Connectivity in the yeast cell cycle transcription network: inferences from neural networks.

A current challenge is to develop computational approaches to infer gene network regulatory relationships based on multiple types of large-scale functional genomic data. We find that single-layer feed-forward artificial neural network (ANN) models can effectively discover gene network structure by i...

Full description

Bibliographic Details
Main Authors: Christopher E Hart, Eric Mjolsness, Barbara J Wold
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2006-12-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC1761652?pdf=render
_version_ 1811226867027410944
author Christopher E Hart
Eric Mjolsness
Barbara J Wold
author_facet Christopher E Hart
Eric Mjolsness
Barbara J Wold
author_sort Christopher E Hart
collection DOAJ
description A current challenge is to develop computational approaches to infer gene network regulatory relationships based on multiple types of large-scale functional genomic data. We find that single-layer feed-forward artificial neural network (ANN) models can effectively discover gene network structure by integrating global in vivo protein:DNA interaction data (ChIP/Array) with genome-wide microarray RNA data. We test this on the yeast cell cycle transcription network, which is composed of several hundred genes with phase-specific RNA outputs. These ANNs were robust to noise in data and to a variety of perturbations. They reliably identified and ranked 10 of 12 known major cell cycle factors at the top of a set of 204, based on a sum-of-squared weights metric. Comparative analysis of motif occurrences among multiple yeast species independently confirmed relationships inferred from ANN weights analysis. ANN models can capitalize on properties of biological gene networks that other kinds of models do not. ANNs naturally take advantage of patterns of absence, as well as presence, of factor binding associated with specific expression output; they are easily subjected to in silico "mutation" to uncover biological redundancies; and they can use the full range of factor binding values. A prominent feature of cell cycle ANNs suggested an analogous property might exist in the biological network. This postulated that "network-local discrimination" occurs when regulatory connections (here between MBF and target genes) are explicitly disfavored in one network module (G2), relative to others and to the class of genes outside the mitotic network. If correct, this predicts that MBF motifs will be significantly depleted from the discriminated class and that the discrimination will persist through evolution. Analysis of distantly related Schizosaccharomyces pombe confirmed this, suggesting that network-local discrimination is real and complements well-known enrichment of MBF sites in G1 class genes.
first_indexed 2024-04-12T09:32:02Z
format Article
id doaj.art-151f6f704e2f4aaba6962d495e3d48e3
institution Directory Open Access Journal
issn 1553-734X
1553-7358
language English
last_indexed 2024-04-12T09:32:02Z
publishDate 2006-12-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS Computational Biology
spelling doaj.art-151f6f704e2f4aaba6962d495e3d48e32022-12-22T03:38:20ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582006-12-01212e16910.1371/journal.pcbi.0020169Connectivity in the yeast cell cycle transcription network: inferences from neural networks.Christopher E HartEric MjolsnessBarbara J WoldA current challenge is to develop computational approaches to infer gene network regulatory relationships based on multiple types of large-scale functional genomic data. We find that single-layer feed-forward artificial neural network (ANN) models can effectively discover gene network structure by integrating global in vivo protein:DNA interaction data (ChIP/Array) with genome-wide microarray RNA data. We test this on the yeast cell cycle transcription network, which is composed of several hundred genes with phase-specific RNA outputs. These ANNs were robust to noise in data and to a variety of perturbations. They reliably identified and ranked 10 of 12 known major cell cycle factors at the top of a set of 204, based on a sum-of-squared weights metric. Comparative analysis of motif occurrences among multiple yeast species independently confirmed relationships inferred from ANN weights analysis. ANN models can capitalize on properties of biological gene networks that other kinds of models do not. ANNs naturally take advantage of patterns of absence, as well as presence, of factor binding associated with specific expression output; they are easily subjected to in silico "mutation" to uncover biological redundancies; and they can use the full range of factor binding values. A prominent feature of cell cycle ANNs suggested an analogous property might exist in the biological network. This postulated that "network-local discrimination" occurs when regulatory connections (here between MBF and target genes) are explicitly disfavored in one network module (G2), relative to others and to the class of genes outside the mitotic network. If correct, this predicts that MBF motifs will be significantly depleted from the discriminated class and that the discrimination will persist through evolution. Analysis of distantly related Schizosaccharomyces pombe confirmed this, suggesting that network-local discrimination is real and complements well-known enrichment of MBF sites in G1 class genes.http://europepmc.org/articles/PMC1761652?pdf=render
spellingShingle Christopher E Hart
Eric Mjolsness
Barbara J Wold
Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
PLoS Computational Biology
title Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
title_full Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
title_fullStr Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
title_full_unstemmed Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
title_short Connectivity in the yeast cell cycle transcription network: inferences from neural networks.
title_sort connectivity in the yeast cell cycle transcription network inferences from neural networks
url http://europepmc.org/articles/PMC1761652?pdf=render
work_keys_str_mv AT christopherehart connectivityintheyeastcellcycletranscriptionnetworkinferencesfromneuralnetworks
AT ericmjolsness connectivityintheyeastcellcycletranscriptionnetworkinferencesfromneuralnetworks
AT barbarajwold connectivityintheyeastcellcycletranscriptionnetworkinferencesfromneuralnetworks