Automated discovery of functional generality of human gene expression programs.

An important research problem in computational biology is the identification of expression programs, sets of co-expressed genes orchestrating normal or pathological processes, and the characterization of the functional breadth of these programs. The use of human expression data compendia for discove...

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Main Authors: Georg K Gerber, Robin D Dowell, Tommi S Jaakkola, David K Gifford
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2007-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC1941755?pdf=render
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spelling doaj-1f3a67739d5949119c4c5f08954d96382020-11-25T01:53:27ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582007-08-0138e14810.1371/journal.pcbi.0030148Automated discovery of functional generality of human gene expression programs.Georg K GerberRobin D DowellTommi S JaakkolaDavid K GiffordAn important research problem in computational biology is the identification of expression programs, sets of co-expressed genes orchestrating normal or pathological processes, and the characterization of the functional breadth of these programs. The use of human expression data compendia for discovery of such programs presents several challenges including cellular inhomogeneity within samples, genetic and environmental variation across samples, uncertainty in the numbers of programs and sample populations, and temporal behavior. We developed GeneProgram, a new unsupervised computational framework based on Hierarchical Dirichlet Processes that addresses each of the above challenges. GeneProgram uses expression data to simultaneously organize tissues into groups and genes into overlapping programs with consistent temporal behavior, to produce maps of expression programs, which are sorted by generality scores that exploit the automatically learned groupings. Using synthetic and real gene expression data, we showed that GeneProgram outperformed several popular expression analysis methods. We applied GeneProgram to a compendium of 62 short time-series gene expression datasets exploring the responses of human cells to infectious agents and immune-modulating molecules. GeneProgram produced a map of 104 expression programs, a substantial number of which were significantly enriched for genes involved in key signaling pathways and/or bound by NF-kappaB transcription factors in genome-wide experiments. Further, GeneProgram discovered expression programs that appear to implicate surprising signaling pathways or receptor types in the response to infection, including Wnt signaling and neurotransmitter receptors. We believe the discovered map of expression programs involved in the response to infection will be useful for guiding future biological experiments; genes from programs with low generality scores might serve as new drug targets that exhibit minimal "cross-talk," and genes from high generality programs may maintain common physiological responses that go awry in disease states. Further, our method is multipurpose, and can be applied readily to novel compendia of biological data.http://europepmc.org/articles/PMC1941755?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Georg K Gerber
Robin D Dowell
Tommi S Jaakkola
David K Gifford
spellingShingle Georg K Gerber
Robin D Dowell
Tommi S Jaakkola
David K Gifford
Automated discovery of functional generality of human gene expression programs.
PLoS Computational Biology
author_facet Georg K Gerber
Robin D Dowell
Tommi S Jaakkola
David K Gifford
author_sort Georg K Gerber
title Automated discovery of functional generality of human gene expression programs.
title_short Automated discovery of functional generality of human gene expression programs.
title_full Automated discovery of functional generality of human gene expression programs.
title_fullStr Automated discovery of functional generality of human gene expression programs.
title_full_unstemmed Automated discovery of functional generality of human gene expression programs.
title_sort automated discovery of functional generality of human gene expression programs.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2007-08-01
description An important research problem in computational biology is the identification of expression programs, sets of co-expressed genes orchestrating normal or pathological processes, and the characterization of the functional breadth of these programs. The use of human expression data compendia for discovery of such programs presents several challenges including cellular inhomogeneity within samples, genetic and environmental variation across samples, uncertainty in the numbers of programs and sample populations, and temporal behavior. We developed GeneProgram, a new unsupervised computational framework based on Hierarchical Dirichlet Processes that addresses each of the above challenges. GeneProgram uses expression data to simultaneously organize tissues into groups and genes into overlapping programs with consistent temporal behavior, to produce maps of expression programs, which are sorted by generality scores that exploit the automatically learned groupings. Using synthetic and real gene expression data, we showed that GeneProgram outperformed several popular expression analysis methods. We applied GeneProgram to a compendium of 62 short time-series gene expression datasets exploring the responses of human cells to infectious agents and immune-modulating molecules. GeneProgram produced a map of 104 expression programs, a substantial number of which were significantly enriched for genes involved in key signaling pathways and/or bound by NF-kappaB transcription factors in genome-wide experiments. Further, GeneProgram discovered expression programs that appear to implicate surprising signaling pathways or receptor types in the response to infection, including Wnt signaling and neurotransmitter receptors. We believe the discovered map of expression programs involved in the response to infection will be useful for guiding future biological experiments; genes from programs with low generality scores might serve as new drug targets that exhibit minimal "cross-talk," and genes from high generality programs may maintain common physiological responses that go awry in disease states. Further, our method is multipurpose, and can be applied readily to novel compendia of biological data.
url http://europepmc.org/articles/PMC1941755?pdf=render
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