Inference of causal networks from time-varying transcriptome data via sparse coding.

Temporal analysis of genome-wide data can provide insights into the underlying mechanism of the biological processes in two ways. First, grouping the temporal data provides a richer, more robust representation of the underlying processes that are co-regulated. The net result is a significant dimensi...

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Main Authors: Kai Zhang, Ju Han, Torsten Groesser, Gerald Fontenay, Bahram Parvin
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916126/pdf/?tool=EBI
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spelling doaj-6b4cf01c5c8d4d10852e8539b37e8fb92021-03-03T20:27:49ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0178e4230610.1371/journal.pone.0042306Inference of causal networks from time-varying transcriptome data via sparse coding.Kai ZhangJu HanTorsten GroesserGerald FontenayBahram ParvinTemporal analysis of genome-wide data can provide insights into the underlying mechanism of the biological processes in two ways. First, grouping the temporal data provides a richer, more robust representation of the underlying processes that are co-regulated. The net result is a significant dimensional reduction of the genome-wide array data into a smaller set of vocabularies for bioinformatics analysis. Second, the computed set of time-course vocabularies can be interrogated for a potential causal network that can shed light on the underlying interactions. The method is coupled with an experiment for investigating responses to high doses of ionizing radiation with and without a small priming dose. From a computational perspective, inference of a causal network can rapidly become computationally intractable with the increasing number of variables. Additionally, from a bioinformatics perspective, larger networks always hinder interpretation. Therefore, our method focuses on inferring the simplest network that is computationally tractable and interpretable. The method first reduces the number of temporal variables through consensus clustering to reveal a small set of temporal templates. It then enforces simplicity in the network configuration through the sparsity constraint, which is further regularized by requiring continuity between consecutive time points. We present intermediate results for each computational step, and apply our method to a time-course transcriptome dataset for a cell line receiving a challenge dose of ionizing radiation with and without a prior priming dose. Our analyses indicate that (i) the priming dose increases the diversity of the computed templates (e.g., diversity of transcriptome signatures); thus, increasing the network complexity; (ii) as a result of the priming dose, there are a number of unique templates with delayed and oscillatory profiles; and (iii) radiation-induced stress responses are enriched through pathway and subnetwork studies.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916126/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Kai Zhang
Ju Han
Torsten Groesser
Gerald Fontenay
Bahram Parvin
spellingShingle Kai Zhang
Ju Han
Torsten Groesser
Gerald Fontenay
Bahram Parvin
Inference of causal networks from time-varying transcriptome data via sparse coding.
PLoS ONE
author_facet Kai Zhang
Ju Han
Torsten Groesser
Gerald Fontenay
Bahram Parvin
author_sort Kai Zhang
title Inference of causal networks from time-varying transcriptome data via sparse coding.
title_short Inference of causal networks from time-varying transcriptome data via sparse coding.
title_full Inference of causal networks from time-varying transcriptome data via sparse coding.
title_fullStr Inference of causal networks from time-varying transcriptome data via sparse coding.
title_full_unstemmed Inference of causal networks from time-varying transcriptome data via sparse coding.
title_sort inference of causal networks from time-varying transcriptome data via sparse coding.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description Temporal analysis of genome-wide data can provide insights into the underlying mechanism of the biological processes in two ways. First, grouping the temporal data provides a richer, more robust representation of the underlying processes that are co-regulated. The net result is a significant dimensional reduction of the genome-wide array data into a smaller set of vocabularies for bioinformatics analysis. Second, the computed set of time-course vocabularies can be interrogated for a potential causal network that can shed light on the underlying interactions. The method is coupled with an experiment for investigating responses to high doses of ionizing radiation with and without a small priming dose. From a computational perspective, inference of a causal network can rapidly become computationally intractable with the increasing number of variables. Additionally, from a bioinformatics perspective, larger networks always hinder interpretation. Therefore, our method focuses on inferring the simplest network that is computationally tractable and interpretable. The method first reduces the number of temporal variables through consensus clustering to reveal a small set of temporal templates. It then enforces simplicity in the network configuration through the sparsity constraint, which is further regularized by requiring continuity between consecutive time points. We present intermediate results for each computational step, and apply our method to a time-course transcriptome dataset for a cell line receiving a challenge dose of ionizing radiation with and without a prior priming dose. Our analyses indicate that (i) the priming dose increases the diversity of the computed templates (e.g., diversity of transcriptome signatures); thus, increasing the network complexity; (ii) as a result of the priming dose, there are a number of unique templates with delayed and oscillatory profiles; and (iii) radiation-induced stress responses are enriched through pathway and subnetwork studies.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916126/pdf/?tool=EBI
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