MR.RGM: an R package for fitting Bayesian multivariate bidirectional Mendelian randomization networks.

Bitan Sarkar, Yang Ni
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Abstract

Motivation: Mendelian randomization (MR) infers causal relationships between exposures and outcomes using genetic variants as instrumental variables. Typically, MR considers only a pair of exposure and outcome at a time, limiting its capability of capturing the entire causal network. We overcome this limitation by developing MR.RGM (Mendelian randomization via reciprocal graphical model), a fast R-package that implements the Bayesian reciprocal graphical model and enables practitioners to construct holistic causal networks with possibly cyclic/reciprocal causation and proper uncertainty quantifications, offering a comprehensive understanding of complex biological systems and their interconnections.

Results: We developed MR.RGM, an open-source R package that applies bidirectional MR using a network-based strategy, enabling the exploration of causal relationships among multiple variables in complex biological systems. MR.RGM holds the promise of unveiling intricate interactions and advancing our understanding of genetic networks, disease risks, and phenotypic complexities.

Availability and implementation: MR.RGM is available at CRAN (https://CRAN.R-project.org/package=MR.RGM, DOI: 10.32614/CRAN.package.MR.RGM) and https://github.com/bitansa/MR.RGM.

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一个拟合贝叶斯多元双向孟德尔随机化网络的R包。
动机:孟德尔随机化(MR)使用遗传变异作为工具变量来推断暴露和结果之间的因果关系。通常,MR一次只考虑一对暴露和结果,限制了它捕捉整个因果网络的能力。我们通过开发“MR.RGM”(Sarkar和Ni, 2024)(孟德尔随机化通过互反图形模型)克服了这一限制,这是一个实现贝叶斯互反图形模型的快速r包(Ni等人,2018),使从业者能够构建具有可能循环/互反因果关系和适当不确定性量化的整体因果网络,提供对复杂生物系统及其相互联系的全面理解。结果:我们开发了“MR. rgm”,这是一个开源的R软件包,使用基于网络的策略应用双向MR,可以探索复杂生物系统中多个变量之间的因果关系。MR.RGM有望揭示复杂的相互作用,促进我们对遗传网络、疾病风险和表型复杂性的理解。可获得性:“MR.RGM”可在CRAN (https://CRAN.R-project.org/package=MR.RGM, DOI: 10.32614/ crane .package.MR.RGM)和https://github.com/bitansa/MR.RGM.Contact: yni@stat.tamu.edu.Supplementary获取。信息:补充数据可在Bioinformatics在线获取。
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