Emergence of co-expression in gene regulatory networks.

Transcriptomes are known to organize themselves into gene co-expression clusters or modules where groups of genes display distinct patterns of coordinated or synchronous expression across independent biological samples. The functional significance of these co-expression clusters is suggested by the...

Full description

Bibliographic Details
Main Authors: Wencheng Yin, Luis Mendoza, Jimena Monzon-Sandoval, Araxi O Urrutia, Humberto Gutierrez
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0247671
id doaj-81b373a25010427490e2b59ff67fdf84
record_format Article
spelling doaj-81b373a25010427490e2b59ff67fdf842021-04-11T04:30:43ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01164e024767110.1371/journal.pone.0247671Emergence of co-expression in gene regulatory networks.Wencheng YinLuis MendozaJimena Monzon-SandovalAraxi O UrrutiaHumberto GutierrezTranscriptomes are known to organize themselves into gene co-expression clusters or modules where groups of genes display distinct patterns of coordinated or synchronous expression across independent biological samples. The functional significance of these co-expression clusters is suggested by the fact that highly coexpressed groups of genes tend to be enriched in genes involved in common functions and biological processes. While gene co-expression is widely assumed to reflect close regulatory proximity, the validity of this assumption remains unclear. Here we use a simple synthetic gene regulatory network (GRN) model and contrast the resulting co-expression structure produced by these networks with their known regulatory architecture and with the co-expression structure measured in available human expression data. Using randomization tests, we found that the levels of co-expression observed in simulated expression data were, just as with empirical data, significantly higher than expected by chance. When examining the source of correlated expression, we found that individual regulators, both in simulated and experimental data, fail, on average, to display correlated expression with their immediate targets. However, highly correlated gene pairs tend to share at least one common regulator, while most gene pairs sharing common regulators do not necessarily display correlated expression. Our results demonstrate that widespread co-expression naturally emerges in regulatory networks, and that it is a reliable and direct indicator of active co-regulation in a given cellular context.https://doi.org/10.1371/journal.pone.0247671
collection DOAJ
language English
format Article
sources DOAJ
author Wencheng Yin
Luis Mendoza
Jimena Monzon-Sandoval
Araxi O Urrutia
Humberto Gutierrez
spellingShingle Wencheng Yin
Luis Mendoza
Jimena Monzon-Sandoval
Araxi O Urrutia
Humberto Gutierrez
Emergence of co-expression in gene regulatory networks.
PLoS ONE
author_facet Wencheng Yin
Luis Mendoza
Jimena Monzon-Sandoval
Araxi O Urrutia
Humberto Gutierrez
author_sort Wencheng Yin
title Emergence of co-expression in gene regulatory networks.
title_short Emergence of co-expression in gene regulatory networks.
title_full Emergence of co-expression in gene regulatory networks.
title_fullStr Emergence of co-expression in gene regulatory networks.
title_full_unstemmed Emergence of co-expression in gene regulatory networks.
title_sort emergence of co-expression in gene regulatory networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Transcriptomes are known to organize themselves into gene co-expression clusters or modules where groups of genes display distinct patterns of coordinated or synchronous expression across independent biological samples. The functional significance of these co-expression clusters is suggested by the fact that highly coexpressed groups of genes tend to be enriched in genes involved in common functions and biological processes. While gene co-expression is widely assumed to reflect close regulatory proximity, the validity of this assumption remains unclear. Here we use a simple synthetic gene regulatory network (GRN) model and contrast the resulting co-expression structure produced by these networks with their known regulatory architecture and with the co-expression structure measured in available human expression data. Using randomization tests, we found that the levels of co-expression observed in simulated expression data were, just as with empirical data, significantly higher than expected by chance. When examining the source of correlated expression, we found that individual regulators, both in simulated and experimental data, fail, on average, to display correlated expression with their immediate targets. However, highly correlated gene pairs tend to share at least one common regulator, while most gene pairs sharing common regulators do not necessarily display correlated expression. Our results demonstrate that widespread co-expression naturally emerges in regulatory networks, and that it is a reliable and direct indicator of active co-regulation in a given cellular context.
url https://doi.org/10.1371/journal.pone.0247671
work_keys_str_mv AT wenchengyin emergenceofcoexpressioningeneregulatorynetworks
AT luismendoza emergenceofcoexpressioningeneregulatorynetworks
AT jimenamonzonsandoval emergenceofcoexpressioningeneregulatorynetworks
AT araxiourrutia emergenceofcoexpressioningeneregulatorynetworks
AT humbertogutierrez emergenceofcoexpressioningeneregulatorynetworks
_version_ 1714684367475834880