Use of pleiotropy to model genetic interactions in a population.

Systems-level genetic studies in humans and model systems increasingly involve both high-resolution genotyping and multi-dimensional quantitative phenotyping. We present a novel method to infer and interpret genetic interactions that exploits the complementary information in multiple phenotypes. We...

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Main Authors: Gregory W Carter, Michelle Hays, Amir Sherman, Timothy Galitski
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC3469415?pdf=render
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spelling doaj-258e263addf34975bfa69bbe8fa93d8a2020-11-24T21:19:13ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042012-01-01810e100301010.1371/journal.pgen.1003010Use of pleiotropy to model genetic interactions in a population.Gregory W CarterMichelle HaysAmir ShermanTimothy GalitskiSystems-level genetic studies in humans and model systems increasingly involve both high-resolution genotyping and multi-dimensional quantitative phenotyping. We present a novel method to infer and interpret genetic interactions that exploits the complementary information in multiple phenotypes. We applied this approach to a population of yeast strains with randomly assorted perturbations of five genes involved in mating. We quantified pheromone response at the molecular level and overall mating efficiency. These phenotypes were jointly analyzed to derive a network of genetic interactions that mapped mating-pathway relationships. To determine the distinct biological processes driving the phenotypic complementarity, we analyzed patterns of gene expression to find that the pheromone response phenotype is specific to cellular fusion, whereas mating efficiency was a combined measure of cellular fusion, cell cycle arrest, and modifications in cellular metabolism. We applied our novel method to global gene expression patterns to derive an expression-specific interaction network and demonstrate applicability to global transcript data. Our approach provides a basis for interpretation of genetic interactions and the generation of specific hypotheses from populations assayed for multiple phenotypes.http://europepmc.org/articles/PMC3469415?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Gregory W Carter
Michelle Hays
Amir Sherman
Timothy Galitski
spellingShingle Gregory W Carter
Michelle Hays
Amir Sherman
Timothy Galitski
Use of pleiotropy to model genetic interactions in a population.
PLoS Genetics
author_facet Gregory W Carter
Michelle Hays
Amir Sherman
Timothy Galitski
author_sort Gregory W Carter
title Use of pleiotropy to model genetic interactions in a population.
title_short Use of pleiotropy to model genetic interactions in a population.
title_full Use of pleiotropy to model genetic interactions in a population.
title_fullStr Use of pleiotropy to model genetic interactions in a population.
title_full_unstemmed Use of pleiotropy to model genetic interactions in a population.
title_sort use of pleiotropy to model genetic interactions in a population.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2012-01-01
description Systems-level genetic studies in humans and model systems increasingly involve both high-resolution genotyping and multi-dimensional quantitative phenotyping. We present a novel method to infer and interpret genetic interactions that exploits the complementary information in multiple phenotypes. We applied this approach to a population of yeast strains with randomly assorted perturbations of five genes involved in mating. We quantified pheromone response at the molecular level and overall mating efficiency. These phenotypes were jointly analyzed to derive a network of genetic interactions that mapped mating-pathway relationships. To determine the distinct biological processes driving the phenotypic complementarity, we analyzed patterns of gene expression to find that the pheromone response phenotype is specific to cellular fusion, whereas mating efficiency was a combined measure of cellular fusion, cell cycle arrest, and modifications in cellular metabolism. We applied our novel method to global gene expression patterns to derive an expression-specific interaction network and demonstrate applicability to global transcript data. Our approach provides a basis for interpretation of genetic interactions and the generation of specific hypotheses from populations assayed for multiple phenotypes.
url http://europepmc.org/articles/PMC3469415?pdf=render
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