Ni Yang, Baladandayuthapani Veerabhadran, Vannucci Marina, Stingo Francesco C
Department of Statistics, Texas A&M University, College Station, USA.
Department of Biostatistics, University of Michigan, Ann Arbor, USA.
Stat Methods Appt. 2022;31(2):197-225. doi: 10.1007/s10260-021-00572-8. Epub 2021 May 27.
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.
图形模型是强大的工具,经常用于研究高通量生物医学数据集中的复杂依赖结构。它们允许从整体、系统层面看待各种生物过程,以便进行直观且严谨的理解和解释。在大型网络的背景下,贝叶斯方法特别适用,因为它鼓励图形的稀疏性,纳入先验信息,并且最重要的是考虑图结构中的不确定性。这些特性在样本量有限的应用中尤为重要,包括基因组学和成像研究。在本文中,我们回顾了几种最近开发的用于在非标准设置下分析大型网络的技术,包括但不限于,用于从多个相关亚组观察到的数据的多个图形、用于分析随协变量变化的网络的图形回归方法,以及其他复杂的抽样和结构设置。我们还通过癌症基因组学和神经成像中的例子来说明其中一些方法的实际效用。