A stable iterative method for refining discriminative gene clusters

<p>Abstract</p> <p>Background</p> <p>Microarray technology is often used to identify the genes that are differentially expressed between two biological conditions. On the other hand, since microarray datasets contain a small number of samples and a large number of genes...

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Main Authors: Zhang Louxin, Zhu Mengxia, Xu Min
Format: Article
Language:English
Published: BMC 2008-09-01
Series:BMC Genomics
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spelling doaj-cb7cd0f5feaf430f8cc59af3c7eccf922020-11-25T00:01:44ZengBMCBMC Genomics1471-21642008-09-019Suppl 2S1810.1186/1471-2164-9-S2-S18A stable iterative method for refining discriminative gene clustersZhang LouxinZhu MengxiaXu Min<p>Abstract</p> <p>Background</p> <p>Microarray technology is often used to identify the genes that are differentially expressed between two biological conditions. On the other hand, since microarray datasets contain a small number of samples and a large number of genes, it is usually desirable to identify small gene subsets with distinct pattern between sample classes. Such gene subsets are highly discriminative in phenotype classification because of their tightly coupling features. Unfortunately, such identified classifiers usually tend to have poor generalization properties on the test samples due to overfitting problem.</p> <p>Results</p> <p>We propose a novel approach combining both supervised learning with unsupervised learning techniques to generate increasingly discriminative gene clusters in an iterative manner. Our experiments on both simulated and real datasets show that our method can produce a series of robust gene clusters with good classification performance compared with existing approaches.</p> <p>Conclusion</p> <p>This backward approach for refining a series of highly discriminative gene clusters for classification purpose proves to be very consistent and stable when applied to various types of training samples.</p>
collection DOAJ
language English
format Article
sources DOAJ
author Zhang Louxin
Zhu Mengxia
Xu Min
spellingShingle Zhang Louxin
Zhu Mengxia
Xu Min
A stable iterative method for refining discriminative gene clusters
BMC Genomics
author_facet Zhang Louxin
Zhu Mengxia
Xu Min
author_sort Zhang Louxin
title A stable iterative method for refining discriminative gene clusters
title_short A stable iterative method for refining discriminative gene clusters
title_full A stable iterative method for refining discriminative gene clusters
title_fullStr A stable iterative method for refining discriminative gene clusters
title_full_unstemmed A stable iterative method for refining discriminative gene clusters
title_sort stable iterative method for refining discriminative gene clusters
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2008-09-01
description <p>Abstract</p> <p>Background</p> <p>Microarray technology is often used to identify the genes that are differentially expressed between two biological conditions. On the other hand, since microarray datasets contain a small number of samples and a large number of genes, it is usually desirable to identify small gene subsets with distinct pattern between sample classes. Such gene subsets are highly discriminative in phenotype classification because of their tightly coupling features. Unfortunately, such identified classifiers usually tend to have poor generalization properties on the test samples due to overfitting problem.</p> <p>Results</p> <p>We propose a novel approach combining both supervised learning with unsupervised learning techniques to generate increasingly discriminative gene clusters in an iterative manner. Our experiments on both simulated and real datasets show that our method can produce a series of robust gene clusters with good classification performance compared with existing approaches.</p> <p>Conclusion</p> <p>This backward approach for refining a series of highly discriminative gene clusters for classification purpose proves to be very consistent and stable when applied to various types of training samples.</p>
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AT zhanglouxin stableiterativemethodforrefiningdiscriminativegeneclusters
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