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Neuron Activity Extraction and Network Analysis on Mouse Brain Videos

机译:鼠标脑视频的神经元活动提取和网络分析

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Modern brain mapping techniques are producing increasingly large datasets of anatomical or functional connection patterns. Recently, it became possible to record detailed live imaging videos of mammal brain while the subject is engaging routine activity. We analyze a dataset of videos recorded from ten mice to describe how to detect neurons, extract neuron signals, map correlation of neuron signals to mice activity, detect the network topology of active neurons, and analyze network topology characteristics. We propose neuron position alignment to compensate the distortion and movement of cerebral cortex in live mouse brain and the background luminance compensation to extract and model neuron activity. To find out the network topology as an undirected graph model, a cross-correlation based method is proposed and used for analysis. Afterwards, we did preliminary analysis on network topologies. The significance of this paper is on how to extract neuron activities from live mouse brain imaging videos and a network analysis method to analyze topology that can potentially provide insight on how neurons are actively connected under stimulus, rather than analyzing static neural networks.
机译:现代的大脑映射技术正在产生越来越大的解剖学或功能性连接模式数据集。最近,当受试者进行常规活动时,可以记录哺乳动物大脑的详细实时成像视频。我们分析了从十只小鼠录制的视频数据集,以描述如何检测神经元,提取神经元信号,将神经元信号的相关性映射到小鼠活动,检测活动神经元的网络拓扑以及分析网络拓扑特征。我们提出神经元位置对齐以补偿活小鼠大脑中大脑皮层的变形和运动,并提出背景亮度补偿以提取和建模神经元活动。为了找出作为无向图模型的网络拓扑,提出了一种基于互相关的方法并用于分析。之后,我们对网络拓扑进行了初步分析。本文的意义在于如何从活的小鼠大脑成像视频中提取神经元活动,以及一种网络分析方法来分析拓扑结构,这种拓扑结构可以潜在地提供关于刺激下神经元如何主动连接的见解,而不是分析静态神经网络。

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