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Activity Number:
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421
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Type:
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Contributed
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Date/Time:
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Wednesday, August 1, 2007 : 10:30 AM to 12:20 PM
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Sponsor:
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Section on Bayesian Statistical Science
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| Abstract - #309438 |
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Title:
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A Bayesian Model for Genetic Association with Phenotype Defined in a Limited Range
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Author(s):
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Ling Wang*+ and Vikki Nolan and Clinton Baldwin and Martin Steinberg and Paola Sebastiani
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Companies:
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Boston University and Boston University and Boston University and Boston University and Boston University
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Address:
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401 Broadway, Cambridge, MA, 02139,
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Keywords:
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Bayesian ; DIC ; Beta distribution ; SNP
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Abstract:
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The phenotype from genetic association studies is often a continuous variable such as a probability, or a percentage, and are defined in [0,1]. Linear regression with the transformed phenotype as dependent variable may lead to false positive associations and produce poor fit due to the transformation. We propose a Bayesian approach that uses Beta distribution to model the phenotype in the correct range of definition. We estimate the association with or without adjustment for confounding in a Bayesian framework using MCMC computation, and evaluate this procedure by assessing the false positive rates (FPR) and true positive rates (TPR) in simulated data. Compared with the model assuming a lognormal distribution, our method has a comparable FPR but a higher TPR. We apply this method to candidate-gene analysis that might impact fetal hemoglobin concentration in sickle cell anemia patients.
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