Literature DB >> 26988870

Predicting protein thermal stability changes upon point mutations using statistical potentials: Introducing HoTMuSiC.

Fabrizio Pucci1,2, Raphaël Bourgeas1,2, Marianne Rooman1,2.   

Abstract

The accurate prediction of the impact of an amino acid substitution on the thermal stability of a protein is a central issue in protein science, and is of key relevance for the rational optimization of various bioprocesses that use enzymes in unusual conditions. Here we present one of the first computational tools to predict the change in melting temperature ΔTm upon point mutations, given the protein structure and, when available, the melting temperature Tm of the wild-type protein. The key ingredients of our model structure are standard and temperature-dependent statistical potentials, which are combined with the help of an artificial neural network. The model structure was chosen on the basis of a detailed thermodynamic analysis of the system. The parameters of the model were identified on a set of more than 1,600 mutations with experimentally measured ΔTm. The performance of our method was tested using a strict 5-fold cross-validation procedure, and was found to be significantly superior to that of competing methods. We obtained a root mean square deviation between predicted and experimental ΔTm values of 4.2 °C that reduces to 2.9 °C when ten percent outliers are removed. A webserver-based tool is freely available for non-commercial use at soft.dezyme.com.

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Year:  2016        PMID: 26988870      PMCID: PMC4796876          DOI: 10.1038/srep23257

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  51 in total

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8.  Statistical potentials extracted from protein structures: how accurate are they?

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Journal:  Nucleic Acids Res       Date:  2006-01-01       Impact factor: 16.971

10.  CUPSAT: prediction of protein stability upon point mutations.

Authors:  Vijaya Parthiban; M Michael Gromiha; Dietmar Schomburg
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7.  FireProt: web server for automated design of thermostable proteins.

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8.  Insights on protein thermal stability: a graph representation of molecular interactions.

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9.  Modular endolysin of Burkholderia AP3 phage has the largest lysozyme-like catalytic subunit discovered to date and no catalytic aspartate residue.

Authors:  Barbara Maciejewska; Karol Źrubek; Akbar Espaillat; Magdalena Wiśniewska; Krzysztof P Rembacz; Felipe Cava; Grzegorz Dubin; Zuzanna Drulis-Kawa
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10.  Prediction and interpretation of deleterious coding variants in terms of protein structural stability.

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