Bayesian network-based Mendelian randomization for variant prioritization and phenotypic causal inference.

IF 3.8 2区 生物学 Q2 GENETICS & HEREDITY Human Genetics Pub Date : 2024-10-01 Epub Date: 2024-02-21 DOI:10.1007/s00439-024-02640-x
Jianle Sun, Jie Zhou, Yuqiao Gong, Chongchen Pang, Yanran Ma, Jian Zhao, Zhangsheng Yu, Yue Zhang
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Abstract

Mendelian randomization is a powerful method for inferring causal relationships. However, obtaining suitable genetic instrumental variables is often challenging due to gene interaction, linkage, and pleiotropy. We propose Bayesian network-based Mendelian randomization (BNMR), a Bayesian causal learning and inference framework using individual-level data. BNMR employs the random graph forest, an ensemble Bayesian network structural learning process, to prioritize candidate genetic variants and select appropriate instrumental variables, and then obtains a pleiotropy-robust estimate by incorporating a shrinkage prior in the Bayesian framework. Simulations demonstrate BNMR can efficiently reduce the false-positive discoveries in variant selection, and outperforms existing MR methods in terms of accuracy and statistical power in effect estimation. With application to the UK Biobank, BNMR exhibits its capacity in handling modern genomic data, and reveals the causal relationships from hematological traits to blood pressures and psychiatric disorders. Its effectiveness in handling complex genetic structures and modern genomic data highlights the potential to facilitate real-world evidence studies, making it a promising tool for advancing our understanding of causal mechanisms.

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基于贝叶斯网络的孟德尔随机化,用于变体优先排序和表型因果推断。
孟德尔随机化是推断因果关系的有力方法。然而,由于基因相互作用、关联和多义性,获得合适的遗传工具变量往往具有挑战性。我们提出了基于贝叶斯网络的孟德尔随机化(BNMR),这是一种使用个体水平数据的贝叶斯因果学习和推断框架。BNMR 采用随机图森林(一种集合贝叶斯网络结构学习过程)对候选遗传变异进行优先排序,并选择适当的工具变量,然后通过在贝叶斯框架中加入收缩先验,获得多向性稳健估计。模拟结果表明,BNMR 能有效减少变异选择中的假阳性发现,在效应估计的准确性和统计能力方面优于现有的 MR 方法。通过在英国生物库中的应用,BNMR 展示了其处理现代基因组数据的能力,并揭示了从血液特征到血压和精神疾病的因果关系。BNMR 在处理复杂遗传结构和现代基因组数据方面的有效性凸显了它在促进真实世界证据研究方面的潜力,使其成为促进我们对因果机制的理解的一种有前途的工具。
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来源期刊
Human Genetics
Human Genetics 生物-遗传学
CiteScore
10.80
自引率
3.80%
发文量
94
审稿时长
1 months
期刊介绍: Human Genetics is a monthly journal publishing original and timely articles on all aspects of human genetics. The Journal particularly welcomes articles in the areas of Behavioral genetics, Bioinformatics, Cancer genetics and genomics, Cytogenetics, Developmental genetics, Disease association studies, Dysmorphology, ELSI (ethical, legal and social issues), Evolutionary genetics, Gene expression, Gene structure and organization, Genetics of complex diseases and epistatic interactions, Genetic epidemiology, Genome biology, Genome structure and organization, Genotype-phenotype relationships, Human Genomics, Immunogenetics and genomics, Linkage analysis and genetic mapping, Methods in Statistical Genetics, Molecular diagnostics, Mutation detection and analysis, Neurogenetics, Physical mapping and Population Genetics. Articles reporting animal models relevant to human biology or disease are also welcome. Preference will be given to those articles which address clinically relevant questions or which provide new insights into human biology. Unless reporting entirely novel and unusual aspects of a topic, clinical case reports, cytogenetic case reports, papers on descriptive population genetics, articles dealing with the frequency of polymorphisms or additional mutations within genes in which numerous lesions have already been described, and papers that report meta-analyses of previously published datasets will normally not be accepted. The Journal typically will not consider for publication manuscripts that report merely the isolation, map position, structure, and tissue expression profile of a gene of unknown function unless the gene is of particular interest or is a candidate gene involved in a human trait or disorder.
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