
          : 426-434
          Affiliations
          Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI 48109, USA
          Author notes
          Correspondence to Yang Zhang: zhng@ 123456umich.edu
          Article
          PMC5963940 PMC5963940 5963940 nihpa967866
          10.1016/j.jmb.2016.11.022
          5963940
          27899282
          06a57242-e0f5-41d8-9994-0fa9a38c9658
          History
          Categories
          Article

          profile score,interface structure alignment,multiple-point mutations,non-synonymous single nucleotide polymorphisms,protein–protein binding interaction

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