A web-based tool for principal component and significance analysis of microarray data

AA Sharov, DB Dudekula, MSH Ko - Bioinformatics, 2005 - academic.oup.com
AA Sharov, DB Dudekula, MSH Ko
Bioinformatics, 2005academic.oup.com
We have developed a program for microarray data analysis, which features the false
discovery rate for testing statistical significance and the principal component analysis using
the singular value decomposition method for detecting the global trends of gene-expression
patterns. Additional features include analysis of variance with multiple methods for error
variance adjustment, correction of cross-channel correlation for two-color microarrays,
identification of genes specific to each cluster of tissue samples, biplot of tissues and …
Abstract
Summary: We have developed a program for microarray data analysis, which features the false discovery rate for testing statistical significance and the principal component analysis using the singular value decomposition method for detecting the global trends of gene-expression patterns. Additional features include analysis of variance with multiple methods for error variance adjustment, correction of cross-channel correlation for two-color microarrays, identification of genes specific to each cluster of tissue samples, biplot of tissues and corresponding tissue-specific genes, clustering of genes that are correlated with each principal component (PC), three-dimensional graphics based on virtual reality modeling language and sharing of PC between different experiments. The software also supports parameter adjustment, gene search and graphical output of results. The software is implemented as a web tool and thus the speed of analysis does not depend on the power of a client computer.
Availability: The tool can be used on-line or downloaded at http://lgsun.grc.nia.nih.gov/ANOVA/
Contact:  kom@mail.nih.gov
Oxford University Press