Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models
Extracting metabolic pathway that dictates a specific biological response is currently one of the important disciplines in metabolic system biology research. Previous methods have successfully identified those pathways but without concerning the genetic effect and relationship of the genes, the unde...
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my.utm.358072017-02-02T05:55:05Z http://eprints.utm.my/id/eprint/35807/ Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models Mohamed Salleh, Abdul Hakim Mohammad, Mohd. Saberi Q Science (General) Extracting metabolic pathway that dictates a specific biological response is currently one of the important disciplines in metabolic system biology research. Previous methods have successfully identified those pathways but without concerning the genetic effect and relationship of the genes, the underlying structure is not precisely represented and cannot be justified to be significant biologically. In this article, probabilistic models capable of identifying the significant pathways through metabolic networks that are related to a specific biological response are implemented. This article utilized combination of two probabilistic models, using ranking, clustering and classification techniques to address limitations of previous methods with the annotation to Kyoto Encyclopedia of Genes and Genomes (KEGG) to ensure the pathways are biologically plausible. Springer-Verlag. 2012 Book Section PeerReviewed Mohamed Salleh, Abdul Hakim and Mohammad, Mohd. Saberi (2012) Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models. In: Communications in Computer and Information Science. Springer-Verlag., Berlin, pp. 52-61. ISBN 978-364232825-1 http://dx.doi.org/10.1007/978-3-642-32826-8_6 DOI:10.1007/978-3-642-32826-8_6 |
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Q Science (General) Mohamed Salleh, Abdul Hakim Mohammad, Mohd. Saberi Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
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Extracting metabolic pathway that dictates a specific biological response is currently one of the important disciplines in metabolic system biology research. Previous methods have successfully identified those pathways but without concerning the genetic effect and relationship of the genes, the underlying structure is not precisely represented and cannot be justified to be significant biologically. In this article, probabilistic models capable of identifying the significant pathways through metabolic networks that are related to a specific biological response are implemented. This article utilized combination of two probabilistic models, using ranking, clustering and classification techniques to address limitations of previous methods with the annotation to Kyoto Encyclopedia of Genes and Genomes (KEGG) to ensure the pathways are biologically plausible. |
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Book Section |
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Mohamed Salleh, Abdul Hakim Mohammad, Mohd. Saberi |
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Mohamed Salleh, Abdul Hakim Mohammad, Mohd. Saberi |
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Mohamed Salleh, Abdul Hakim |
title |
Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
title_short |
Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
title_full |
Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
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Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
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Identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
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identifying metabolic pathway within microarray gene expression data using combination of probabilistic models |
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Springer-Verlag. |
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2012 |
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http://eprints.utm.my/id/eprint/35807/ http://dx.doi.org/10.1007/978-3-642-32826-8_6 |
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