4.5 Article

Feature-specific penalized latent class analysis for genomic data

期刊

BIOMETRICS
卷 62, 期 4, 页码 1062-1070

出版社

BLACKWELL PUBLISHING
DOI: 10.1111/j.1541-0420.2006.00566.x

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constrained estimation; LASSO; loss of heterozygosity; mixture models; penalized likelihood; ridge regression

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Genomic data are often characterized by a moderate to large number of categorical variables observed for relatively few subjects. Some of the variables may be missing or noninformative. An example of such data is loss of heterozygosity (LOH), a dichotomous variable, observed on a moderate number of genetic markers. We first consider a latent class model where, conditional on unobserved membership in one of k classes, the variables are independent with probabilities determined by a regression model of low dimension q. Using a family of penalties including the ridge and LASSO, we extend this model to address higher-dimensional problems. Finally, we present an orthogonal map that transforms marker space to a space of features for which the constrained model has better predictive power. We demonstrate these methods on LOH data collected at 19 markers from 93 brain tumor patients. For this data set, the existing unpenalized latent class methodology does not produce estimates. Additionally, we show that posterior classes obtained from this method are associated with survival for these patients.

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