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SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems

Protein secretion systems used by almost all bacteria are highly significant for the normal existence and interaction of bacteria with their host. The accumulation of genome sequence data in past few years has provided great insights into the distribution and function of these secretion systems. In...

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Autores principales: Pundhir, Sachin, Kumar, Anil
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Biomedical Informatics 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3163916/
https://www.ncbi.nlm.nih.gov/pubmed/21904425
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author Pundhir, Sachin
Kumar, Anil
author_facet Pundhir, Sachin
Kumar, Anil
author_sort Pundhir, Sachin
collection PubMed
description Protein secretion systems used by almost all bacteria are highly significant for the normal existence and interaction of bacteria with their host. The accumulation of genome sequence data in past few years has provided great insights into the distribution and function of these secretion systems. In this study, a support vector machine (SVM)- based method, SSPred was developed for the automated functional annotation of proteins involved in secretion systems further classifying them into five major sub-types (Type-I, Type-II, Type-III, Type-IV and Sec systems). The dataset used in this study for training and testing was obtained from KEGG and SwissProt database and was curated in order to avoid redundancy. To overcome the problem of imbalance in positive and negative dataset, an ensemble of SVM modules, each trained on a balanced subset of the training data were used. Firstly, protein sequence features like amino-acid composition (AAC), dipeptide composition (DPC) and physico-chemical composition (PCC) were used to develop the SVM-based modules that achieved an average accuracy of 84%, 85.17% and 82.59%, respectively. Secondly, a hybrid module (hybrid-I) integrating all the previously used features was developed that achieved an average accuracy of 86.12%. Another hybrid module (hybrid-II) developed using evolutionary information of a protein sequence extracted from position-specific scoring matrix and amino-acid composition achieved a maximum average accuracy of 89.73%. On unbiased evaluation using an independent data set, SSPred showed good prediction performance in identification and classification of secretion systems. SSPred is a freely available World Wide Web server at http//www.bioinformatics.org/sspred.
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spelling pubmed-31639162011-09-08 SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems Pundhir, Sachin Kumar, Anil Bioinformation Prediction Model Protein secretion systems used by almost all bacteria are highly significant for the normal existence and interaction of bacteria with their host. The accumulation of genome sequence data in past few years has provided great insights into the distribution and function of these secretion systems. In this study, a support vector machine (SVM)- based method, SSPred was developed for the automated functional annotation of proteins involved in secretion systems further classifying them into five major sub-types (Type-I, Type-II, Type-III, Type-IV and Sec systems). The dataset used in this study for training and testing was obtained from KEGG and SwissProt database and was curated in order to avoid redundancy. To overcome the problem of imbalance in positive and negative dataset, an ensemble of SVM modules, each trained on a balanced subset of the training data were used. Firstly, protein sequence features like amino-acid composition (AAC), dipeptide composition (DPC) and physico-chemical composition (PCC) were used to develop the SVM-based modules that achieved an average accuracy of 84%, 85.17% and 82.59%, respectively. Secondly, a hybrid module (hybrid-I) integrating all the previously used features was developed that achieved an average accuracy of 86.12%. Another hybrid module (hybrid-II) developed using evolutionary information of a protein sequence extracted from position-specific scoring matrix and amino-acid composition achieved a maximum average accuracy of 89.73%. On unbiased evaluation using an independent data set, SSPred showed good prediction performance in identification and classification of secretion systems. SSPred is a freely available World Wide Web server at http//www.bioinformatics.org/sspred. Biomedical Informatics 2011-08-02 /pmc/articles/PMC3163916/ /pubmed/21904425 Text en © 2011 Biomedical Informatics This is an open-access article, which permits unrestricted use, distribution, and reproduction in any medium, for non-commercial purposes, provided the original author and source are credited.
spellingShingle Prediction Model
Pundhir, Sachin
Kumar, Anil
SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title_full SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title_fullStr SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title_full_unstemmed SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title_short SSPred: A prediction server based on SVM for the identification and classification of proteins involved in bacterial secretion systems
title_sort sspred: a prediction server based on svm for the identification and classification of proteins involved in bacterial secretion systems
topic Prediction Model
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3163916/
https://www.ncbi.nlm.nih.gov/pubmed/21904425
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