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Identifying Functional Connectivity in Large-Scale Neural Ensemble Recordings: A Multiscale Data Mining Approach

机译:识别大型神经合奏录音中的功能连接:一种多尺度数据挖掘方法

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摘要

Identifying functional connectivity between neuronal elements is an essential first step toward understanding how the brain orchestrates information processing at the single-cell and population levels to carry out biological computations. This letter suggests a new approach to identify functional connectivity between neuronal elements from their simultaneously recorded spike trains. In particular, we identify clusters of neurons that exhibit functional interdependency over variable spatial and temporal patterns of interaction. We represent neurons as objects in a graph and connect them using arbitrarily defined similarity measures calculated across multiple timescales. We then use a probabilistic spectral clustering algorithm to cluster the neurons in the graph by solving a minimum graph cut optimization problem. Using point process theory to model population activity, we demonstrate the robustness of the approach in tracking a broad spectrum of neuronal interaction, from synchrony to rate co-modulation, by systematically varying the length of the firing history interval and the strength of the connecting synapses that govern the discharge pattern of each neuron. We also demonstrate how activity-dependent plasticity can be tracked and quantified in multiple network topologies built to mimic distinct behavioral contexts. We compare the performance to classical approaches to illustrate the substantial gain in performance.
机译:识别神经元之间的功能连通性是了解大脑如何在单细胞和群体水平上协调信息处理以进行生物学计算的重要第一步。这封信提出了一种新方法,可以从同时记录的峰值序列中识别神经元之间的功能连接。特别是,我们确定了在可变的时空相互作用模式上表现出功能相互依赖性的神经元簇。我们将神经元表示为图形中的对象,并使用跨多个时间尺度计算的任意定义的相似性度量将它们连接起来。然后,我们通过解决最小图割优化问题,使用概率谱聚类算法对图中的神经元进行聚类。使用点过程理论对种群活动进行建模,我们通过系统地改变发射历史间隔的长度和连接突触的强度,证明了该方法在跟踪广泛的神经元相互作用(从同步性到速率共调制)中的鲁棒性控制每个神经元的放电模式。我们还演示了如何在模拟不同行为环境的多种网络拓扑中跟踪并量化与活动有关的可塑性。我们将性能与经典方法进行比较,以说明性能的实质性提升。

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