Bayesian graphical models for modern biological applications

被引:16
|
作者
Ni, Yang [1 ]
Baladandayuthapani, Veerabhadran [2 ]
Vannucci, Marina [3 ]
Stingo, Francesco C. [4 ]
机构
[1] Texas A&M Univ, Dept Stat, College Stn, TX 77843 USA
[2] Univ Michigan, Dept Biostat, Ann Arbor, MI 48109 USA
[3] Rice Univ, Dept Stat, Houston, TX 77251 USA
[4] Univ Florence, Dept Stat, Comp Sci, Applicat G Parenti, Florence, Italy
来源
STATISTICAL METHODS AND APPLICATIONS | 2022年 / 31卷 / 02期
基金
美国国家科学基金会;
关键词
Graphical models; Bayesian methods; Complex data; Genomics; Neuroimaging; INVERSE COVARIANCE ESTIMATION; MARKOV EQUIVALENCE CLASSES; VARIABLE-SELECTION; STOCHASTIC SEARCH; INFERENCE; REGRESSION; NETWORKS; EXPRESSION; CONNECTIVITY; LIKELIHOOD;
D O I
10.1007/s10260-021-00572-8
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Graphical models are powerful tools that are regularly used to investigate complex dependence structures in high-throughput biomedical datasets. They allow for holistic, systems-level view of the various biological processes, for intuitive and rigorous understanding and interpretations. In the context of large networks, Bayesian approaches are particularly suitable because it encourages sparsity of the graphs, incorporate prior information, and most importantly account for uncertainty in the graph structure. These features are particularly important in applications with limited sample size, including genomics and imaging studies. In this paper, we review several recently developed techniques for the analysis of large networks under non-standard settings, including but not limited to, multiple graphs for data observed from multiple related subgroups, graphical regression approaches used for the analysis of networks that change with covariates, and other complex sampling and structural settings. We also illustrate the practical utility of some of these methods using examples in cancer genomics and neuroimaging.
引用
收藏
页码:197 / 225
页数:29
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