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Multineuronal activity patterns identify selective synaptic connections under realistic experimental constraints

机译:多神经元活动模式确定实际实验约束下的选择性突触连接。

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摘要

Structured multineuronal activity patterns within local neocortical circuitry are strongly linked to sensory input, motor output, and behavioral choice. These reliable patterns of pairwise lagged firing are the consequence of connectivity since they are not present in rate-matched but unconnected Poisson nulls. It is important to relate multineuronal patterns to their synaptic underpinnings, but it is unclear how effectively statistical dependencies in spiking between neurons identify causal synaptic connections. To assess the feasibility of mapping function onto structure we used a network model that showed a diversity of multineuronal activity patterns and replicated experimental constraints on data acquisition. Using an iterative Bayesian inference algorithm, we detected a select subset of monosynaptic connections substantially more precisely than correlation-based inference, a common alternative approach. We found that precise inference of synaptic connections improved with increasing numbers of diverse multineuronal activity patterns in contrast to increased observations of a single pattern. Surprisingly, neuronal spiking was most effective and precise at revealing causal synaptic connectivity when the lags considered by the iterative Bayesian algorithm encompassed the timescale of synaptic conductance and integration (∼10 ms), rather than synaptic transmission time (∼2 ms), highlighting the importance of synaptic integration in driving postsynaptic spiking. Last, strong synaptic connections were detected preferentially, underscoring their special importance in cortical computation. Even after simulating experimental constraints, top down approaches to cortical connectivity, from function to structure, identify synaptic connections underlying multineuronal activity. These select connections are closely tied to cortical processing.
机译:局部新皮层电路内的结构化多神经元活动模式与感觉输入,运动输出和行为选择密切相关。这些成对滞后触发的可靠模式是连接的结果,因为它们不存在于速率匹配但未连接的泊松零点中。重要的是将多神经元模式与其突触基础相关联,但是尚不清楚神经元之间的尖峰统计依赖性如何有效地识别因果突触联系。为了评估将功能映射到结构上的可行性,我们使用了一个网络模型,该模型显示出多种多样的神经活动模式,并在数据采集中重复了实验约束。使用迭代贝叶斯推理算法,我们检测单突触连接的选定子集比基于相关性的推理(一种常见的替代方法)要精确得多。我们发现,与增加的单个模式观察相反,随着多种多神经元活动模式数量的增加,对突触连接的精确推论得到改善。出人意料的是,当迭代贝叶斯算法所考虑的滞后包括突触传导和整合的时间尺度(〜10 ms)而不是突触传递时间(〜2 ms)时,神经元尖峰在揭示因果突触连通性方面最为有效和精确。突触整合在驱动突触后突触中的重要性。最后,优先检测到强的突触连接,强调它们在皮层计算中的特殊重要性。即使在模拟实验约束之后,从功能到结构的自上而下的皮质连接方法也可以识别出多神经活动背后的突触连接。这些选择的连接与皮质处理紧密相关。

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