Partition decoupling for multi-gene analysis of gene expression profiling data

<p>Abstract</p> <p>Background</p> <p>Multi-gene interactions likely play an important role in the development of complex phenotypes, and relationships between interacting genes pose a challenging statistical problem in microarray analysis, since the genes involved in th...

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Main Authors: Braun Rosemary, Leibon Gregory, Pauls Scott, Rockmore Daniel
Format: Article
Language:English
Published: BMC 2011-12-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/12/497
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spelling doaj-ad562168224f49fba8654b5da18ed4162020-11-24T21:33:26ZengBMCBMC Bioinformatics1471-21052011-12-0112149710.1186/1471-2105-12-497Partition decoupling for multi-gene analysis of gene expression profiling dataBraun RosemaryLeibon GregoryPauls ScottRockmore Daniel<p>Abstract</p> <p>Background</p> <p>Multi-gene interactions likely play an important role in the development of complex phenotypes, and relationships between interacting genes pose a challenging statistical problem in microarray analysis, since the genes involved in these interactions may not exhibit marginal differential expression. As a result, it is necessary to develop tools that can identify sets of interacting genes that discriminate phenotypes without requiring that the classification boundary between phenotypes be convex.</p> <p>Results</p> <p>We describe an extension and application of a new unsupervised statistical learning technique, known as the Partition Decoupling Method (PDM), to gene expression microarray data. This method may be used to classify samples based on multi-gene expression patterns and to identify pathways associated with phenotype, without relying upon the differential expression of individual genes. The PDM uses iterated spectral clustering and scrubbing steps, revealing at each iteration progressively finer structure in the geometry of the data. Because spectral clustering has the ability to discern clusters that are not linearly separable, it is able to articulate relationships between samples that would be missed by distance- and tree-based classifiers. After projecting the data onto the cluster centroids and computing the residuals ("scrubbing"), one can repeat the spectral clustering, revealing clusters that were not discernible in the first layer. These iterations, each of which provide a partition of the data that is decoupled from the others, are carried forward until the structure in the residuals is indistinguishable from noise, preventing over-fitting. We describe the PDM in detail and apply it to three publicly available cancer gene expression data sets. By applying the PDM on a pathway-by-pathway basis and identifying those pathways that permit unsupervised clustering of samples that match known sample characteristics, we show how the PDM may be used to find sets of mechanistically-related genes that may play a role in disease. An R package to carry out the PDM is available for download.</p> <p>Conclusions</p> <p>We show that the PDM is a useful tool for the analysis of gene expression data from complex diseases, where phenotypes are not linearly separable and multi-gene effects are likely to play a role. Our results demonstrate that the PDM is able to distinguish cell types and treatments with higher accuracy than is obtained through other approaches, and that the Pathway-PDM application is a valuable technique for identifying disease-associated pathways.</p> http://www.biomedcentral.com/1471-2105/12/497
collection DOAJ
language English
format Article
sources DOAJ
author Braun Rosemary
Leibon Gregory
Pauls Scott
Rockmore Daniel
spellingShingle Braun Rosemary
Leibon Gregory
Pauls Scott
Rockmore Daniel
Partition decoupling for multi-gene analysis of gene expression profiling data
BMC Bioinformatics
author_facet Braun Rosemary
Leibon Gregory
Pauls Scott
Rockmore Daniel
author_sort Braun Rosemary
title Partition decoupling for multi-gene analysis of gene expression profiling data
title_short Partition decoupling for multi-gene analysis of gene expression profiling data
title_full Partition decoupling for multi-gene analysis of gene expression profiling data
title_fullStr Partition decoupling for multi-gene analysis of gene expression profiling data
title_full_unstemmed Partition decoupling for multi-gene analysis of gene expression profiling data
title_sort partition decoupling for multi-gene analysis of gene expression profiling data
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2011-12-01
description <p>Abstract</p> <p>Background</p> <p>Multi-gene interactions likely play an important role in the development of complex phenotypes, and relationships between interacting genes pose a challenging statistical problem in microarray analysis, since the genes involved in these interactions may not exhibit marginal differential expression. As a result, it is necessary to develop tools that can identify sets of interacting genes that discriminate phenotypes without requiring that the classification boundary between phenotypes be convex.</p> <p>Results</p> <p>We describe an extension and application of a new unsupervised statistical learning technique, known as the Partition Decoupling Method (PDM), to gene expression microarray data. This method may be used to classify samples based on multi-gene expression patterns and to identify pathways associated with phenotype, without relying upon the differential expression of individual genes. The PDM uses iterated spectral clustering and scrubbing steps, revealing at each iteration progressively finer structure in the geometry of the data. Because spectral clustering has the ability to discern clusters that are not linearly separable, it is able to articulate relationships between samples that would be missed by distance- and tree-based classifiers. After projecting the data onto the cluster centroids and computing the residuals ("scrubbing"), one can repeat the spectral clustering, revealing clusters that were not discernible in the first layer. These iterations, each of which provide a partition of the data that is decoupled from the others, are carried forward until the structure in the residuals is indistinguishable from noise, preventing over-fitting. We describe the PDM in detail and apply it to three publicly available cancer gene expression data sets. By applying the PDM on a pathway-by-pathway basis and identifying those pathways that permit unsupervised clustering of samples that match known sample characteristics, we show how the PDM may be used to find sets of mechanistically-related genes that may play a role in disease. An R package to carry out the PDM is available for download.</p> <p>Conclusions</p> <p>We show that the PDM is a useful tool for the analysis of gene expression data from complex diseases, where phenotypes are not linearly separable and multi-gene effects are likely to play a role. Our results demonstrate that the PDM is able to distinguish cell types and treatments with higher accuracy than is obtained through other approaches, and that the Pathway-PDM application is a valuable technique for identifying disease-associated pathways.</p>
url http://www.biomedcentral.com/1471-2105/12/497
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