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Grid-based Gaussian process models for longitudinal genetic data

Authors
Chung, Wonil
Issue Date
Jan-2022
Publisher
KOREAN STATISTICAL SOC
Keywords
Bayesian; longitudinal; Gaussian process; hybrid Monte Carlo; PCG Sampler
Citation
COMMUNICATIONS FOR STATISTICAL APPLICATIONS AND METHODS, v.29, no.1, pp.745 - 763
Journal Title
COMMUNICATIONS FOR STATISTICAL APPLICATIONS AND METHODS
Volume
29
Number
1
Start Page
745
End Page
763
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/42255
DOI
10.29220/CSAM.2022.29.1.745
ISSN
2287-7843
Abstract
Although various statistical methods have been developed to map time-dependent genetic factors, most identified genetic variants can explain only a small portion of the estimated genetic variation in longitudinal traits. Gene-gene and gene-time/environment interactions are known to be important putative sources of the missing heritability. However, mapping epistatic gene-gene interactions is extremely difficult due to the very large parameter spaces for models containing such interactions. In this paper, we develop a Gaussian process (GP) based nonparametric Bayesian variable selection method for longitudinal data. It maps multiple genetic markers without restricting to pairwise interactions. Rather than modeling each main and interaction term explicitly, the GP model measures the importance of each marker, regardless of whether it is mostly due to a main effect or some interaction effect(s), via an unspecified function. To improve the flexibility of the GP model, we propose a novel grid-based method for the within-subject dependence structure. The proposed method can accurately approximate complex covariance structures. The dimension of the covariance matrix depends only on the number of fixed grid points although each subject may have different numbers of measurements at different time points. The deviance information criterion (DIC) and the Bayesian predictive information criterion (BPIC) are proposed for selecting an optimal number of grid points. To efficiently draw posterior samples, we combine a hybrid Monte Carlo method with a partially collapsed Gibbs (PCG) sampler. We apply the proposed GP model to a mouse dataset on age-related body weight.
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Chung, Wonil
College of Natural Sciences (Department of Statistics and Actuarial Science)
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