论文标题

一个信息理论框架,用于测量神经尖峰火车之间的动态相互作用

An information-theoretic framework to measure the dynamic interaction between neural spike trains

论文作者

Mijatovic, Gorana, Antonacci, Yuri, Loncar-Turukalo, Tatjana, Minati, Ludovico, Faes, Luca

论文摘要

了解来自多个神经元单元的尖峰火车同时记录之间的相互作用模式是神经科学的关键主题。但是,尚未建立评估这些相互作用的最佳方法,因为现有方法要么不考虑尖峰列车的固有点过程性质,要么基于参数假设,如果不满足,可能会导致错误推断。这项工作提出了一个基于信息动力学领域的框架,用于对峰值列车对之间的无向(对称)和定向(因果)相互作用的无模型,连续的时间估计。该框架将两个点过程x和y之间动态交换的总体信息分解为X和Y历史之间的动态相互信息(DMI)的总和,以及沿方向x-> y和y-> x的传递熵(TE)。我们以最新的工作为基础,该工作在连续的时间内得出了TE的理论表达和一致的估计器,我们开发了通过最近的邻居统计数据在框架中有效估算所有措施的算法。这些算法在独立和耦合的尖峰列车过程的模拟中得到了验证,显示了DMI和TE在评估无方向性和定向相互作用时的准确性,即使是针对弱耦合和短暂的实现,并证明了连续时间估计器在离散时间方面的优越性。然后,在录音的真实数据方案中说明了框架的有用性,从气管神经元的自发生长培养物的录音制剂中,我们展示了DMI和TE的能力,可以通过神经元文化的成熟来确定未指向和定向尖峰培训的网络如何改变其拓扑。

Understanding the interaction patterns among simultaneous recordings of spike trains from multiple neuronal units is a key topic in neuroscience. However, an optimal approach of assessing these interactions has not been established, as existing methods either do not consider the inherent point process nature of spike trains or are based on parametric assumptions that may lead to wrong inferences if not met. This work presents a framework, grounded in the field of information dynamics, for the model-free, continuous-time estimation of both undirected (symmetric) and directed (causal) interactions between pairs of spike trains. The framework decomposes the overall information exchanged dynamically between two point processes X and Y as the sum of the dynamic mutual information (dMI) between the histories of X and Y, plus the transfer entropy (TE) along the directions X->Y and Y->X. Building on recent work which derived theoretical expressions and consistent estimators for the TE in continuous time, we develop algorithms for estimating efficiently all measures in our framework through nearest neighbor statistics. These algorithms are validated in simulations of independent and coupled spike train processes, showing the accuracy of dMI and TE in the assessment of undirected and directed interactions even for weakly coupled and short realizations, and proving the superiority of the continuous-time estimator over the discrete-time method. Then, the usefulness of the framework is illustrated in a real data scenario of recordings from in-vitro preparations of spontaneously-growing cultures of cortical neurons, where we show the ability of dMI and TE to identify how the networks of undirected and directed spike train interactions change their topology through maturation of the neuronal cultures.

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