Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.

We present a method for Bayesian model-based hierarchical coclustering of gene expression data and use it to study the temporal transcription responses of an Anopheles gambiae cell line upon challenge with multiple microbial elicitors. The method fits statistical regression models to the gene expres...

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Main Authors: Heard, N, Holmes, C, Stephens, D, Hand, D, Dimopoulos, G
Format: Journal article
Language:English
Published: 2005
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author Heard, N
Holmes, C
Stephens, D
Hand, D
Dimopoulos, G
author_facet Heard, N
Holmes, C
Stephens, D
Hand, D
Dimopoulos, G
author_sort Heard, N
collection OXFORD
description We present a method for Bayesian model-based hierarchical coclustering of gene expression data and use it to study the temporal transcription responses of an Anopheles gambiae cell line upon challenge with multiple microbial elicitors. The method fits statistical regression models to the gene expression time series for each experiment and performs coclustering on the genes by optimizing a joint probability model, characterizing gene coregulation between multiple experiments. We compute the model using a two-stage Expectation-Maximization-type algorithm, first fixing the cross-experiment covariance structure and using efficient Bayesian hierarchical clustering to obtain a locally optimal clustering of the gene expression profiles and then, conditional on that clustering, carrying out Bayesian inference on the cross-experiment covariance using Markov chain Monte Carlo simulation to obtain an expectation. For the problem of model choice, we use a cross-validatory approach to decide between individual experiment modeling and varying levels of coclustering. Our method successfully generates tightly coregulated clusters of genes that are implicated in related processes and therefore can be used for analysis of global transcript responses to various stimuli and prediction of gene functions.
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spelling oxford-uuid:c308b0cb-8637-475e-8b2e-e4ff4b885b3c2022-03-27T06:13:33ZBayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:c308b0cb-8637-475e-8b2e-e4ff4b885b3cEnglishSymplectic Elements at Oxford2005Heard, NHolmes, CStephens, DHand, DDimopoulos, GWe present a method for Bayesian model-based hierarchical coclustering of gene expression data and use it to study the temporal transcription responses of an Anopheles gambiae cell line upon challenge with multiple microbial elicitors. The method fits statistical regression models to the gene expression time series for each experiment and performs coclustering on the genes by optimizing a joint probability model, characterizing gene coregulation between multiple experiments. We compute the model using a two-stage Expectation-Maximization-type algorithm, first fixing the cross-experiment covariance structure and using efficient Bayesian hierarchical clustering to obtain a locally optimal clustering of the gene expression profiles and then, conditional on that clustering, carrying out Bayesian inference on the cross-experiment covariance using Markov chain Monte Carlo simulation to obtain an expectation. For the problem of model choice, we use a cross-validatory approach to decide between individual experiment modeling and varying levels of coclustering. Our method successfully generates tightly coregulated clusters of genes that are implicated in related processes and therefore can be used for analysis of global transcript responses to various stimuli and prediction of gene functions.
spellingShingle Heard, N
Holmes, C
Stephens, D
Hand, D
Dimopoulos, G
Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title_full Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title_fullStr Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title_full_unstemmed Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title_short Bayesian coclustering of Anopheles gene expression time series: study of immune defense response to multiple experimental challenges.
title_sort bayesian coclustering of anopheles gene expression time series study of immune defense response to multiple experimental challenges
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AT stephensd bayesiancoclusteringofanophelesgeneexpressiontimeseriesstudyofimmunedefenseresponsetomultipleexperimentalchallenges
AT handd bayesiancoclusteringofanophelesgeneexpressiontimeseriesstudyofimmunedefenseresponsetomultipleexperimentalchallenges
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