Multiple phenotype modeling in gene-mapping studies of quantitative traits: power advantages.
David B. Allison,Bonnie Thiel,Pamela St. Jean,Robert C. Elston,Ming C. Infante,Nicholas J. Schork +5 more
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TL;DR: This work investigates the utility of a simple statistical model for the mapping of quantitative-trait loci that incorporates multiple phenotypic or diagnostic endpoints into a gene-mapping analysis and suggests that substantial increases in the power to map loci can be obtained with the proposed technique.
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Abstract: Genomewide searches for loci influencing complex human traits and diseases such as diabetes, hypertension, and obesity are often plagued by low power and interpretive difficulties. Attempts to remedy these difficulties have typically relied on, and have promoted the use of, novel subject-ascertainment schemes, larger sample sizes, a greater density of DNA markers, and more-sophisticated statistical modeling and analysis strategies. Many of these remedies can be costly to implement. We investigate the utility of a simple statistical model for the mapping of quantitative-trait loci that incorporates multiple phenotypic or diagnostic endpoints into a gene-mapping analysis. The approach considers finding a linear combination of multiple phenotypic values that maximizes the evidence for linkage to a locus. Our results suggest that substantial increases in the power to map loci can be obtained with the proposed technique, although the increase in power obtained is a function of the size and direction of the residual correlation among the phenotypes used in the analysis. Extensive simulation studies are described that justify these claims, for cases in which two phenotypic measures are analyzed. This approach can be easily extended to cover more-complex situations and may provide a basis for more insightful genetic-analysis paradigms.
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Citations
MARV: a tool for genome-wide multi-phenotype analysis of rare variants.
Marika Kaakinen,Reedik Mägi,Krista Fischer,Jani Heikkinen,Marjo-Riitta Järvelin,Andrew P. Morris,Inga Prokopenko +6 more
TL;DR: MarV as mentioned in this paper is a software tool for multi-phenotype analysis of rare variants, which is based on a method that collapses rare variants within a genomic region and models the proportion of minor alleles in the rare variants on a linear combination of multiple phenotypes.
Human behavioral informatics in genetic studies of neuropsychiatric disease: multivariate profile-based analysis.
TL;DR: It is proposed that behavioral profile-based phenotypes provide a meaningful alternative to the use of single measures, such as diagnostic category, in genetic association studies of neuropsychiatric disease.
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Joint tests of linkage and association for quantitative traits.
TL;DR: Various study designs and analytic techniques for testing the joint hypothesis that a genetic marker is both linked to and associated with a quantitative phenotype and the application of such methods to fine mapping are described.
16
Group 6: Pleiotropy and multivariate analysis.
Peter Kraft,Mariza de Andrade +1 more
TL;DR: This group of papers in this group from Genetic Analysis Workshop 13 presented promising univariate summaries of multiple traits that detected linkage signals that standard single‐trait univariate methods did not, and found linkage signals using multivariate techniques that univariate techniques missed.
16
A Bivariate Whole Genome Linkage Study Identified Genomic Regions Influencing Both BMD and Bone Structure
Xiao-Gang Liu,Xiao-Gang Liu,Yong Jun Liu,Jianfeng Liu,Yu-Fang Pei,Yu-Fang Pei,Dong Hai Xiong,Hui Shen,Hong Yi Deng,Christopher J. Papasian,Betty M. Drees,James J. Hamilton,Robert R. Recker,Hong-Wen Deng,Hong-Wen Deng,Hong-Wen Deng +15 more
TL;DR: Several genomic regions that may contain QTLs important for both aBMD and ABS are identified and further endeavors are necessary to follow these regions to eventually pinpoint the genetic variants affecting bone strength and risk of fractures.
16
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