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Analysis of Baseline, Average, and Longitudinally Measured Blood Pressure Data Using Linear Mixed Models

Overview
Journal BMC Proc
Publisher Biomed Central
Specialty Biology
Date 2014 Dec 19
PMID 25519409
Citations 4
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Abstract

This article compares baseline, average, and longitudinal data analysis methods for identifying genetic variants in genome-wide association study using the Genetic Analysis Workshop 18 data. We apply methods that include (a) linear mixed models with baseline measures, (b) random intercept linear mixed models with mean measures outcome, and (c) random intercept linear mixed models with longitudinal measurements. In the linear mixed models, covariates are included as fixed effects, whereas relatedness among individuals is incorporated as the variance-covariance structure of the random effect for the individuals. The overall strategy of applying linear mixed models decorrelate the data is based on Aulchenko et al.'s GRAMMAR. By analyzing systolic and diastolic blood pressure, which are used separately as outcomes, we compare the 3 methods in identifying a known genetic variant that is associated with blood pressure from chromosome 3 and simulated phenotype data. We also analyze the real phenotype data to illustrate the methods. We conclude that the linear mixed model with longitudinal measurements of diastolic blood pressure is the most accurate at identifying the known single-nucleotide polymorphism among the methods, but linear mixed models with baseline measures perform best with systolic blood pressure as the outcome.

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References
1.
Lucek P, Ott J . Neural network analysis of complex traits. Genet Epidemiol. 1997; 14(6):1101-6. DOI: 10.1002/(SICI)1098-2272(1997)14:6<1101::AID-GEPI90>3.0.CO;2-K. View

2.
Carnethon M, Evans N, Church T, Lewis C, Schreiner P, Jacobs Jr D . Joint associations of physical activity and aerobic fitness on the development of incident hypertension: coronary artery risk development in young adults. Hypertension. 2010; 56(1):49-55. PMC: 2909350. DOI: 10.1161/HYPERTENSIONAHA.109.147603. View

3.
Levy D, Ehret G, Rice K, Verwoert G, Launer L, Dehghan A . Genome-wide association study of blood pressure and hypertension. Nat Genet. 2009; 41(6):677-87. PMC: 2998712. DOI: 10.1038/ng.384. View

4.
Tabara Y, Kohara K, Kita Y, Hirawa N, Katsuya T, Ohkubo T . Common variants in the ATP2B1 gene are associated with susceptibility to hypertension: the Japanese Millennium Genome Project. Hypertension. 2010; 56(5):973-80. PMC: 5003412. DOI: 10.1161/HYPERTENSIONAHA.110.153429. View

5.
Aulchenko Y, de Koning D, Haley C . Genomewide rapid association using mixed model and regression: a fast and simple method for genomewide pedigree-based quantitative trait loci association analysis. Genetics. 2007; 177(1):577-85. PMC: 2013682. DOI: 10.1534/genetics.107.075614. View