论文标题
神经PC:神经动力学的因果功能连通性
Neuro-PC: Causal Functional Connectivity from Neural Dynamics
论文作者
论文摘要
功能连接组通过根据神经元的活性和相互作用捕获神经元之间的关系来扩展解剖连接组。当这些关系是因果关系时,功能连接组映射神经活动如何流动神经回路中的流动,并为推断功能神经途径(例如感觉运动途径)提供了可能性。尽管有各种信息方法用于对功能连接组的非因果估计,但表征因果功能连通性的方法 - 神经元时间序列之间的因果关系很少。在这项工作中,我们开发了神经PC算法,该算法是一种新的方法,用于推断多维时间序列(例如神经元记录)神经元之间的因果功能连通性。我们方法论的核心依赖于PC算法的新型适应,这是一种统计因果推断的最新方法,是神经动力学的多维时间序列。我们验证了该方法在网络基序上的性能,其神经元之间使用连续的人工神经元的神经元之间进行了各种相互作用。然后,我们考虑该方法在存在不同刺激的情况下从小鼠视觉皮层中获取因果关系连接组的应用。我们展示了映射的特征如何用于量化受不同刺激的神经反应之间的相似性。
Functional connectome extends the anatomical connectome by capturing the relations between neurons according to their activity and interactions. When these relations are causal, the functional connectome maps how neural activity flows within neural circuits and provides the possibility for inference of functional neural pathways, such as sensory-motor-behavioral pathways. While there exist various information approaches for non-causal estimations of the functional connectome, approaches that characterize the causal functional connectivity - the causal relationships between neuronal time series, are scarce. In this work, we develop the Neuro-PC algorithm which is a novel methodology for inferring the causal functional connectivity between neurons from multi-dimensional time series, such as neuronal recordings. The core of our methodology relies on a novel adaptation of the PC algorithm, a state-of-the-art method for statistical causal inference, to the multi-dimensional time-series of neural dynamics. We validate the performance of the method on network motifs with various interactions between their neurons simulated using continuous-time artificial network of neurons. We then consider the application of the method to obtain the causal functional connectome for recent multi-array electrophysiological recordings from the mouse visual cortex in the presence of different stimuli. We show how features of the mapping can be used for quantification of the similarities between neural responses subject to different stimuli.