Inference with Transposable Data: Modelling the Effects of Row and Column Correlations

成果类型:
Article
署名作者:
Allen, Genevera I. I.; Tibshirani, Robert
署名单位:
Baylor College of Medicine; Rice University; Stanford University; Rice University
刊物名称:
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY
ISSN/ISSBN:
1369-7412
DOI:
10.1111/j.1467-9868.2011.01027.x
发表日期:
2012
页码:
721-743
关键词:
false discovery rate gene-expression Consistency FRAMEWORK
摘要:
We consider the problem of large-scale inference on the row or column variables of data in the form of a matrix. Many of these data matrices are transposable meaning that neither the row variables nor the column variables can be considered independent instances. An example of this scenario is detecting significant genes in microarrays when the samples may be dependent because of latent variables or unknown batch effects. By modelling this matrix data by using the matrix variate normal distribution, we study and quantify the effects of row and column correlations on procedures for large-scale inference. We then propose a simple solution to the myriad of problems that are presented by unexpected correlations: we simultaneously estimate row and column covariances and use these to sphere or decorrelate the noise in the underlying data before conducting inference. This procedure yields data with approximately independent rows and columns so that test statistics more closely follow null distributions and multiple-testing procedures correctly control the desired error rates. Results on simulated models and real microarray data demonstrate major advantages of this approach: increased statistical power, less bias in estimating the false discovery rate and reduced variance of the false discovery rate estimators.
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