Asahina Takahiro, Shimba Kenta, Kotani Kiyoshi, Jimbo Yasuhiko
IEEE Trans Biomed Eng. 2022 Apr;69(4):1524-1532. doi: 10.1109/TBME.2021.3123958. Epub 2022 Mar 18.
Cell assemblies are difficult to observe because they consist of many neurons. We aimed to observe cell assemblies based on biological statistics, such as synaptic connectivity. We developed an estimation method to estimate the activity and synaptic connectivity of cell assemblies from spike trains using mathematical models of individual neurons and cell assemblies. Synaptic transmissions were averaged to generate postsynaptic currents with the same timing and waveform but different amplitudes, as the number of presynaptic neurons was large. We estimated the average synaptic transmission and synaptic connectivity from active cell assemblies based on the stochastic prediction of membrane potentials and verified the estimation ability of the average synaptic transmission and synaptic connectivity using the proposed method on simulated neural activity. Different cell assembly activities evoked by electrical stimuli were correctly sorted into various clusters in experiments using rat cortical neurons cultured on microelectrode arrays. We observed multiple cell assemblies from the spontaneous activity of rat cortical networks on microelectrode arrays, based on the synaptic connectivity patterns estimated by the proposed method. The proposed method was superior to the conventional method for detecting the activity of multiple cell assemblies. Using the proposed method, it is possible to observe multiple cell assemblies based on the biological basis of synaptic connectivity. In summary, we report a novel method to observe cell assemblies from spike train recordings based on the biological basis of synaptic connectivity, rather than merely relying on a statistical method.
细胞集合很难被观察到,因为它们由许多神经元组成。我们旨在基于生物学统计数据(如突触连接性)来观察细胞集合。我们开发了一种估计方法,利用单个神经元和细胞集合的数学模型,从尖峰序列估计细胞集合的活动和突触连接性。由于突触前神经元数量众多,突触传递被平均以产生具有相同时间和波形但不同幅度的突触后电流。我们基于膜电位的随机预测,从活跃的细胞集合中估计平均突触传递和突触连接性,并使用所提出的方法在模拟神经活动上验证了平均突触传递和突触连接性的估计能力。在使用微电极阵列培养的大鼠皮质神经元进行的实验中,由电刺激诱发的不同细胞集合活动被正确地分类到各个簇中。基于所提出的方法估计的突触连接模式,我们从微电极阵列上大鼠皮质网络的自发活动中观察到了多个细胞集合。所提出的方法在检测多个细胞集合的活动方面优于传统方法。使用所提出的方法,可以基于突触连接性的生物学基础观察多个细胞集合。总之,我们报告了一种基于突触连接性的生物学基础,而不仅仅依赖统计方法,从尖峰序列记录中观察细胞集合的新方法。