Using Canonical Correlation Analysis to Discover Genetic Regulatory Variants
Author(s) -
Melissa Naylor,
Xihong Lin,
Scott T. Weiss,
Benjamin A. Raby,
Christoph Lange
Publication year - 2010
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0010395
Subject(s) - canonical correlation , heritability , biology , correlation , genetics , computational biology , genetic association , linkage (software) , pairwise comparison , trait , genetic linkage , single nucleotide polymorphism , univariate , missing heritability problem , gene , linkage disequilibrium , quantitative trait locus , genotype , computer science , statistics , multivariate statistics , mathematics , geometry , programming language
Background Discovering genetic associations between genetic markers and gene expression levels can provide insight into gene regulation and, potentially, mechanisms of disease. Such analyses typically involve a linkage or association analysis in which expression data are used as phenotypes. This approach leads to a large number of multiple comparisons and may therefore lack power. We assess the potential of applying canonical correlation analysis to partitioned genomewide data as a method for discovering regulatory variants. Methodology/Principal Findings Simulations suggest that canonical correlation analysis has higher power than standard pairwise univariate regression to detect single nucleotide polymorphisms when the expression trait has low heritability. The increase in power is even greater under the recessive model. We demonstrate this approach using the Childhood Asthma Management Program data. Conclusions/Significance Our approach reduces multiple comparisons and may provide insight into the complex relationships between genotype and gene expression.
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