Sagol School of Neuroscience and Department of Physiology and Pharmacology, Sackler Faculty of Medicine, Tel Aviv University, Tel Aviv, 6997801, Israel.
Commun Biol. 2022 May 31;5(1):520. doi: 10.1038/s42003-022-03450-5.
Accurate detection and quantification of spike transmission between neurons is essential for determining neural network mechanisms that govern cognitive functions. Using point process and conductance-based simulations, we found that existing methods for determining neuronal connectivity from spike times are highly affected by burst spiking activity, resulting in over- or underestimation of spike transmission. To improve performance, we developed a mathematical framework for decomposing the cross-correlation between two spike trains. We then devised a deconvolution-based algorithm for removing effects of second-order spike train statistics. Deconvolution removed the effect of burst spiking, improving the estimation of neuronal connectivity yielded by state-of-the-art methods. Application of deconvolution to neuronal data recorded from hippocampal region CA1 of freely-moving mice produced higher estimates of spike transmission, in particular when spike trains exhibited bursts. Deconvolution facilitates the precise construction of complex connectivity maps, opening the door to enhanced understanding of the neural mechanisms underlying brain function.
准确检测和量化神经元之间的尖峰传递对于确定控制认知功能的神经网络机制至关重要。使用点过程和基于电导率的模拟,我们发现,现有的从尖峰时间确定神经元连接的方法受到爆发尖峰活动的高度影响,导致尖峰传递的高估或低估。为了提高性能,我们开发了一种用于分解两个尖峰序列之间互相关的数学框架。然后,我们设计了一种基于反卷积的算法来去除二阶尖峰序列统计的影响。反卷积去除了爆发尖峰的影响,提高了最先进方法得出的神经元连接的估计。将反卷积应用于从自由活动小鼠海马区 CA1 记录的神经元数据,产生了更高的尖峰传递估计值,特别是当尖峰序列表现出爆发时。反卷积有助于精确构建复杂的连接图,为深入了解大脑功能的神经机制打开了大门。