Department of Physics and Astronomy, Stony Brook University, Stony Brook, New York 11794, USA.
Department of Neurobiology and Behavior, Stony Brook University, Stony Brook, New York 11794, USA.
Phys Rev E. 2024 Apr;109(4-1):044404. doi: 10.1103/PhysRevE.109.044404.
Statistically inferred neuronal connections from observed spike train data are often skewed from ground truth by factors such as model mismatch, unobserved neurons, and limited data. Spike train covariances, sometimes referred to as "functional connections," are often used as a proxy for the connections between pairs of neurons, but reflect statistical relationships between neurons, not anatomical connections. Moreover, covariances are not causal: spiking activity is correlated in both the past and the future, whereas neurons respond only to synaptic inputs in the past. Connections inferred by maximum likelihood inference, however, can be constrained to be causal. However, we show in this work that the inferred connections in spontaneously active networks modeled by stochastic leaky integrate-and-fire networks strongly correlate with the covariances between neurons, and may reflect noncausal relationships, when many neurons are unobserved or when neurons are weakly coupled. This phenomenon occurs across different network structures, including random networks and balanced excitatory-inhibitory networks. We use a combination of simulations and a mean-field analysis with fluctuation corrections to elucidate the relationships between spike train covariances, inferred synaptic filters, and ground-truth connections in partially observed networks.
从观测的尖峰序列数据中统计推断出的神经元连接,往往由于模型失配、未观测到的神经元和有限的数据等因素而与真实情况存在偏差。尖峰序列协方差(有时也称为“功能连接”)常被用作神经元对之间连接的代理,但它反映的是神经元之间的统计关系,而不是解剖学连接。此外,协方差不是因果关系:神经元的发放活动在过去和未来都存在相关性,而神经元仅对过去的突触输入作出反应。然而,通过最大似然推断得出的连接可以被约束为因果关系。然而,在这项工作中,我们表明,在由随机泄露积分和放电神经元模型模拟的自发活动网络中,通过最大似然推断得出的连接与神经元之间的协方差强烈相关,并且当许多神经元未被观测到时,或者当神经元之间耦合较弱时,这些连接可能反映了非因果关系。这种现象出现在不同的网络结构中,包括随机网络和平衡的兴奋性抑制性网络。我们使用模拟和带有波动校正的平均场分析的组合,来阐明部分观测网络中尖峰序列协方差、推断出的突触滤波器和真实连接之间的关系。