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Analysis of Multivariate Phenotypes by Canonical Correlation Biplot in Genetic Association StudyAnalysis of Multivariate Phenotypes by Canonical Correlation Biplot in Genetic Association Study

Other Titles
Analysis of Multivariate Phenotypes by Canonical Correlation Biplot in Genetic Association Study
Authors
박미라이재용진서훈
Issue Date
2014
Publisher
한국자료분석학회
Keywords
biplot; canonical correlation analysis; genetic association; multivariate phenotype
Citation
Journal of The Korean Data Analysis Society, v.16, no.6, pp.2869 - 2875
Indexed
KCI
Journal Title
Journal of The Korean Data Analysis Society
Volume
16
Number
6
Start Page
2869
End Page
2875
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/100545
ISSN
1229-2354
Abstract
In the genetic association study of complex diseases, we may obtain several continuous phenotypes which are correlated to each other. The purpose of the analysis is to identify the relationship between genetic polymorphism and multiple phenotypes. Performing univariate analysis separately for each phenotype is common, but it has limitations in detecting pleiotropic genes. Its performance tends to deteriorate in the multiple testing problems. In this study, we suggest to employ a canonical correlation biplot (CCB) and a semi-partial canonical correlation biplot (SPCCB) as the multivariate approaches. The CCB summarizes the correlation between linear composites for phenotypes and genotypes. Also, it produces three kinds of graphs which are able to catch the relationship between genotypes, between phenotypes and ultimately between genotypes and phenotypes at a glance. SPCCB is an extension of the CCB by permitting covariates. We show the results of these methods by applying them to a sample genetic data as an illustration.
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