Recent advancements in miniaturized fluorescence microscopy have made it possible to investigate neuronal responses to external stimuli in awake behaving animals through the analysis of intra-cellular calcium signals. An on-going challenge is deconvolving the temporal signals to extract the spike trains from the noisy calcium signals' time-series. In this manuscript, we propose a nested Bayesian finite mixture specification that allows the estimation of spiking activity and, simultaneously, reconstructing the distributions of the calcium transient spikes' amplitudes under different experimental conditions. The proposed model leverages two nested layers of random discrete mixture priors to borrow information between experiments and discover similarities in the distributional patterns of neuronal responses to different stimuli. Furthermore, the spikes' intensity values are also clustered within and between experimental conditions to determine the existence of common (recurring) response amplitudes. Simulation studies and the analysis of a data set from the Allen Brain Observatory show the effectiveness of the method in clustering and detecting neuronal activities.
翻译:最近微缩的荧光微粒显微分析的进展使得通过分析细胞内钙信号,能够调查对清醒行为动物的外刺激的神经反应。一个持续的挑战涉及从噪音钙信号的时间序列中提取加注列的时间信号。在这个手稿中,我们提议一个嵌巢的贝叶斯定量混合物规格,以便能够估计浮动活动,同时在不同的实验条件下重建瞬间钙尖峰振荡的分布。拟议的模型利用随机离散混合物的两层嵌巢层,在试验之间借用信息,发现神经神经反应分布模式对不同石浆的相似性。此外,峰值还在试验条件下和试验条件之间聚集,以确定是否存在常见(重复)反应振动。模拟研究以及分析Allen脑观测站的数据集,显示该方法在聚合和检测神经活动方面的有效性。