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An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions

Genetic interactions occur when a combination of mutations results in a surprising phenotype. These interactions capture functional redundancy, and thus are important for predicting function, dissecting protein complexes into functional pathways, and exploring the mechanistic underpinnings of common...

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Autores principales: Pandey, Gaurav, Zhang, Bin, Chang, Aaron N., Myers, Chad L., Zhu, Jun, Kumar, Vipin, Schadt, Eric E.
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2936518/
https://www.ncbi.nlm.nih.gov/pubmed/20838583
http://dx.doi.org/10.1371/journal.pcbi.1000928
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author Pandey, Gaurav
Zhang, Bin
Chang, Aaron N.
Myers, Chad L.
Zhu, Jun
Kumar, Vipin
Schadt, Eric E.
author_facet Pandey, Gaurav
Zhang, Bin
Chang, Aaron N.
Myers, Chad L.
Zhu, Jun
Kumar, Vipin
Schadt, Eric E.
author_sort Pandey, Gaurav
collection PubMed
description Genetic interactions occur when a combination of mutations results in a surprising phenotype. These interactions capture functional redundancy, and thus are important for predicting function, dissecting protein complexes into functional pathways, and exploring the mechanistic underpinnings of common human diseases. Synthetic sickness and lethality are the most studied types of genetic interactions in yeast. However, even in yeast, only a small proportion of gene pairs have been tested for genetic interactions due to the large number of possible combinations of gene pairs. To expand the set of known synthetic lethal (SL) interactions, we have devised an integrative, multi-network approach for predicting these interactions that significantly improves upon the existing approaches. First, we defined a large number of features for characterizing the relationships between pairs of genes from various data sources. In particular, these features are independent of the known SL interactions, in contrast to some previous approaches. Using these features, we developed a non-parametric multi-classifier system for predicting SL interactions that enabled the simultaneous use of multiple classification procedures. Several comprehensive experiments demonstrated that the SL-independent features in conjunction with the advanced classification scheme led to an improved performance when compared to the current state of the art method. Using this approach, we derived the first yeast transcription factor genetic interaction network, part of which was well supported by literature. We also used this approach to predict SL interactions between all non-essential gene pairs in yeast (http://sage.fhcrc.org/downloads/downloads/predicted_yeast_genetic_interactions.zip). This integrative approach is expected to be more effective and robust in uncovering new genetic interactions from the tens of millions of unknown gene pairs in yeast and from the hundreds of millions of gene pairs in higher organisms like mouse and human, in which very few genetic interactions have been identified to date.
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spelling pubmed-29365182010-09-13 An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions Pandey, Gaurav Zhang, Bin Chang, Aaron N. Myers, Chad L. Zhu, Jun Kumar, Vipin Schadt, Eric E. PLoS Comput Biol Research Article Genetic interactions occur when a combination of mutations results in a surprising phenotype. These interactions capture functional redundancy, and thus are important for predicting function, dissecting protein complexes into functional pathways, and exploring the mechanistic underpinnings of common human diseases. Synthetic sickness and lethality are the most studied types of genetic interactions in yeast. However, even in yeast, only a small proportion of gene pairs have been tested for genetic interactions due to the large number of possible combinations of gene pairs. To expand the set of known synthetic lethal (SL) interactions, we have devised an integrative, multi-network approach for predicting these interactions that significantly improves upon the existing approaches. First, we defined a large number of features for characterizing the relationships between pairs of genes from various data sources. In particular, these features are independent of the known SL interactions, in contrast to some previous approaches. Using these features, we developed a non-parametric multi-classifier system for predicting SL interactions that enabled the simultaneous use of multiple classification procedures. Several comprehensive experiments demonstrated that the SL-independent features in conjunction with the advanced classification scheme led to an improved performance when compared to the current state of the art method. Using this approach, we derived the first yeast transcription factor genetic interaction network, part of which was well supported by literature. We also used this approach to predict SL interactions between all non-essential gene pairs in yeast (http://sage.fhcrc.org/downloads/downloads/predicted_yeast_genetic_interactions.zip). This integrative approach is expected to be more effective and robust in uncovering new genetic interactions from the tens of millions of unknown gene pairs in yeast and from the hundreds of millions of gene pairs in higher organisms like mouse and human, in which very few genetic interactions have been identified to date. Public Library of Science 2010-09-09 /pmc/articles/PMC2936518/ /pubmed/20838583 http://dx.doi.org/10.1371/journal.pcbi.1000928 Text en Pandey et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Pandey, Gaurav
Zhang, Bin
Chang, Aaron N.
Myers, Chad L.
Zhu, Jun
Kumar, Vipin
Schadt, Eric E.
An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title_full An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title_fullStr An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title_full_unstemmed An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title_short An Integrative Multi-Network and Multi-Classifier Approach to Predict Genetic Interactions
title_sort integrative multi-network and multi-classifier approach to predict genetic interactions
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2936518/
https://www.ncbi.nlm.nih.gov/pubmed/20838583
http://dx.doi.org/10.1371/journal.pcbi.1000928
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