A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.

Perturbing a signaling system with a serial of single gene deletions and then observing corresponding expression changes in model organisms, such as yeast, is an important and widely used experimental technique for studying signaling pathways. People have developed different computational methods to...

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Main Authors: Songjian Lu, Xiaonan Fan, Lujia Chen, Xinghua Lu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6135403?pdf=render
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author Songjian Lu
Xiaonan Fan
Lujia Chen
Xinghua Lu
author_facet Songjian Lu
Xiaonan Fan
Lujia Chen
Xinghua Lu
author_sort Songjian Lu
collection DOAJ
description Perturbing a signaling system with a serial of single gene deletions and then observing corresponding expression changes in model organisms, such as yeast, is an important and widely used experimental technique for studying signaling pathways. People have developed different computational methods to analyze the perturbation data from gene deletion experiments for exploring the signaling pathways. The most popular methods/techniques include K-means clustering and hierarchical clustering techniques, or combining the expression data with knowledge, such as protein-protein interactions (PPIs) or gene ontology (GO), to search for new pathways. However, these methods neither consider nor fully utilize the intrinsic relation between the perturbation of a pathway and expression changes of genes regulated by the pathway, which served as the main motivation for developing a new computational method in this study. In our new model, we first find gene transcriptomic modules such that genes in each module are highly likely to be regulated by a common signal. We then use the expression status of those modules as readouts of pathway perturbations to search for up-stream pathways. Systematic evaluation, such as through gene ontology enrichment analysis, has provided evidence that genes in each transcriptomic module are highly likely to be regulated by a common signal. The PPI density analysis and literature search revealed that our new perturbation modules are functionally coherent. For example, the literature search revealed that 9 genes in one of our perturbation module are related to cell cycle and all 10 genes in another perturbation module are related by DNA damage, with much evidence from the literature coming from in vitro or/and in vivo verifications. Hence, utilizing the intrinsic relation between the perturbation of a pathway and the expression changes of genes regulated by the pathway is a useful method of searching for signaling pathways using genetic perturbation data. This model would also be suitable for analyzing drug experiment data, such as the CMap data, for finding drugs that perturb the same pathways.
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spelling doaj.art-d431c2fd712c481fa86a355bb94190c12022-12-21T17:48:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01139e020387110.1371/journal.pone.0203871A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.Songjian LuXiaonan FanLujia ChenXinghua LuPerturbing a signaling system with a serial of single gene deletions and then observing corresponding expression changes in model organisms, such as yeast, is an important and widely used experimental technique for studying signaling pathways. People have developed different computational methods to analyze the perturbation data from gene deletion experiments for exploring the signaling pathways. The most popular methods/techniques include K-means clustering and hierarchical clustering techniques, or combining the expression data with knowledge, such as protein-protein interactions (PPIs) or gene ontology (GO), to search for new pathways. However, these methods neither consider nor fully utilize the intrinsic relation between the perturbation of a pathway and expression changes of genes regulated by the pathway, which served as the main motivation for developing a new computational method in this study. In our new model, we first find gene transcriptomic modules such that genes in each module are highly likely to be regulated by a common signal. We then use the expression status of those modules as readouts of pathway perturbations to search for up-stream pathways. Systematic evaluation, such as through gene ontology enrichment analysis, has provided evidence that genes in each transcriptomic module are highly likely to be regulated by a common signal. The PPI density analysis and literature search revealed that our new perturbation modules are functionally coherent. For example, the literature search revealed that 9 genes in one of our perturbation module are related to cell cycle and all 10 genes in another perturbation module are related by DNA damage, with much evidence from the literature coming from in vitro or/and in vivo verifications. Hence, utilizing the intrinsic relation between the perturbation of a pathway and the expression changes of genes regulated by the pathway is a useful method of searching for signaling pathways using genetic perturbation data. This model would also be suitable for analyzing drug experiment data, such as the CMap data, for finding drugs that perturb the same pathways.http://europepmc.org/articles/PMC6135403?pdf=render
spellingShingle Songjian Lu
Xiaonan Fan
Lujia Chen
Xinghua Lu
A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
PLoS ONE
title A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
title_full A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
title_fullStr A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
title_full_unstemmed A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
title_short A novel method of using Deep Belief Networks and genetic perturbation data to search for yeast signaling pathways.
title_sort novel method of using deep belief networks and genetic perturbation data to search for yeast signaling pathways
url http://europepmc.org/articles/PMC6135403?pdf=render
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