Consistent and Scalable Bayesian Joint Variable and Graph Selection for Disease Diagnosis Leveraging Functional Brain Network

IF 4.9 2区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Bayesian Analysis Pub Date : 2022-03-14 DOI:10.1214/23-ba1376
Xuan Cao, Kyoungjae Lee
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Abstract

We consider the joint inference of regression coefficients and the inverse covariance matrix for covariates in high-dimensional probit regression, where the predictors are both relevant to the binary response and functionally related to one another. A hierarchical model with spike and slab priors over regression coefficients and the elements in the inverse covariance matrix is employed to simultaneously perform variable and graph selection. We establish joint selection consistency for both the variable and the underlying graph when the dimension of predictors is allowed to grow much larger than the sample size, which is the first theoretical result in the Bayesian literature. A scalable Gibbs sampler is derived that performs better in high-dimensional simulation studies compared with other state-of-art methods. We illustrate the practical impact and utilities of the proposed method via a functional MRI dataset, where both the regions of interest with altered functional activities and the underlying functional brain network are inferred and integrated together for stratifying disease risk.
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基于功能脑网络的疾病诊断一致可扩展贝叶斯联合变量和图选择
我们考虑了高维probit回归中回归系数和协变量的逆协方差矩阵的联合推断,其中预测因子既与二元响应相关,又在功能上相互关联。采用具有回归系数上的尖峰和板先验以及逆协方差矩阵中的元素的分层模型来同时执行变量和图的选择。当预测因子的维数增长远大于样本量时,我们为变量和基础图建立了联合选择一致性,这是贝叶斯文献中的第一个理论结果。导出了一种可扩展的吉布斯采样器,与其他现有技术相比,该采样器在高维模拟研究中表现更好。我们通过功能性MRI数据集说明了所提出方法的实际影响和实用性,其中推断出功能活动改变的感兴趣区域和潜在的功能性脑网络,并将其整合在一起,以对疾病风险进行分层。
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来源期刊
Bayesian Analysis
Bayesian Analysis 数学-数学跨学科应用
CiteScore
6.50
自引率
13.60%
发文量
59
审稿时长
>12 weeks
期刊介绍: Bayesian Analysis is an electronic journal of the International Society for Bayesian Analysis. It seeks to publish a wide range of articles that demonstrate or discuss Bayesian methods in some theoretical or applied context. The journal welcomes submissions involving presentation of new computational and statistical methods; critical reviews and discussions of existing approaches; historical perspectives; description of important scientific or policy application areas; case studies; and methods for experimental design, data collection, data sharing, or data mining. Evaluation of submissions is based on importance of content and effectiveness of communication. Discussion papers are typically chosen by the Editor in Chief, or suggested by an Editor, among the regular submissions. In addition, the Journal encourages individual authors to submit manuscripts for consideration as discussion papers.
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