From point process observations to collective neural dynamics: Nonlinear Hawkes process GLMs, low-dimensional dynamics and coarse graining

Wilson Truccolo
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引用次数: 28

Abstract

This review presents a perspective on capturing collective dynamics in recorded neuronal ensembles based on multivariate point process models, inference of low-dimensional dynamics and coarse graining of spatiotemporal measurements. A general probabilistic framework for continuous time point processes reviewed, with an emphasis on multivariate nonlinear Hawkes processes with exogenous inputs. A point process generalized linear model (PP-GLM) framework for the estimation of discrete time multivariate nonlinear Hawkes processes is described. The approach is illustrated with the modeling of collective dynamics in neocortical neuronal ensembles recorded in human and non-human primates, and prediction of single-neuron spiking. A complementary approach to capture collective dynamics based on low-dimensional dynamics (“order parameters”) inferred via latent state-space models with point process observations is presented. The approach is illustrated by inferring and decoding low-dimensional dynamics in primate motor cortex during naturalistic reach and grasp movements. Finally, we briefly review hypothesis tests based on conditional inference and spatiotemporal coarse graining for assessing collective dynamics in recorded neuronal ensembles.

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从点过程观察到集体神经动力学:非线性Hawkes过程glm,低维动力学和粗粒化。
本文综述了基于多变量点过程模型、低维动态推断和时空测量粗粒度的记录神经元集合中捕获集体动力学的观点。回顾了连续时间点过程的一般概率框架,重点介绍了外生输入的多元非线性霍克斯过程。提出了离散时间多元非线性Hawkes过程估计的点过程广义线性模型(PP-GLM)框架。该方法通过在人类和非人类灵长类动物中记录的新皮层神经元集合的集体动力学建模以及单个神经元尖峰的预测来说明。提出了一种基于低维动态(“序参数”)的捕获集体动态的补充方法,该方法是通过具有点过程观察的潜在状态空间模型推断出来的。该方法通过推断和解码灵长类动物运动皮层在自然伸手和抓握运动中的低维动态来说明。最后,我们简要回顾了基于条件推理和时空粗粒度的假设检验,以评估记录的神经元集合中的集体动力学。
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来源期刊
Journal of Physiology-Paris
Journal of Physiology-Paris 医学-神经科学
CiteScore
2.02
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: Each issue of the Journal of Physiology (Paris) is specially commissioned, and provides an overview of one important area of neuroscience, delivering review and research papers from leading researchers in that field. The content will interest both those specializing in the experimental study of the brain and those working in interdisciplinary fields linking theory and biological data, including cellular neuroscience, mathematical analysis of brain function, computational neuroscience, biophysics of brain imaging and cognitive psychology.
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