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Exploiting Identifiability and Intergene Correlation for Improved Detection of Differential Expression
Author(s) -
J.R. Deller,
Hayder Radha,
J. Justin McCormick
Publication year - 2013
Publication title -
isrn bioinformatics
Language(s) - English
Resource type - Journals
eISSN - 2090-7346
pISSN - 2090-7338
DOI - 10.1155/2013/404717
Subject(s) - correlation , data mining , computer science , identifiability , power analysis , a priori and a posteriori , statistic , algorithm , differential privacy , set (abstract data type) , statistical hypothesis testing , data set , test statistic , mathematics , statistics , cryptography , philosophy , geometry , epistemology , programming language
Accurate differential analysis of microarray data strongly depends on effective treatment of intergene correlation. Such dependence is ordinarily accounted for in terms of its effect on significance cutoffs. In this paper, it is shown that correlation can, in fact, be exploited to share information across tests and reorder expression differentials for increased statistical power, regardless of the threshold. Significantly improved differential analysis is the result of two simple measures: (i) adjusting test statistics to exploit information from identifiable genes (the large subset of genes represented on a microarray that can be classified a priori as nondifferential with very high confidence], but (ii) doing so in a way that accounts for linear dependencies among identifiable and nonidentifiable genes. A method is developed that builds upon the widely used two-sample t -statistic approach and uses analysis in Hilbert space to decompose the nonidentified gene vector into two components that are correlated and uncorrelated with the identified set. In the application to data derived from a widely studied prostate cancer database, the proposed method outperforms some of the most highly regarded approaches published to date. Algorithms in MATLAB and in R are available for public download.

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