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Published in: BMC Proceedings 7/2009

Open Access 01-12-2009 | Proceedings

Growth mixture modeling as an exploratory analysis tool in longitudinal quantitative trait loci analysis

Authors: Su-Wei Chang, Seung Hoan Choi, Ke Li, Rose Saint Fleur, Chengrui Huang, Tong Shen, Kwangmi Ahn, Derek Gordon, Wonkuk Kim, Rongling Wu, Nancy R Mendell, Stephen J Finch

Published in: BMC Proceedings | Special Issue 7/2009

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Abstract

We examined the properties of growth mixture modeling in finding longitudinal quantitative trait loci in a genome-wide association study. Two software packages are commonly used in these analyses: Mplus and the SAS TRAJ procedure. We analyzed the 200 replicates of the simulated data with these programs using three tests: the likelihood-ratio test statistic, a direct test of genetic model coefficients, and the chi-square test classifying subjects based on the trajectory model's posterior Bayesian probability. The Mplus program was not effective in this application due to its computational demands. The distributions of these tests applied to genes not related to the trait were sensitive to departures from Hardy-Weinberg equilibrium. The likelihood-ratio test statistic was not usable in this application because its distribution was far from the expected asymptotic distributions when applied to markers with no genetic relation to the quantitative trait. The other two tests were satisfactory. Power was still substantial when we used markers near the gene rather than the gene itself. That is, growth mixture modeling may be useful in genome-wide association studies. For markers near the actual gene, there was somewhat greater power for the direct test of the coefficients and lesser power for the posterior Bayesian probability chi-square test.
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Metadata
Title
Growth mixture modeling as an exploratory analysis tool in longitudinal quantitative trait loci analysis
Authors
Su-Wei Chang
Seung Hoan Choi
Ke Li
Rose Saint Fleur
Chengrui Huang
Tong Shen
Kwangmi Ahn
Derek Gordon
Wonkuk Kim
Rongling Wu
Nancy R Mendell
Stephen J Finch
Publication date
01-12-2009
Publisher
BioMed Central
Published in
BMC Proceedings / Issue Special Issue 7/2009
Electronic ISSN: 1753-6561
DOI
https://doi.org/10.1186/1753-6561-3-S7-S112

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