Learning Causal Biological Networks With the Principle of Mendelian Randomization

Badsha, Md. Bahadur and Fu, Audrey Qiuyan (2019) Learning Causal Biological Networks With the Principle of Mendelian Randomization. Frontiers in Genetics, 10. ISSN 1664-8021

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Abstract

Although large amounts of genomic data are available, it remains a challenge to reliably infer causal (i. e., regulatory) relationships among molecular phenotypes (such as gene expression), especially when multiple phenotypes are involved. We extend the interpretation of the Principle of Mendelian randomization (PMR) and present MRPC, a novel machine learning algorithm that incorporates the PMR in the PC algorithm, a classical algorithm for learning causal graphs in computer science. MRPC learns a causal biological network efficiently and robustly from integrating individual-level genotype and molecular phenotype data, in which directed edges indicate causal directions. We demonstrate through simulation that MRPC outperforms several popular general-purpose network inference methods and PMR-based methods. We apply MRPC to distinguish direct and indirect targets among multiple genes associated with expression quantitative trait loci. Our method is implemented in the R package MRPC, available on CRAN (https://cran.r-project.org/web/packages/MRPC/index.html).

Item Type: Article
Subjects: Digital Open Archives > Medical Science
Depositing User: Unnamed user with email support@digiopenarchives.com
Date Deposited: 07 Feb 2023 10:37
Last Modified: 24 May 2024 06:20
URI: http://geographical.openuniversityarchive.com/id/eprint/260

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