Cargando…

A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations

Several studies have linked disruptions of protein stability and its normal functions to disease. Therefore, during the last few decades, many tools have been developed to predict the free energy changes upon protein residue variations. Most of these methods require both sequence and structure infor...

Descripción completa

Detalles Bibliográficos
Autores principales: Pancotti, Corrado, Benevenuta, Silvia, Repetto, Valeria, Birolo, Giovanni, Capriotti, Emidio, Sanavia, Tiziana, Fariselli, Piero
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8231498/
https://www.ncbi.nlm.nih.gov/pubmed/34204764
http://dx.doi.org/10.3390/genes12060911
_version_ 1783713438001790976
author Pancotti, Corrado
Benevenuta, Silvia
Repetto, Valeria
Birolo, Giovanni
Capriotti, Emidio
Sanavia, Tiziana
Fariselli, Piero
author_facet Pancotti, Corrado
Benevenuta, Silvia
Repetto, Valeria
Birolo, Giovanni
Capriotti, Emidio
Sanavia, Tiziana
Fariselli, Piero
author_sort Pancotti, Corrado
collection PubMed
description Several studies have linked disruptions of protein stability and its normal functions to disease. Therefore, during the last few decades, many tools have been developed to predict the free energy changes upon protein residue variations. Most of these methods require both sequence and structure information to obtain reliable predictions. However, the lower number of protein structures available with respect to their sequences, due to experimental issues, drastically limits the application of these tools. In addition, current methodologies ignore the antisymmetric property characterizing the thermodynamics of the protein stability: a variation from wild-type to a mutated form of the protein structure ([Formula: see text]) and its reverse process ([Formula: see text]) must have opposite values of the free energy difference ([Formula: see text]). Here we propose ACDC-NN-Seq, a deep neural network system that exploits the sequence information and is able to incorporate into its architecture the antisymmetry property. To our knowledge, this is the first convolutional neural network to predict protein stability changes relying solely on the protein sequence. We show that ACDC-NN-Seq compares favorably with the existing sequence-based methods.
format Online
Article
Text
id pubmed-8231498
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-82314982021-06-26 A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations Pancotti, Corrado Benevenuta, Silvia Repetto, Valeria Birolo, Giovanni Capriotti, Emidio Sanavia, Tiziana Fariselli, Piero Genes (Basel) Article Several studies have linked disruptions of protein stability and its normal functions to disease. Therefore, during the last few decades, many tools have been developed to predict the free energy changes upon protein residue variations. Most of these methods require both sequence and structure information to obtain reliable predictions. However, the lower number of protein structures available with respect to their sequences, due to experimental issues, drastically limits the application of these tools. In addition, current methodologies ignore the antisymmetric property characterizing the thermodynamics of the protein stability: a variation from wild-type to a mutated form of the protein structure ([Formula: see text]) and its reverse process ([Formula: see text]) must have opposite values of the free energy difference ([Formula: see text]). Here we propose ACDC-NN-Seq, a deep neural network system that exploits the sequence information and is able to incorporate into its architecture the antisymmetry property. To our knowledge, this is the first convolutional neural network to predict protein stability changes relying solely on the protein sequence. We show that ACDC-NN-Seq compares favorably with the existing sequence-based methods. MDPI 2021-06-12 /pmc/articles/PMC8231498/ /pubmed/34204764 http://dx.doi.org/10.3390/genes12060911 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Pancotti, Corrado
Benevenuta, Silvia
Repetto, Valeria
Birolo, Giovanni
Capriotti, Emidio
Sanavia, Tiziana
Fariselli, Piero
A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title_full A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title_fullStr A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title_full_unstemmed A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title_short A Deep-Learning Sequence-Based Method to Predict Protein Stability Changes Upon Genetic Variations
title_sort deep-learning sequence-based method to predict protein stability changes upon genetic variations
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8231498/
https://www.ncbi.nlm.nih.gov/pubmed/34204764
http://dx.doi.org/10.3390/genes12060911
work_keys_str_mv AT pancotticorrado adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT benevenutasilvia adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT repettovaleria adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT birologiovanni adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT capriottiemidio adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT sanaviatiziana adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT farisellipiero adeeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT pancotticorrado deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT benevenutasilvia deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT repettovaleria deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT birologiovanni deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT capriottiemidio deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT sanaviatiziana deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations
AT farisellipiero deeplearningsequencebasedmethodtopredictproteinstabilitychangesupongeneticvariations