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Applicability of independent component analysis on high-density microelectrode array recordings

机译:独立成分分析在高密度微电极阵列记录中的适用性

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摘要

Emerging complementary metal oxide semiconductor (CMOS)-based, high-density microelectrode array (HD-MEA) devices provide high spatial resolution at subcellular level and a large number of readout channels. These devices allow for simultaneous recording of extracellular activity of a large number of neurons with every neuron being detected by multiple electrodes. To analyze the recorded signals, spiking events have to be assigned to individual neurons, a process referred to as “spike sorting.” For a set of observed signals, which constitute a linear mixture of a set of source signals, independent component (IC) analysis (ICA) can be used to demix blindly the data and extract the individual source signals. This technique offers great potential to alleviate the problem of spike sorting in HD-MEA recordings, as it represents an unsupervised method to separate the neuronal sources. The separated sources or ICs then constitute estimates of single-neuron signals, and threshold detection on the ICs yields the sorted spike times. However, it is unknown to what extent extracellular neuronal recordings meet the requirements of ICA. In this paper, we evaluate the applicability of ICA to spike sorting of HD-MEA recordings. The analysis of extracellular neuronal signals, recorded at high spatiotemporal resolution, reveals that the recorded data cannot be modeled as a purely linear mixture. As a consequence, ICA fails to separate completely the neuronal signals and cannot be used as a stand-alone method for spike sorting in HD-MEA recordings. We assessed the demixing performance of ICA using simulated data sets and found that the performance strongly depends on neuronal density and spike amplitude. Furthermore, we show how postprocessing techniques can be used to overcome the most severe limitations of ICA. In combination with these postprocessing techniques, ICA represents a viable method to facilitate rapid spike sorting of multi-dimensional neuronal recordings.
机译:新兴的基于互补金属氧化物半导体(CMOS)的高密度微电极阵列(HD-MEA)器件可在亚细胞水平上提供高空间分辨率,并提供大量读取通道。这些设备允许同时记录大量神经元的细胞外活性,每个神经元都由多个电极检测。为了分析记录的信号,必须将尖峰事件分配给单个神经元,这一过程称为“尖峰排序”。对于构成一组源信号的线性混合的一组观察信号,可以使用独立分量(IC)分析(ICA)盲目地对数据进行解混并提取各个源信号。该技术为缓解HD-MEA记录中的尖峰排序问题提供了巨大的潜力,因为它代表了一种分离神经源的无监督方法。然后,分离的源或IC构成单神经元信号的估计值,并且IC上的阈值检测会产生排序的尖峰时间。但是,尚不清楚细胞外神经元录音在多大程度上满足ICA的要求。在本文中,我们评估了ICA在HD-MEA记录的尖峰分类中的适用性。对以高时空分辨率记录的细胞外神经元信号的分析显示,记录的数据无法建模为纯线性混合物。结果,ICA无法完全分离神经元信号,因此不能用作HD-MEA记录中尖峰分类的独立方法。我们使用模拟数据集评估了ICA的解混性能,发现该性能很大程度上取决于神经元密度和尖峰幅度。此外,我们展示了如何使用后处理技术来克服ICA的最严格限制。结合这些后处理技术,ICA代表了一种可行的方法,可以促进多维神经元记录的快速峰值分类。

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