Cargando…

Prediction of MHC class I binding peptides using probability distribution functions

Binding of peptides to specific Major Histo-compatibility Complex (MHC) molecule is important for understanding immunity and has applications to vaccine discovery and design of immunotherapy. Artificial neural networks (ANN) are widely used by predictions tools to classify the peptides as binders or...

Descripción completa

Detalles Bibliográficos
Autores principales: Soam, Sudhir Singh, Khan, Feroz, Bhasker, Bharat, Mishra, Bhartendu Nath
Formato: Texto
Lenguaje:English
Publicado: Biomedical Informatics Publishing Group 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2732036/
https://www.ncbi.nlm.nih.gov/pubmed/19759816
_version_ 1782171000168775680
author Soam, Sudhir Singh
Khan, Feroz
Bhasker, Bharat
Mishra, Bhartendu Nath
author_facet Soam, Sudhir Singh
Khan, Feroz
Bhasker, Bharat
Mishra, Bhartendu Nath
author_sort Soam, Sudhir Singh
collection PubMed
description Binding of peptides to specific Major Histo-compatibility Complex (MHC) molecule is important for understanding immunity and has applications to vaccine discovery and design of immunotherapy. Artificial neural networks (ANN) are widely used by predictions tools to classify the peptides as binders or non­binders (BNB). However, the number of known binders to a specific MHC molecule is limited in many cases, which poses a computational challenge for prediction of BNB and hence, needs improvement in learning of ANN. Here, we describe, the application of probability distribution functions to initialize the weights and biases of the artificial neural network in order to predict HLA­A*0201 binders and non­binders. The 10­fold cross validation has been used to validate the results. It is evident from the results that the A(ROC) for 90% of test cases for Weibull, Uniform and Rayleigh distributions is in the range 0.90-1.0. Further, the standard deviation for AROC was minimum for Weibull distribution, and may be used to train the artificial neural network for HLA­A*0201 MHC Class­I binders and non­binders prediction.
format Text
id pubmed-2732036
institution National Center for Biotechnology Information
language English
publishDate 2009
publisher Biomedical Informatics Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-27320362009-09-16 Prediction of MHC class I binding peptides using probability distribution functions Soam, Sudhir Singh Khan, Feroz Bhasker, Bharat Mishra, Bhartendu Nath Bioinformation Prediction of MHC class I binding peptides using probability distribution functions Binding of peptides to specific Major Histo-compatibility Complex (MHC) molecule is important for understanding immunity and has applications to vaccine discovery and design of immunotherapy. Artificial neural networks (ANN) are widely used by predictions tools to classify the peptides as binders or non­binders (BNB). However, the number of known binders to a specific MHC molecule is limited in many cases, which poses a computational challenge for prediction of BNB and hence, needs improvement in learning of ANN. Here, we describe, the application of probability distribution functions to initialize the weights and biases of the artificial neural network in order to predict HLA­A*0201 binders and non­binders. The 10­fold cross validation has been used to validate the results. It is evident from the results that the A(ROC) for 90% of test cases for Weibull, Uniform and Rayleigh distributions is in the range 0.90-1.0. Further, the standard deviation for AROC was minimum for Weibull distribution, and may be used to train the artificial neural network for HLA­A*0201 MHC Class­I binders and non­binders prediction. Biomedical Informatics Publishing Group 2009-06-28 /pmc/articles/PMC2732036/ /pubmed/19759816 Text en © 2009 Biomedical Informatics Publishing Group 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 of MHC class I binding peptides using probability distribution functions
Soam, Sudhir Singh
Khan, Feroz
Bhasker, Bharat
Mishra, Bhartendu Nath
Prediction of MHC class I binding peptides using probability distribution functions
title Prediction of MHC class I binding peptides using probability distribution functions
title_full Prediction of MHC class I binding peptides using probability distribution functions
title_fullStr Prediction of MHC class I binding peptides using probability distribution functions
title_full_unstemmed Prediction of MHC class I binding peptides using probability distribution functions
title_short Prediction of MHC class I binding peptides using probability distribution functions
title_sort prediction of mhc class i binding peptides using probability distribution functions
topic Prediction of MHC class I binding peptides using probability distribution functions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2732036/
https://www.ncbi.nlm.nih.gov/pubmed/19759816
work_keys_str_mv AT soamsudhirsingh predictionofmhcclassibindingpeptidesusingprobabilitydistributionfunctions
AT khanferoz predictionofmhcclassibindingpeptidesusingprobabilitydistributionfunctions
AT bhaskerbharat predictionofmhcclassibindingpeptidesusingprobabilitydistributionfunctions
AT mishrabhartendunath predictionofmhcclassibindingpeptidesusingprobabilitydistributionfunctions