Epistatic interaction maps relative to multiple metabolic phenotypes.

An epistatic interaction between two genes occurs when the phenotypic impact of one gene depends on another gene, often exposing a functional association between them. Due to experimental scalability and to evolutionary significance, abundant work has been focused on studying how epistasis affects c...

Full description

Bibliographic Details
Main Authors: Evan S Snitkin, Daniel Segrè
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-02-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC3037399?pdf=render
id doaj-98be6c72a2b04422ae5ba3867fdd2980
record_format Article
spelling doaj-98be6c72a2b04422ae5ba3867fdd29802020-11-25T01:29:12ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042011-02-0172e100129410.1371/journal.pgen.1001294Epistatic interaction maps relative to multiple metabolic phenotypes.Evan S SnitkinDaniel SegrèAn epistatic interaction between two genes occurs when the phenotypic impact of one gene depends on another gene, often exposing a functional association between them. Due to experimental scalability and to evolutionary significance, abundant work has been focused on studying how epistasis affects cellular growth rate, most notably in yeast. However, epistasis likely influences many different phenotypes, affecting our capacity to understand cellular functions, biochemical networks adaptation, and genetic diseases. Despite its broad significance, the extent and nature of epistasis relative to different phenotypes remain fundamentally unexplored. Here we use genome-scale metabolic network modeling to investigate the extent and properties of epistatic interactions relative to multiple phenotypes. Specifically, using an experimentally refined stoichiometric model for Saccharomyces cerevisiae, we computed a three-dimensional matrix of epistatic interactions between any two enzyme gene deletions, with respect to all metabolic flux phenotypes. We found that the total number of epistatic interactions between enzymes increases rapidly as phenotypes are added, plateauing at approximately 80 phenotypes, to an overall connectivity that is roughly 8-fold larger than the one observed relative to growth alone. Looking at interactions across all phenotypes, we found that gene pairs interact incoherently relative to different phenotypes, i.e. antagonistically relative to some phenotypes and synergistically relative to others. Specific deletion-deletion-phenotype triplets can be explained metabolically, suggesting a highly informative role of multi-phenotype epistasis in mapping cellular functions. Finally, we found that genes involved in many interactions across multiple phenotypes are more highly expressed, evolve slower, and tend to be associated with diseases, indicating that the importance of genes is hidden in their total phenotypic impact. Our predictions indicate a pervasiveness of nonlinear effects in how genetic perturbations affect multiple metabolic phenotypes. The approaches and results reported could influence future efforts in understanding metabolic diseases and the role of biochemical regulation in the cell.http://europepmc.org/articles/PMC3037399?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Evan S Snitkin
Daniel Segrè
spellingShingle Evan S Snitkin
Daniel Segrè
Epistatic interaction maps relative to multiple metabolic phenotypes.
PLoS Genetics
author_facet Evan S Snitkin
Daniel Segrè
author_sort Evan S Snitkin
title Epistatic interaction maps relative to multiple metabolic phenotypes.
title_short Epistatic interaction maps relative to multiple metabolic phenotypes.
title_full Epistatic interaction maps relative to multiple metabolic phenotypes.
title_fullStr Epistatic interaction maps relative to multiple metabolic phenotypes.
title_full_unstemmed Epistatic interaction maps relative to multiple metabolic phenotypes.
title_sort epistatic interaction maps relative to multiple metabolic phenotypes.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2011-02-01
description An epistatic interaction between two genes occurs when the phenotypic impact of one gene depends on another gene, often exposing a functional association between them. Due to experimental scalability and to evolutionary significance, abundant work has been focused on studying how epistasis affects cellular growth rate, most notably in yeast. However, epistasis likely influences many different phenotypes, affecting our capacity to understand cellular functions, biochemical networks adaptation, and genetic diseases. Despite its broad significance, the extent and nature of epistasis relative to different phenotypes remain fundamentally unexplored. Here we use genome-scale metabolic network modeling to investigate the extent and properties of epistatic interactions relative to multiple phenotypes. Specifically, using an experimentally refined stoichiometric model for Saccharomyces cerevisiae, we computed a three-dimensional matrix of epistatic interactions between any two enzyme gene deletions, with respect to all metabolic flux phenotypes. We found that the total number of epistatic interactions between enzymes increases rapidly as phenotypes are added, plateauing at approximately 80 phenotypes, to an overall connectivity that is roughly 8-fold larger than the one observed relative to growth alone. Looking at interactions across all phenotypes, we found that gene pairs interact incoherently relative to different phenotypes, i.e. antagonistically relative to some phenotypes and synergistically relative to others. Specific deletion-deletion-phenotype triplets can be explained metabolically, suggesting a highly informative role of multi-phenotype epistasis in mapping cellular functions. Finally, we found that genes involved in many interactions across multiple phenotypes are more highly expressed, evolve slower, and tend to be associated with diseases, indicating that the importance of genes is hidden in their total phenotypic impact. Our predictions indicate a pervasiveness of nonlinear effects in how genetic perturbations affect multiple metabolic phenotypes. The approaches and results reported could influence future efforts in understanding metabolic diseases and the role of biochemical regulation in the cell.
url http://europepmc.org/articles/PMC3037399?pdf=render
work_keys_str_mv AT evanssnitkin epistaticinteractionmapsrelativetomultiplemetabolicphenotypes
AT danielsegre epistaticinteractionmapsrelativetomultiplemetabolicphenotypes
_version_ 1725097846521200640