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Hidden markov model for the prediction of transmembrane proteins using MATLAB

Since membranous proteins play a key role in drug targeting therefore transmembrane proteins prediction is active and challenging area of biological sciences. Location based prediction of transmembrane proteins are significant for functional annotation of protein sequences. Hidden markov model based...

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Autores principales: Chaturvedi, Navaneet, Shanker, Sudhanshu, Singh, Vinay Kumar, Sinha, Dhiraj, Pandey, Paras Nath
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Biomedical Informatics 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3280443/
https://www.ncbi.nlm.nih.gov/pubmed/22347785
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author Chaturvedi, Navaneet
Shanker, Sudhanshu
Singh, Vinay Kumar
Sinha, Dhiraj
Pandey, Paras Nath
author_facet Chaturvedi, Navaneet
Shanker, Sudhanshu
Singh, Vinay Kumar
Sinha, Dhiraj
Pandey, Paras Nath
author_sort Chaturvedi, Navaneet
collection PubMed
description Since membranous proteins play a key role in drug targeting therefore transmembrane proteins prediction is active and challenging area of biological sciences. Location based prediction of transmembrane proteins are significant for functional annotation of protein sequences. Hidden markov model based method was widely applied for transmembrane topology prediction. Here we have presented a revised and a better understanding model than an existing one for transmembrane protein prediction. Scripting on MATLAB was built and compiled for parameter estimation of model and applied this model on amino acid sequence to know the transmembrane and its adjacent locations. Estimated model of transmembrane topology was based on TMHMM model architecture. Only 7 super states are defined in the given dataset, which were converted to 96 states on the basis of their length in sequence. Accuracy of the prediction of model was observed about 74 %, is a good enough in the area of transmembrane topology prediction. Therefore we have concluded the hidden markov model plays crucial role in transmembrane helices prediction on MATLAB platform and it could also be useful for drug discovery strategy. AVAILABILITY: The database is available for free at bioinfonavneet@gmail.comvinaysingh@bhu.ac.in
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spelling pubmed-32804432012-02-17 Hidden markov model for the prediction of transmembrane proteins using MATLAB Chaturvedi, Navaneet Shanker, Sudhanshu Singh, Vinay Kumar Sinha, Dhiraj Pandey, Paras Nath Bioinformation Prediction Model Since membranous proteins play a key role in drug targeting therefore transmembrane proteins prediction is active and challenging area of biological sciences. Location based prediction of transmembrane proteins are significant for functional annotation of protein sequences. Hidden markov model based method was widely applied for transmembrane topology prediction. Here we have presented a revised and a better understanding model than an existing one for transmembrane protein prediction. Scripting on MATLAB was built and compiled for parameter estimation of model and applied this model on amino acid sequence to know the transmembrane and its adjacent locations. Estimated model of transmembrane topology was based on TMHMM model architecture. Only 7 super states are defined in the given dataset, which were converted to 96 states on the basis of their length in sequence. Accuracy of the prediction of model was observed about 74 %, is a good enough in the area of transmembrane topology prediction. Therefore we have concluded the hidden markov model plays crucial role in transmembrane helices prediction on MATLAB platform and it could also be useful for drug discovery strategy. AVAILABILITY: The database is available for free at bioinfonavneet@gmail.comvinaysingh@bhu.ac.in Biomedical Informatics 2011-12-21 /pmc/articles/PMC3280443/ /pubmed/22347785 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
Chaturvedi, Navaneet
Shanker, Sudhanshu
Singh, Vinay Kumar
Sinha, Dhiraj
Pandey, Paras Nath
Hidden markov model for the prediction of transmembrane proteins using MATLAB
title Hidden markov model for the prediction of transmembrane proteins using MATLAB
title_full Hidden markov model for the prediction of transmembrane proteins using MATLAB
title_fullStr Hidden markov model for the prediction of transmembrane proteins using MATLAB
title_full_unstemmed Hidden markov model for the prediction of transmembrane proteins using MATLAB
title_short Hidden markov model for the prediction of transmembrane proteins using MATLAB
title_sort hidden markov model for the prediction of transmembrane proteins using matlab
topic Prediction Model
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3280443/
https://www.ncbi.nlm.nih.gov/pubmed/22347785
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