Origin and consequences of the relationship between protein mean and variance.

Cell-to-cell variance in protein levels (noise) is a ubiquitous phenomenon that can increase fitness by generating phenotypic differences within clonal populations of cells. An important challenge is to identify the specific molecular events that control noise. This task is complicated by the strong...

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Main Authors: Francesco Luigi Massimo Vallania, Marc Sherman, Zane Goodwin, Ilaria Mogno, Barak Alon Cohen, Robi David Mitra
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4111490?pdf=render
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spelling doaj-5548e53da3e94555ae67717318ddc5212020-11-25T01:21:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0197e10220210.1371/journal.pone.0102202Origin and consequences of the relationship between protein mean and variance.Francesco Luigi Massimo VallaniaMarc ShermanZane GoodwinIlaria MognoBarak Alon CohenRobi David MitraCell-to-cell variance in protein levels (noise) is a ubiquitous phenomenon that can increase fitness by generating phenotypic differences within clonal populations of cells. An important challenge is to identify the specific molecular events that control noise. This task is complicated by the strong dependence of a protein's cell-to-cell variance on its mean expression level through a power-law like relationship (σ2∝μ1.69). Here, we dissect the nature of this relationship using a stochastic model parameterized with experimentally measured values. This framework naturally recapitulates the power-law like relationship (σ2∝μ1.6) and accurately predicts protein variance across the yeast proteome (r2 = 0.935). Using this model we identified two distinct mechanisms by which protein variance can be increased. Variables that affect promoter activation, such as nucleosome positioning, increase protein variance by changing the exponent of the power-law relationship. In contrast, variables that affect processes downstream of promoter activation, such as mRNA and protein synthesis, increase protein variance in a mean-dependent manner following the power-law. We verified our findings experimentally using an inducible gene expression system in yeast. We conclude that the power-law-like relationship between noise and protein mean is due to the kinetics of promoter activation. Our results provide a framework for understanding how molecular processes shape stochastic variation across the genome.http://europepmc.org/articles/PMC4111490?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Francesco Luigi Massimo Vallania
Marc Sherman
Zane Goodwin
Ilaria Mogno
Barak Alon Cohen
Robi David Mitra
spellingShingle Francesco Luigi Massimo Vallania
Marc Sherman
Zane Goodwin
Ilaria Mogno
Barak Alon Cohen
Robi David Mitra
Origin and consequences of the relationship between protein mean and variance.
PLoS ONE
author_facet Francesco Luigi Massimo Vallania
Marc Sherman
Zane Goodwin
Ilaria Mogno
Barak Alon Cohen
Robi David Mitra
author_sort Francesco Luigi Massimo Vallania
title Origin and consequences of the relationship between protein mean and variance.
title_short Origin and consequences of the relationship between protein mean and variance.
title_full Origin and consequences of the relationship between protein mean and variance.
title_fullStr Origin and consequences of the relationship between protein mean and variance.
title_full_unstemmed Origin and consequences of the relationship between protein mean and variance.
title_sort origin and consequences of the relationship between protein mean and variance.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Cell-to-cell variance in protein levels (noise) is a ubiquitous phenomenon that can increase fitness by generating phenotypic differences within clonal populations of cells. An important challenge is to identify the specific molecular events that control noise. This task is complicated by the strong dependence of a protein's cell-to-cell variance on its mean expression level through a power-law like relationship (σ2∝μ1.69). Here, we dissect the nature of this relationship using a stochastic model parameterized with experimentally measured values. This framework naturally recapitulates the power-law like relationship (σ2∝μ1.6) and accurately predicts protein variance across the yeast proteome (r2 = 0.935). Using this model we identified two distinct mechanisms by which protein variance can be increased. Variables that affect promoter activation, such as nucleosome positioning, increase protein variance by changing the exponent of the power-law relationship. In contrast, variables that affect processes downstream of promoter activation, such as mRNA and protein synthesis, increase protein variance in a mean-dependent manner following the power-law. We verified our findings experimentally using an inducible gene expression system in yeast. We conclude that the power-law-like relationship between noise and protein mean is due to the kinetics of promoter activation. Our results provide a framework for understanding how molecular processes shape stochastic variation across the genome.
url http://europepmc.org/articles/PMC4111490?pdf=render
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