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Partial directed coherence and neuronal connectivity inference

机译:部分定向一致性和神经元连通性推断

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摘要

After a brief review of the newly introduced concept of partial directed coherence (PDC), we discuss its role and limitations in disclosing the connectivity of networks comprising spiking neurons. Because of the inherent point- process nature of the signals involved, the problem must first be formulated in continuous time and subsequently rephrased in discrete time for computationally efficient processing purposes. This procedure, which we term "signal reconstruction" involves convolving the impulses associated to neuronal discharges with suitably denned "kernels" , i. e., superposed continuous time waveforms that are then discretized in time. We compare three such kernel candidates and show, via simulations of interconned neurons (leaky- and integrate-and-fire units), that kernel duration has substantial impact on the observed attainable confidence levels of connectivity inference according to network specifics involving its dynamics and its topology.
机译:在简要介绍了新近引入的部分定向相干(PDC)概念之后,我们讨论了其在揭示包含尖峰神经元的网络的连通性方面的作用和局限性。由于所涉及信号的固有点处理性质,必须首先在连续时间内提出问题,然后在离散时间内重新表述问题,以实现计算有效的处理目的。我们称其为“信号重建”的过程包括将神经元放电相关的脉冲与适当定义的“核”(即核)进行卷积。例如,叠加的连续时间波形,然后在时间上离散。我们比较了三个这样的内核候选对象,并通过对互联神经元(泄漏和集成并发射单元)的仿真显示,内核持续时间对观察到的可达到的连通性推断置信度水平具有实质性影响,具体取决于涉及网络动力学及其动态特性的网络细节。拓扑。

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