CRAN/E | BayesQVGEL

BayesQVGEL

Bayesian Quantile Variable Selection for G - E in Longitudinal Studies

Installation

About

In longitudinal studies, the same subjects are measured repeatedly over time, leading to correlations among the repeated measurements. Properly accounting for the intra-cluster correlations in the presence of data heterogeneity and long tailed distributions of the disease phenotype is challenging, especially in the context of high dimensional regressions. Here, we aim at developing novel Bayesian regularized quantile mixed effect models to tackle these challenges. We have proposed a Bayesian variable selection in the mixed effect models for longitudinal genomics studies. To dissect important gene - environment interactions, our model can simultaneously identify important main and interaction effects on the individual and group level, which have been facilitated by imposing the spike- and -slab priors through Laplacian shrinkage in the Bayesian quantile hierarchical models. The within - subject dependence among data can be accommodated by incorporating the random effects. An efficient Gibbs sampler has been developed to facilitate fast computation. The Markov chain Monte Carlo algorithms of the proposed and alternative methods are efficiently implemented in 'C++'.

github.com/kunfa/BayesQVGEL

Key Metrics

Version 0.1.1
R ≥ 4.2.0
Published 2023-04-18 368 days ago
Needs compilation? yes
License GPL-2
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Maintainer

Maintainer

Kun Fan

kfan@ksu.edu

Authors

Kun Fan

aut / cre

Cen Wu

aut

Material

Reference manual
Package source

macOS

r-devel

arm64

r-release

arm64

r-oldrel

arm64

r-devel

x86_64

r-release

x86_64

r-oldrel

x86_64

Windows

r-develnot available

x86_64

r-release

x86_64

r-oldrelnot available

x86_64

Old Sources

BayesQVGEL archive

Depends

R ≥ 4.2.0

Imports

Rcpp

LinkingTo

Rcpp
RcppArmadillo