A Laplace mixture model for identification of differential expression in microarray experiments

Citation
Bhowmick, Debjani et al., A Laplace mixture model for identification of differential expression in microarray experiments, Biostatistics (Oxford. Print) , 7(4), 2006, pp. 630-641
ISSN journal
14654644
Volume
7
Issue
4
Year of publication
2006
Pages
630 - 641
Database
ACNP
SICI code
Abstract
Microarrays have become an important tool for studying the molecular basis of complex disease traits and fundamental biological processes.A common purpose of microarray experiments is the detection of genes that are differentially expressed under two conditions, such as treatment versus control or wild type versus knockout.We introduce a Laplace mixture model as a long-tailed alternative to the normal distribution when identifying differentially expressed genes in microarray experiments, and provide an extension to asymmetric over- or underexpression.This model permits greater flexibility than models in current use as it has the potential, at least with sufficient data, to accommodate both whole genome and restricted coverage arrays.We also propose likelihood approaches to hyperparameter estimation which are equally applicable in the Normal mixture case.The Laplace model appears to give some improvement in fit to data, though simulation studies show that our method performs similarly to several other statistical approaches to the problem of identification of differential expression.