Constrained multivariate association with longitudinal phenotypes

© 2016 The Author(s). Background: The incorporation of longitudinal data into genetic epidemiological studies has the potential to provide valuable information regarding the effect of time on complex disease etiology. Yet, the majority of research focuses on variables collected from a single time po...

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Main Authors: Melton, Phillip, Peralta, J., Almasy, L.
Format: Conference Paper
Published: 2016
Online Access:http://hdl.handle.net/20.500.11937/58069
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author Melton, Phillip
Peralta, J.
Almasy, L.
author_facet Melton, Phillip
Peralta, J.
Almasy, L.
author_sort Melton, Phillip
building Curtin Institutional Repository
collection Online Access
description © 2016 The Author(s). Background: The incorporation of longitudinal data into genetic epidemiological studies has the potential to provide valuable information regarding the effect of time on complex disease etiology. Yet, the majority of research focuses on variables collected from a single time point. This aim of this study was to test for main effects on a quantitative trait across time points using a constrained maximum-likelihood measured genotype approach. This method simultaneously accounts for all repeat measurements of a phenotype in families. We applied this method to systolic blood pressure (SBP) measurements from three time points using the Genetic Analysis Workshop 19 (GAW19) whole-genome sequence family simulated data set and 200 simulated replicates. Data consisted of 849 individuals from 20 extended Mexican American pedigrees. Comparisons were made among 3 statistical approaches: (a) constrained, where the effect of a variant or gene region on the mean trait value was constrained to be equal across all measurements; (b) unconstrained, where the variant or gene region effect was estimated separately for each time point; and (c) the average SBP measurement from three time points. These approaches were run for nine genetic variants with known effect sizes ( > 0.001) for SBP variability and a known gene-centric kernel (MAP4)-based test under the GAW19 simulation model across 200 replicates. Results: When compared to results using two time points, the constrained method utilizing all 3 time points increased power to detect association. Averaging SBP was equally effective when the variant has a large effect on the phenotype, but less powerful for variants with lower effect sizes. However, averaging SBP was far more effective than either the constrained or unconstrained approaches when using a gene-centric kernel-based test. Conclusion: We determined that this constrained multivariate approach improves genetic signal over the bivariate method. However, this method is still only effective in those variants that explain a moderate to large proportion of the phenotypic variance but is not as effective for gene-centric tests.
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spelling curtin-20.500.11937-580692017-11-20T08:58:09Z Constrained multivariate association with longitudinal phenotypes Melton, Phillip Peralta, J. Almasy, L. © 2016 The Author(s). Background: The incorporation of longitudinal data into genetic epidemiological studies has the potential to provide valuable information regarding the effect of time on complex disease etiology. Yet, the majority of research focuses on variables collected from a single time point. This aim of this study was to test for main effects on a quantitative trait across time points using a constrained maximum-likelihood measured genotype approach. This method simultaneously accounts for all repeat measurements of a phenotype in families. We applied this method to systolic blood pressure (SBP) measurements from three time points using the Genetic Analysis Workshop 19 (GAW19) whole-genome sequence family simulated data set and 200 simulated replicates. Data consisted of 849 individuals from 20 extended Mexican American pedigrees. Comparisons were made among 3 statistical approaches: (a) constrained, where the effect of a variant or gene region on the mean trait value was constrained to be equal across all measurements; (b) unconstrained, where the variant or gene region effect was estimated separately for each time point; and (c) the average SBP measurement from three time points. These approaches were run for nine genetic variants with known effect sizes ( > 0.001) for SBP variability and a known gene-centric kernel (MAP4)-based test under the GAW19 simulation model across 200 replicates. Results: When compared to results using two time points, the constrained method utilizing all 3 time points increased power to detect association. Averaging SBP was equally effective when the variant has a large effect on the phenotype, but less powerful for variants with lower effect sizes. However, averaging SBP was far more effective than either the constrained or unconstrained approaches when using a gene-centric kernel-based test. Conclusion: We determined that this constrained multivariate approach improves genetic signal over the bivariate method. However, this method is still only effective in those variants that explain a moderate to large proportion of the phenotypic variance but is not as effective for gene-centric tests. 2016 Conference Paper http://hdl.handle.net/20.500.11937/58069 10.1186/s12919-016-0051-8 unknown
spellingShingle Melton, Phillip
Peralta, J.
Almasy, L.
Constrained multivariate association with longitudinal phenotypes
title Constrained multivariate association with longitudinal phenotypes
title_full Constrained multivariate association with longitudinal phenotypes
title_fullStr Constrained multivariate association with longitudinal phenotypes
title_full_unstemmed Constrained multivariate association with longitudinal phenotypes
title_short Constrained multivariate association with longitudinal phenotypes
title_sort constrained multivariate association with longitudinal phenotypes
url http://hdl.handle.net/20.500.11937/58069