Bayesian mixed model inference for genetic association under related samples with brain network phenotype.

IF 1.8 3区 数学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Biostatistics Pub Date : 2024-03-17 DOI:10.1093/biostatistics/kxae008
Xinyuan Tian, Yiting Wang, Selena Wang, Yi Zhao, Yize Zhao
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Abstract

Genetic association studies for brain connectivity phenotypes have gained prominence due to advances in noninvasive imaging techniques and quantitative genetics. Brain connectivity traits, characterized by network configurations and unique biological structures, present distinct challenges compared to other quantitative phenotypes. Furthermore, the presence of sample relatedness in the most imaging genetics studies limits the feasibility of adopting existing network-response modeling. In this article, we fill this gap by proposing a Bayesian network-response mixed-effect model that considers a network-variate phenotype and incorporates population structures including pedigrees and unknown sample relatedness. To accommodate the inherent topological architecture associated with the genetic contributions to the phenotype, we model the effect components via a set of effect network configurations and impose an inter-network sparsity and intra-network shrinkage to dissect the phenotypic network configurations affected by the risk genetic variant. A Markov chain Monte Carlo (MCMC) algorithm is further developed to facilitate uncertainty quantification. We evaluate the performance of our model through extensive simulations. By further applying the method to study, the genetic bases for brain structural connectivity using data from the Human Connectome Project with excessive family structures, we obtain plausible and interpretable results. Beyond brain connectivity genetic studies, our proposed model also provides a general linear mixed-effect regression framework for network-variate outcomes.

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贝叶斯混合模型推断脑网络表型相关样本下的遗传关联。
由于无创成像技术和定量遗传学的进步,针对大脑连通性表型的遗传关联研究日益突出。与其他定量表型相比,以网络构型和独特生物结构为特征的大脑连接特征面临着独特的挑战。此外,在大多数成像遗传学研究中,样本相关性的存在限制了采用现有网络反应模型的可行性。在本文中,我们提出了一种贝叶斯网络反应混合效应模型,该模型考虑了网络变量表型,并纳入了包括血统和未知样本相关性在内的种群结构,从而填补了这一空白。为了适应与表型遗传贡献相关的固有拓扑结构,我们通过一组效应网络配置对效应成分进行建模,并施加网络间稀疏性和网络内收缩性,以剖析受风险遗传变异影响的表型网络配置。我们还进一步开发了马尔科夫链蒙特卡罗(MCMC)算法,以促进不确定性量化。我们通过大量模拟来评估模型的性能。通过进一步应用该方法,我们利用人类连接组项目的数据研究了大脑结构连通性的遗传基础,并获得了可信且可解释的结果。除了大脑连接性遗传研究之外,我们提出的模型还为网络变量结果提供了一般线性混合效应回归框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biostatistics
Biostatistics 生物-数学与计算生物学
CiteScore
5.10
自引率
4.80%
发文量
45
审稿时长
6-12 weeks
期刊介绍: Among the important scientific developments of the 20th century is the explosive growth in statistical reasoning and methods for application to studies of human health. Examples include developments in likelihood methods for inference, epidemiologic statistics, clinical trials, survival analysis, and statistical genetics. Substantive problems in public health and biomedical research have fueled the development of statistical methods, which in turn have improved our ability to draw valid inferences from data. The objective of Biostatistics is to advance statistical science and its application to problems of human health and disease, with the ultimate goal of advancing the public''s health.
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