TL;DR
BayesSUR is an R package enabling high-dimensional multivariate Bayesian variable and covariance selection in linear regression, facilitating analysis of complex biological data with correlated responses.
Contribution
This paper introduces BayesSUR, an R package that implements efficient Bayesian multivariate regression models with flexible priors for variable and covariance selection, tailored for high-dimensional biological data.
Findings
Demonstrates effectiveness on synthetic and real biological datasets.
Shows improved variable selection accuracy with hotspot and MRF priors.
Provides computationally efficient implementation in R and C++.
Abstract
In molecular biology, advances in high-throughput technologies have made it possible to study complex multivariate phenotypes and their simultaneous associations with high-dimensional genomic and other omics data, a problem that can be studied with high-dimensional multi-response regression, where the response variables are potentially highly correlated. To this purpose, we recently introduced several multivariate Bayesian variable and covariance selection models, e.g., Bayesian estimation methods for sparse seemingly unrelated regression for variable and covariance selection. Several variable selection priors have been implemented in this context, in particular the hotspot detection prior for latent variable inclusion indicators, which results in sparse variable selection for associations between predictors and multiple phenotypes. We also propose an alternative, which uses a Markov…
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