Transient phenomena play a key role in coordinating brain activity at multiple scales, however,their underlying mechanisms remain largely unknown. A key challenge for neural data science is thus to characterize the network interactions at play during these events. Using the formalism of Structural Causal Models and their graphical representation, we investigate the theoretical and empirical properties of Information Theory based causal strength measures in the context of recurring spontaneous transient events. After showing the limitations of Transfer Entropy and Dynamic Causal Strength in such a setting, we introduce a novel measure, relative Dynamic Causal Strength, and provide theoretical and empirical support for its benefits. These methods are applied to simulated and experimentally recorded neural time series, and provide results in agreement with our current understanding of the underlying brain circuits.
翻译:短期现象在协调多种规模的大脑活动方面发挥着关键作用,但其基本机制仍然基本上不为人知,神经数据科学面临的一个关键挑战是在这些事件中如何确定网络互动的特点。我们利用结构性因果模型及其图形代表的形式主义,在反复自发的瞬间事件的背景下,调查基于信息理论的因果强度测量的理论和经验特性。在展示了这种环境中转移导体和动态因果力量的局限性之后,我们引入了一种新颖的尺度,相对的动态因果力量,并为它的好处提供理论和经验支持。这些方法被用于模拟和实验性记录的神经时间序列,并根据我们目前对基本脑电路的理解提供结果。