2018
DOI: 10.1101/308239
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Quantification of biases in predictions of protein stability changes upon mutations

Abstract: 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 towa… Show more

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Cited by 33 publications
(67 citation statements)
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“…We assessed the ability of computational methods to predict the effects of individual nonsynonymous variants on the VSP assayderived stability of two proteins. Our assessment differs from previous assessments (Khan & Vihinen, 2010;Potapov et al, 2009;Pucci et al, 2018;Thiltgen & Goldstein, 2012) in two ways. First, the use of high-throughput VSP assay data as the gold standard enabled evaluations free from ascertainment bias; that is, mutations were not explicitly targeted to protein positions of interest.…”
Section: Discussionmentioning
confidence: 83%
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“…We assessed the ability of computational methods to predict the effects of individual nonsynonymous variants on the VSP assayderived stability of two proteins. Our assessment differs from previous assessments (Khan & Vihinen, 2010;Potapov et al, 2009;Pucci et al, 2018;Thiltgen & Goldstein, 2012) in two ways. First, the use of high-throughput VSP assay data as the gold standard enabled evaluations free from ascertainment bias; that is, mutations were not explicitly targeted to protein positions of interest.…”
Section: Discussionmentioning
confidence: 83%
“…A key advantage of VSP assays is that they are applicable to a wide range of proteins and can measure effects of all possible mutations at all positions. They particularly help overcome issues of overrepresentation of to-alanine (Magliery, 2015) and destabilizing mutations (Pucci, Bernaerts, Kwasigroch, & Rooman, 2018), the underrepresentation of "inverse" mutations (Thiltgen & Goldstein, 2012), and general errors in curation (Yang et al, 2018). Thus, VSP assays are an attractive alternative to existing data sources for the development and validation of computational methods.…”
Section: Introductionmentioning
confidence: 99%
“…In contrast, FoldX predicted that 83.2% of pathogenic variants are destabilizing. As already demonstrated in previous studies, the bias is likely because FoldX was parameterized on an experimental ∆∆G data set dominated by destabilizing mutations (Pucci et al, 2018;Thiltgen and Goldstein, 2012;Usmanova et al, 2018).…”
Section: ∆∆G Landscape Of Clinvar Missense Variantsmentioning
confidence: 89%
“…We systematically compared ThermoNet with fifteen ∆∆G predictors on a common, balanced data set S sym to evaluate their performance and degree of bias with respect to the ∆∆G symmetry between direct and reverse mutations (Methods). The S sym data set, which was constructed previously for assessing the biases of ∆∆G predictors (Pucci et al, 2018), consists of experimentally measured ∆∆G values for 342 direct mutations from fifteen protein chains for which the structures of both the wild-type and mutant proteins have been resolved by X-ray crystallography with a resolution of 2.5 Å or better. To increase the size of this data set and evaluate prediction bias of ThermoNet, we generated a reverse mutation for each of the direct mutations, thus totaling 684 mutations.…”
Section: Thermonet Achieves State-of-the-art Performance On Blind Tesmentioning
confidence: 99%
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