A Three Component Latent Class Model for Robust Semiparametric Gene Discovery
Alfo' Marco,
Alessio Farcomeni and
Tardella Luca
Statistical Applications in Genetics and Molecular Biology, 2011, vol. 10, issue 1, 1-19
Abstract:
We propose a robust model for discovering differentially expressed genes which directly incorporates biological significance, i.e., effect dimension. Using the so-called c-fold rule, we transform the expressions into a nominal observed random variable with three categories: below a fixed lower threshold, above a fixed upper threshold or within the two thresholds. Gene expression data is then transformed into a nominal variable with three levels possibly originated by three different distributions corresponding to under expressed, not differential, and over expressed genes. This leads to a statistical model for a 3-component mixture of trinomial distributions with suitable constraints on the parameter space. In order to obtain the MLE estimates, we show how to implement a constrained EM algorithm with a latent label for the corresponding component of each gene. Different strategies for a statistically significant gene discovery are discussed and compared. We illustrate the method on a little simulation study and a real dataset on multiple sclerosis.
Keywords: differentially expressed genes; effect size; microarray data; mixture model (search for similar items in EconPapers)
Date: 2011
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DOI: 10.2202/1544-6115.1565
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