A random variance model for detection of differential gene expression in small microarray experiments
National Institutes of Health · National Cancer Institute
Abstract
MOTIVATION: Microarray techniques provide a valuable way of characterizing the molecular nature of disease. Unfortunately expense and limited specimen availability often lead to studies with small sample sizes. This makes accurate estimation of variability difficult, since variance estimates made on a gene by gene basis will have few degrees of freedom, and the assumption that all genes share equal variance is unlikely to be true. RESULTS: We propose a model by which the within gene variances are drawn from an inverse gamma distribution, whose parameters are estimated across all genes. This results in a test statistic that is a minor variation of those used in standard linear models. We demonstrate that the…
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Authors
2Topics & keywords
- False positive paradox
- Replicate
- Variance (accounting)
- Computer science
- Statistics
- Statistic
- False discovery rate
- Computational biology
- Peace, Justice and strong institutions