Biswas Rahul, Shlizerman Eli
Department of Statistics, University of Washington, Seattle, WA, United States.
Department of Applied Mathematics, Department of Electrical & Computer Engineering, University of Washington, Seattle, WA, United States.
Front Syst Neurosci. 2022 Mar 2;16:817962. doi: 10.3389/fnsys.2022.817962. eCollection 2022.
Representation of brain network interactions is fundamental to the translation of neural structure to brain function. As such, methodologies for mapping neural interactions into structural models, i.e., inference of functional connectome from neural recordings, are key for the study of brain networks. While multiple approaches have been proposed for functional connectomics based on statistical associations between neural activity, association does not necessarily incorporate causation. Additional approaches have been proposed to incorporate aspects of causality to turn functional connectomes into causal functional connectomes, however, these methodologies typically focus on specific aspects of causality. This warrants a systematic statistical framework for causal functional connectomics that defines the foundations of common aspects of causality. Such a framework can assist in contrasting existing approaches and to guide development of further causal methodologies. In this work, we develop such a statistical guide. In particular, we consolidate the notions of associations and representations of neural interaction, i.e., types of neural connectomics, and then describe causal modeling in the statistics literature. We particularly focus on the introduction of directed Markov graphical models as a framework through which we define the Directed Markov Property-an essential criterion for examining the causality of proposed functional connectomes. We demonstrate how based on these notions, a comparative study of several existing approaches for finding causal functional connectivity from neural activity can be conducted. We proceed by providing an outlook ahead regarding the additional properties that future approaches could include to thoroughly address causality.
脑网络相互作用的表征是将神经结构转化为脑功能的基础。因此,将神经相互作用映射到结构模型的方法,即从神经记录中推断功能连接组,是脑网络研究的关键。虽然已经提出了多种基于神经活动之间统计关联的功能连接组学方法,但关联并不一定包含因果关系。已经提出了其他方法来纳入因果关系的各个方面,将功能连接组转变为因果功能连接组,然而,这些方法通常侧重于因果关系的特定方面。这就需要一个用于因果功能连接组学的系统统计框架,来定义因果关系共同方面的基础。这样一个框架可以帮助对比现有方法,并指导进一步因果方法的开发。在这项工作中,我们开发了这样一个统计指南。具体而言,我们整合了神经相互作用的关联和表征概念,即神经连接组学的类型,然后描述了统计文献中的因果建模。我们特别关注引入有向马尔可夫图形模型作为一个框架,通过它我们定义了有向马尔可夫性质——检查所提出的功能连接组因果关系的一个基本标准。我们展示了基于这些概念,如何对几种从神经活动中寻找因果功能连接性的现有方法进行比较研究。我们接着展望了未来方法可能包括的其他属性,以全面解决因果关系问题。