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Independent Component Analysis for Fully Automated Multi-Electrode Array Spike Sorting

机译:全自动多电极阵列穗分选的独立成分分析

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摘要

In neural electrophysiology, spike sorting allows to separate different neurons from extracellularly measured recordings. It is an essential processing step in order to understand neural activity and it is an unsupervised problem in nature, since no ground truth information is available. There are several available spike sorting packages, but many of them require a manual intervention to curate the results, which makes the process time consuming and hard to reproduce. Here, we focus on high-density Multi-Electrode Array (MEA) recordings and we present a fully automated pipeline based on Independent Component Analysis (ICA). While ICA has been previously investigated for spike sorting, it has never been compared with fully automated state-of-the-art algorithms. We use realistic simulated datasets to compare the spike sorting performance in terms of complexity, signal-to-noise ratio, and recording duration. We show that an ICA-based fully automated spike sorting approach can be a viable alternative approach due to its precision and robustness, but it needs to be optimized for time constraints and requires sufficient density of electrodes to cover active neurons in the proximity of the MEA.
机译:在神经电生理学中,尖峰分选允许从细胞外测量的记录中分离出不同的神经元。为了了解神经活动,这是必不可少的处理步骤,并且由于没有可用的地面真相信息,因此它也是自然界中不受监督的问题。有几种可用的峰值分拣软件包,但是其中许多都需要人工干预才能确定结果,这使过程既耗时又难以复制。在这里,我们重点介绍高密度多电极阵列(MEA)记录,并提出了基于独立成分分析(ICA)的全自动管道。尽管以前已经对ICA进行了尖峰分选研究,但从未将ICA与全自动的最新算法相提并论。我们使用逼真的模拟数据集来比较尖峰排序性能的复杂性,信噪比和记录持续时间。我们显示基于ICA的全自动尖峰分选方法由于其精度和鲁棒性可能是一种可行的替代方法,但需要针对时间限制进行​​优化,并且需要足够的电极密度以覆盖MEA附近的活动神经元。

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