Literature DB >> 29718106

Quantification of biases in predictions of protein stability changes upon mutations.

Fabrizio Pucci1, Katrien V Bernaerts1,2, Jean Marc Kwasigroch1, Marianne Rooman1.   

Abstract

Motivation: Bioinformatics tools that predict protein stability changes upon point mutations have made a lot of progress in the last decades and have become accurate and fast enough to make computational mutagenesis experiments feasible, even on a proteome scale. Despite these achievements, they still suffer from important issues that must be solved to allow further improving their performances and utilizing them to deepen our insights into protein folding and stability mechanisms. One of these problems is their bias toward the learning datasets which, being dominated by destabilizing mutations, causes predictions to be better for destabilizing than for stabilizing mutations.
Results: We thoroughly analyzed the biases in the prediction of folding free energy changes upon point mutations (ΔΔG0) and proposed some unbiased solutions. We started by constructing a dataset Ssym of experimentally measured ΔΔG0s with an equal number of stabilizing and destabilizing mutations, by collecting mutations for which the structure of both the wild-type and mutant protein is available. On this balanced dataset, we assessed the performances of 15 widely used ΔΔG0 predictors. After the astonishing observation that almost all these methods are strongly biased toward destabilizing mutations, especially those that use black-box machine learning, we proposed an elegant way to solve the bias issue by imposing physical symmetries under inverse mutations on the model structure, which we implemented in PoPMuSiCsym. This new predictor constitutes an efficient trade-off between accuracy and absence of biases. Some final considerations and suggestions for further improvement of the predictors are discussed. Supplementary information: Supplementary data are available at Bioinformatics online. Note: The article 10.1093/bioinformatics/bty340/, published alongside this paper, also addresses the problem of biases in protein stability change predictions.

Mesh:

Substances:

Year:  2018        PMID: 29718106     DOI: 10.1093/bioinformatics/bty348

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  24 in total

1.  Prediction of impacts of mutations on protein structure and interactions: SDM, a statistical approach, and mCSM, using machine learning.

Authors:  Arun Prasad Pandurangan; Tom L Blundell
Journal:  Protein Sci       Date:  2019-11-25       Impact factor: 6.725

2.  Assessment of methods for predicting the effects of PTEN and TPMT protein variants.

Authors:  Vikas Pejaver; Giulia Babbi; Rita Casadio; Lukas Folkman; Panagiotis Katsonis; Kunal Kundu; Olivier Lichtarge; Pier Luigi Martelli; Maximilian Miller; John Moult; Lipika R Pal; Castrense Savojardo; Yizhou Yin; Yaoqi Zhou; Predrag Radivojac; Yana Bromberg
Journal:  Hum Mutat       Date:  2019-07-03       Impact factor: 4.878

3.  Improving the Accuracy of Protein Thermostability Predictions for Single Point Mutations.

Authors:  Jianxin Duan; Dmitry Lupyan; Lingle Wang
Journal:  Biophys J       Date:  2020-05-29       Impact factor: 4.033

4.  Turning Failures into Applications: The Problem of Protein ΔΔG Prediction.

Authors:  Rita Casadio; Castrense Savojardo; Piero Fariselli; Emidio Capriotti; Pier Luigi Martelli
Journal:  Methods Mol Biol       Date:  2022

5.  Predicting protein stability changes upon single-point mutation: a thorough comparison of the available tools on a new dataset.

Authors:  Corrado Pancotti; Silvia Benevenuta; Giovanni Birolo; Virginia Alberini; Valeria Repetto; Tiziana Sanavia; Emidio Capriotti; Piero Fariselli
Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

6.  Site-wise Diversification of Combinatorial Libraries Using Insights from Structure-guided Stability Calculations.

Authors:  Benedikt Dolgikh; Daniel Woldring
Journal:  Methods Mol Biol       Date:  2022

7.  MutaBind2: Predicting the Impacts of Single and Multiple Mutations on Protein-Protein Interactions.

Authors:  Ning Zhang; Yuting Chen; Haoyu Lu; Feiyang Zhao; Roberto Vera Alvarez; Alexander Goncearenco; Anna R Panchenko; Minghui Li
Journal:  iScience       Date:  2020-02-27

8.  Variation benchmark datasets: update, criteria, quality and applications.

Authors:  Anasua Sarkar; Yang Yang; Mauno Vihinen
Journal:  Database (Oxford)       Date:  2020-01-01       Impact factor: 3.451

9.  KEAP1 Cancer Mutants: A Large-Scale Molecular Dynamics Study of Protein Stability.

Authors:  Carter J Wilson; Megan Chang; Mikko Karttunen; Wing-Yiu Choy
Journal:  Int J Mol Sci       Date:  2021-05-20       Impact factor: 5.923

10.  Prediction and Evolution of the Molecular Fitness of SARS-CoV-2 Variants: Introducing SpikePro.

Authors:  Fabrizio Pucci; Marianne Rooman
Journal:  Viruses       Date:  2021-05-18       Impact factor: 5.048

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