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Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations

Computational prediction of the impact of a mutation on protein function is still not accurate enough for clinical diagnostics without additional human expert analysis. Sequence alignment-based methods have been extensively used but their results highly depend on the quality of the input alignments...

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Detalles Bibliográficos
Autores principales: Lee, Tai-Sung, Potts, Steven J., McGinniss, Matthew J., Strom, Charles M.
Formato: Texto
Lenguaje:English
Publicado: Libertas Academica 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2674666/
https://www.ncbi.nlm.nih.gov/pubmed/19455225
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author Lee, Tai-Sung
Potts, Steven J.
McGinniss, Matthew J.
Strom, Charles M.
author_facet Lee, Tai-Sung
Potts, Steven J.
McGinniss, Matthew J.
Strom, Charles M.
author_sort Lee, Tai-Sung
collection PubMed
description Computational prediction of the impact of a mutation on protein function is still not accurate enough for clinical diagnostics without additional human expert analysis. Sequence alignment-based methods have been extensively used but their results highly depend on the quality of the input alignments and the choice of sequences. Incorporating the structural information with alignments improves prediction accuracy. Here, we present a conservation of amino acid properties method for mutation prediction, Multiple Properties Tolerance Analysis (MuTA), and a new strategy, MuTA/S, to incorporate the solvent accessible surface (SAS) property into MuTA. Instead of combining multiple features by machine learning or mathematical methods, an intuitive strategy is used to divide the residues of a protein into different groups, and in each group the properties used is adjusted. The results for LacI, lysozyme, and HIV protease show that MuTA performs as well as the widely used SIFT algorithm while MuTA/S outperforms SIFT and MuTA by 2%–25% in terms of prediction accuracy. By incorporating the SAS term alone, the alignment dependency of overall prediction accuracy is significantly reduced. MuTA/S also defines a new way to incorporate any structural features and knowledge and may lead to more accurate predictions.
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spelling pubmed-26746662009-05-19 Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations Lee, Tai-Sung Potts, Steven J. McGinniss, Matthew J. Strom, Charles M. Evol Bioinform Online Original Research Computational prediction of the impact of a mutation on protein function is still not accurate enough for clinical diagnostics without additional human expert analysis. Sequence alignment-based methods have been extensively used but their results highly depend on the quality of the input alignments and the choice of sequences. Incorporating the structural information with alignments improves prediction accuracy. Here, we present a conservation of amino acid properties method for mutation prediction, Multiple Properties Tolerance Analysis (MuTA), and a new strategy, MuTA/S, to incorporate the solvent accessible surface (SAS) property into MuTA. Instead of combining multiple features by machine learning or mathematical methods, an intuitive strategy is used to divide the residues of a protein into different groups, and in each group the properties used is adjusted. The results for LacI, lysozyme, and HIV protease show that MuTA performs as well as the widely used SIFT algorithm while MuTA/S outperforms SIFT and MuTA by 2%–25% in terms of prediction accuracy. By incorporating the SAS term alone, the alignment dependency of overall prediction accuracy is significantly reduced. MuTA/S also defines a new way to incorporate any structural features and knowledge and may lead to more accurate predictions. Libertas Academica 2007-02-24 /pmc/articles/PMC2674666/ /pubmed/19455225 Text en Copyright © 2006 The authors. http://creativecommons.org/licenses/by/3.0 This article is published under the Creative Commons Attribution By licence. For further information go to: http://creativecommons.org/licenses/by/3.0. (http://creativecommons.org/licenses/by/3.0)
spellingShingle Original Research
Lee, Tai-Sung
Potts, Steven J.
McGinniss, Matthew J.
Strom, Charles M.
Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title_full Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title_fullStr Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title_full_unstemmed Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title_short Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
title_sort multiple property tolerance analysis for the evaluation of missense mutations
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2674666/
https://www.ncbi.nlm.nih.gov/pubmed/19455225
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