A comparison of background correction methods for two-colour microarrays

被引:714
作者
Ritchie, Matthew E.
Silver, Jeremy
Oshlack, Alicia
Holmes, Melissa
Diyagama, Dileepa
Holloway, Andrew
Smyth, Gordon K.
机构
[1] Royal Melbourne Hosp, Walter & Eliza Hall Inst Med Res, Div Bioinformat, Parkville, Vic 3050, Australia
[2] Royal Melbourne Hosp, Walter & Eliza Hall Inst Med Res, Div Immunol, Parkville, Vic 3050, Australia
[3] Univ Cambridge, CRUK Cambridge Res Inst, Li Ka Shing Ctr, Dept Oncol, Cambridge CB2 0RE, England
[4] Peter MacCallum Canc Ctr, Melbourne, Vic 3002, Australia
关键词
D O I
10.1093/bioinformatics/btm412
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Motivation: Microarray data must be background corrected to remove the effects of non-specific binding or spatial heterogeneity across the array, but this practice typically causes other problems such as negative corrected intensities and high variability of low intensity log-ratios. Different estimators of background, and various model-based processing methods, are compared in this study in search of the best option for differential expression analyses of small microarray experiments. Results: Using data where some independent truth in gene expression is known, eight different background correction alternatives are compared, in terms of precision and bias of the resulting gene expression measures, and in terms of their ability to detect differentially expressed genes as judged by two popular algorithms, SAM and limma eBayes. A new background processing method (normexp) is introduced which is based on a convolution model. The model-based correction methods are shown to be markedly superior to the usual practice of subtracting local background estimates. Methods which stabilize the variances of the log-ratios along the intensity range perform the best. The normexp+offset method is found to give the lowest false discovery rate overall, followed by morph and vsn. Like vsn, normexp is applicable to most types of two-colour microarray data.
引用
收藏
页码:2700 / 2707
页数:8
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