Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.

The chemical-genetic profile can be defined as quantitative values of deletion strains' growth defects under exposure to chemicals. In yeast, the compendium of chemical-genetic profiles of genomewide deletion strains under many different chemicals has been used for identifying direct target pro...

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Main Authors: Sangjo Han, Dongsup Kim
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2008-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2515108?pdf=render
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spelling doaj-a7918bb1624e4cb292aa25828fac66052020-11-25T01:32:38ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582008-01-0148e100016210.1371/journal.pcbi.1000162Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.Sangjo HanDongsup KimThe chemical-genetic profile can be defined as quantitative values of deletion strains' growth defects under exposure to chemicals. In yeast, the compendium of chemical-genetic profiles of genomewide deletion strains under many different chemicals has been used for identifying direct target proteins and a common mode-of-action of those chemicals. In the previous study, valuable biological information such as protein-protein and genetic interactions has not been fully utilized. In our study, we integrated this compendium and biological interactions into the comprehensive collection of approximately 490 protein complexes of yeast for model-based prediction of a drug's target proteins and similar drugs. We assumed that those protein complexes (PCs) were functional units for yeast cell growth and regarded them as hidden factors and developed the PC-based Bayesian factor model that relates the chemical-genetic profile at the level of organism phenotypes to the hidden activities of PCs at the molecular level. The inferred PC activities provided the predictive power of a common mode-of-action of drugs as well as grouping of PCs with similar functions. In addition, our PC-based model allowed us to develop a new effective method to predict a drug's target pathway, by which we were able to highlight the target-protein, TOR1, of rapamycin. Our study is the first approach to model phenotypes of systematic deletion strains in terms of protein complexes. We believe that our PC-based approach can provide an appropriate framework for combining and modeling several types of chemical-genetic profiles including interspecies. Such efforts will contribute to predicting more precisely relevant pathways including target proteins that interact directly with bioactive compounds.http://europepmc.org/articles/PMC2515108?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Sangjo Han
Dongsup Kim
spellingShingle Sangjo Han
Dongsup Kim
Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
PLoS Computational Biology
author_facet Sangjo Han
Dongsup Kim
author_sort Sangjo Han
title Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
title_short Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
title_full Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
title_fullStr Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
title_full_unstemmed Inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
title_sort inference of protein complex activities from chemical-genetic profile and its applications: predicting drug-target pathways.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2008-01-01
description The chemical-genetic profile can be defined as quantitative values of deletion strains' growth defects under exposure to chemicals. In yeast, the compendium of chemical-genetic profiles of genomewide deletion strains under many different chemicals has been used for identifying direct target proteins and a common mode-of-action of those chemicals. In the previous study, valuable biological information such as protein-protein and genetic interactions has not been fully utilized. In our study, we integrated this compendium and biological interactions into the comprehensive collection of approximately 490 protein complexes of yeast for model-based prediction of a drug's target proteins and similar drugs. We assumed that those protein complexes (PCs) were functional units for yeast cell growth and regarded them as hidden factors and developed the PC-based Bayesian factor model that relates the chemical-genetic profile at the level of organism phenotypes to the hidden activities of PCs at the molecular level. The inferred PC activities provided the predictive power of a common mode-of-action of drugs as well as grouping of PCs with similar functions. In addition, our PC-based model allowed us to develop a new effective method to predict a drug's target pathway, by which we were able to highlight the target-protein, TOR1, of rapamycin. Our study is the first approach to model phenotypes of systematic deletion strains in terms of protein complexes. We believe that our PC-based approach can provide an appropriate framework for combining and modeling several types of chemical-genetic profiles including interspecies. Such efforts will contribute to predicting more precisely relevant pathways including target proteins that interact directly with bioactive compounds.
url http://europepmc.org/articles/PMC2515108?pdf=render
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AT dongsupkim inferenceofproteincomplexactivitiesfromchemicalgeneticprofileanditsapplicationspredictingdrugtargetpathways
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