The structure-based cancer-related single amino acid variation prediction

Abstract Single amino acid variation (SAV) is an amino acid substitution of the protein sequence that can potentially influence the entire protein structure or function, as well as its binding affinity. Protein destabilization is related to diseases, including several cancers, although using traditi...

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Main Authors: Jia-Jun Liu, Chin-Sheng Yu, Hsiao-Wei Wu, Yu-Jen Chang, Chih-Peng Lin, Chih-Hao Lu
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-92793-w
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spelling doaj-df5fbbfb0aea4292884ab89b7c901d152021-07-04T11:30:45ZengNature Publishing GroupScientific Reports2045-23222021-06-0111111710.1038/s41598-021-92793-wThe structure-based cancer-related single amino acid variation predictionJia-Jun Liu0Chin-Sheng Yu1Hsiao-Wei Wu2Yu-Jen Chang3Chih-Peng Lin4Chih-Hao Lu5The Ph.D. Program of Biotechnology and Biomedical Industry, China Medical UniversityDepartment of Information Engineering and Computer Science, Feng Chia UniversityGraduate Institute of Biomedical Sciences, China Medical UniversityThe Ph.D. Program of Biotechnology and Biomedical Industry, China Medical UniversityYourgene HealthThe Ph.D. Program of Biotechnology and Biomedical Industry, China Medical UniversityAbstract Single amino acid variation (SAV) is an amino acid substitution of the protein sequence that can potentially influence the entire protein structure or function, as well as its binding affinity. Protein destabilization is related to diseases, including several cancers, although using traditional experiments to clarify the relationship between SAVs and cancer uses much time and resources. Some SAV prediction methods use computational approaches, with most predicting SAV-induced changes in protein stability. In this investigation, all SAV characteristics generated from protein sequences, structures and the microenvironment were converted into feature vectors and fed into an integrated predicting system using a support vector machine and genetic algorithm. Critical features were used to estimate the relationship between their properties and cancers caused by SAVs. We describe how we developed a prediction system based on protein sequences and structure that is capable of distinguishing if the SAV is related to cancer or not. The five-fold cross-validation performance of our system is 89.73% for the accuracy, 0.74 for the Matthews correlation coefficient, and 0.81 for the F1 score. We have built an online prediction server, CanSavPre ( http://bioinfo.cmu.edu.tw/CanSavPre/ ), which is expected to become a useful, practical tool for cancer research and precision medicine.https://doi.org/10.1038/s41598-021-92793-w
collection DOAJ
language English
format Article
sources DOAJ
author Jia-Jun Liu
Chin-Sheng Yu
Hsiao-Wei Wu
Yu-Jen Chang
Chih-Peng Lin
Chih-Hao Lu
spellingShingle Jia-Jun Liu
Chin-Sheng Yu
Hsiao-Wei Wu
Yu-Jen Chang
Chih-Peng Lin
Chih-Hao Lu
The structure-based cancer-related single amino acid variation prediction
Scientific Reports
author_facet Jia-Jun Liu
Chin-Sheng Yu
Hsiao-Wei Wu
Yu-Jen Chang
Chih-Peng Lin
Chih-Hao Lu
author_sort Jia-Jun Liu
title The structure-based cancer-related single amino acid variation prediction
title_short The structure-based cancer-related single amino acid variation prediction
title_full The structure-based cancer-related single amino acid variation prediction
title_fullStr The structure-based cancer-related single amino acid variation prediction
title_full_unstemmed The structure-based cancer-related single amino acid variation prediction
title_sort structure-based cancer-related single amino acid variation prediction
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-06-01
description Abstract Single amino acid variation (SAV) is an amino acid substitution of the protein sequence that can potentially influence the entire protein structure or function, as well as its binding affinity. Protein destabilization is related to diseases, including several cancers, although using traditional experiments to clarify the relationship between SAVs and cancer uses much time and resources. Some SAV prediction methods use computational approaches, with most predicting SAV-induced changes in protein stability. In this investigation, all SAV characteristics generated from protein sequences, structures and the microenvironment were converted into feature vectors and fed into an integrated predicting system using a support vector machine and genetic algorithm. Critical features were used to estimate the relationship between their properties and cancers caused by SAVs. We describe how we developed a prediction system based on protein sequences and structure that is capable of distinguishing if the SAV is related to cancer or not. The five-fold cross-validation performance of our system is 89.73% for the accuracy, 0.74 for the Matthews correlation coefficient, and 0.81 for the F1 score. We have built an online prediction server, CanSavPre ( http://bioinfo.cmu.edu.tw/CanSavPre/ ), which is expected to become a useful, practical tool for cancer research and precision medicine.
url https://doi.org/10.1038/s41598-021-92793-w
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