Using mixture models to detect differentially expressed genes
Contribuinte(s) |
C Anderson and L Muir |
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Data(s) |
01/01/2005
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Resumo |
An important and common problem in microarray experiments is the detection of genes that are differentially expressed in a given number of classes. As this problem concerns the selection of significant genes from a large pool of candidate genes, it needs to be carried out within the framework of multiple hypothesis testing. In this paper, we focus on the use of mixture models to handle the multiplicity issue. With this approach, a measure of the local false discovery rate is provided for each gene, and it can be implemented so that the implied global false discovery rate is bounded as with the Benjamini-Hochberg methodology based on tail areas. The latter procedure is too conservative, unless it is modified according to the prior probability that a gene is not differentially expressed. An attractive feature of the mixture model approach is that it provides a framework for the estimation of this probability and its subsequent use in forming a decision rule. The rule can also be formed to take the false negative rate into account. |
Identificador | |
Idioma(s) |
eng |
Publicador |
C S I R O Publishing |
Palavras-Chave | #Agriculture, Multidisciplinary #Multiple Hypothesis Testing #False Discovery Rate #Bayes Formula #Bayes Rule #False Discovery Rate #Replicated Microarray Experiments #Empirical Bayes Methods #Statistical-methods #Rates #Hypothesis #Scale #C1 #230204 Applied Statistics #780101 Mathematical sciences |
Tipo |
Journal Article |