4.5 Article

Discriminant analysis to evaluate clustering of gene expression data

Journal

FEBS LETTERS
Volume 522, Issue 1-3, Pages 24-28

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/S0014-5793(02)02873-9

Keywords

microarray; gene expression data; cluster analysis; principal component analysis; discriminant analysis; Drosophila

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In this work we present a procedure that combines classical statistical methods to assess the confidence of gene clusters identified by hierarchical clustering of expression data. This approach was applied to a publicly released Drosophila metamorphosis data set [White et al., Science 286 (1999) 2179-2184]. We have been able to produce reliable classifications of gene groups and genes within the groups by applying unsupervised (cluster analysis), dimension reduction (principal component analysis) and supervised methods (linear discriminant analysis) in a sequential form. This procedure provides a means to select relevant information from microarray data, reducing the number of genes and clusters that require further biological analysis. (C) 2002 Federation of European Biochemical Societies. Published by Elsevier Science B.V. All rights reserved.

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