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Inferring the location and effect of tumor suppressor genes by instability-selection modeling of allelic-loss data
Authors:Newton M A  Lee Y
Affiliation:Department of Statistics, University of Wisconsin-Madison, 1210 West Dayton Street, Madison, Wisconsin 53706-1685, USA. newton@stat.wisc.edu
Abstract:Cancerous tumor growth creates cells with abnormal DNA. Allelic-loss experiments identify genomic deletions in cancer cells, but sources of variation and intrinsic dependencies complicate inference about the location and effect of suppressor genes; such genes are the target of these experiments and are thought to be involved in tumor development. We investigate properties of an instability-selection model of allelic-loss data, including likelihood-based parameter estimation and hypothesis testing. By considering a special complete-data case, we derive an approximate calibration method for hypothesis tests of sporadic deletion. Parametric bootstrap and Bayesian computations are also developed. Data from three allelic-loss studies are reanalyzed to illustrate the methods.
Keywords:Allelic imbalance    Cancer gene mapping    Chromosomal deletions    Correlated binary data    Logarithm of odds score    Loss of heterozygosity    Markovian deletion process
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