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Article
Borrowing Information Across Genes and Experiments for Improved Error Variance Estimation in Microarray Data Analysis
Statistical Applications in Genetics and Molecular Biology
  • Tieming Ji, Iowa State University
  • Peng Liu, Iowa State University
  • Dan Nettleton, Iowa State University
Document Type
Article
Publication Version
Published Version
Publication Date
1-1-2012
DOI
10.1515/1544-6115.1806
Abstract

Statistical inference for microarray experiments usually involves the estimation of error variance for each gene. Because the sample size available for each gene is often low, the usual unbiased estimator of the error variance can be unreliable. Shrinkage methods, including empirical Bayes approaches that borrow information across genes to produce more stable estimates, have been developed in recent years. Because the same microarray platform is often used for at least several experiments to study similar biological systems, there is an opportunity to improve variance estimation further by borrowing information not only across genes but also across experiments. We propose a lognormal model for error variances that involves random gene effects and random experiment effects. Based on the model, we develop an empirical Bayes estimator of the error variance for each combination of gene and experiment and call this estimator BAGE because information is Borrowed Across Genes and Experiments. A permutation strategy is used to make inference about the differential expression status of each gene. Simulation studies with data generated from different probability models and real microarray data show that our method outperforms existing approaches.

Comments

This article is published as Ji, Tieming; Liu, Peng; and Nettleton, Dan (2012) "Borrowing Information Across Genes and Experiments for Improved Error Variance Estimation in Microarray Data Analysis," Statistical Applications in Genetics and Molecular Biology: Vol. 11: Iss. 3, Article 12. doi: 10.1515/1544-6115.1806. Posted with permission.

Copyright Owner
De Gruyter
Language
en
File Format
application/pdf
Citation Information
Tieming Ji, Peng Liu and Dan Nettleton. "Borrowing Information Across Genes and Experiments for Improved Error Variance Estimation in Microarray Data Analysis" Statistical Applications in Genetics and Molecular Biology Vol. 11 Iss. 3 (2012) p. 12
Available at: http://works.bepress.com/dan-nettleton/105/