An expectation-maximization algorithm for the analysis of allelic expression imbalance

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Abstract

A significant proportion of the variation between individuals in gene expression levels is genetic, and it is likely that these differences correlate with phenotypic differences or with risk of disease. Cis-acting polymorphisms are important in determining interindividual differences in gene expression that lead to allelic expression imbalance, which is the unequal expression of homologous alleles in individuals heterozygous for such a polymorphism. This expression imbalance can be detected using a transcribed polymorphism, and, once it is established, the next step is to identify the polymorphisms that are responsible for or predictive of allelic expression levels. We present an expectation-maximization algorithm for such analyses, providing a formal statistical framework to test whether a candidate polymorphism is associated with allelic expression differences. © 2006 by The American Society of Human Genetics. All rights reserved.

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Teare, M. D., Heighway, J., & Santibáñez Koref, M. F. (2006). An expectation-maximization algorithm for the analysis of allelic expression imbalance. American Journal of Human Genetics, 79(3), 539–543. https://doi.org/10.1086/506968

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