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Sorting Overlapping Spike Waveforms from Electrode and Tetrode Recordings

机译:从电极和四极电极记录中排序重叠的峰值波形

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摘要

One of the outstanding problems in the sorting of neuronal spike trains is the resolution of overlapping spikes. Resolving these spikes can significantly improve a range of analyses, such as response variability, correlation, and latency. In this paper, we describe a partially automated method that is capable of resolving overlapping spikes. After constructing template waveforms for well-isolated and distinct single units, we generated pair-wise combinations of those templates at all possible time shifts from each other. Subsequently, overlapping waveforms were identified by cluster analysis, and then assigned to their respective single-unit combinations. We examined the performance of this method using simulated data from an earlier study, and found that we were able to resolve an average of 83% of the overlapping waveforms across various signal-to-noise ratios, an improvement of approximately 32% over the results reported in the earlier study. When applied to additional simulated data sets generated from single-electrode and tetrode recordings, we were able to resolve 91% of the overlapping waveforms with a false positive rate of 0.19% for single-electrode data, and 95% of the overlapping waveforms with a false positive rate of 0.27% for tetrode data. We also applied our method to electrode and tetrode data recorded from the primary visual cortex, and the results obtained for these datasets suggest that our method provides an efficient means of sorting overlapping waveforms. This method can easily be added as an extra step to commonly used spike sorting methods, such as KlustaKwik and MClust software packages, and can be applied to datasets that have already been sorted using these methods.
机译:神经元峰序列的分类中的突出问题之一是重叠峰的分辨率。解决这些尖峰可以显着改善分析范围,例如响应变异性,相关性和等待时间。在本文中,我们描述了一种能够解决重叠峰的部分自动化方法。在为完全隔离且截然不同的单个单元构建模板波形后,我们在所有可能的时间偏移处生成了这些模板的成对组合。随后,通过聚类分析确定重叠的波形,然后将其分配给它们各自的单个单元组合。我们使用来自较早研究的模拟数据检查了该方法的性能,发现我们能够解析出各种信噪比之间平均83%的重叠波形,比结果提高了约32%在较早的研究中报道过。当将其应用于由单电极和四极电极记录生成的其他模拟数据集时,对于单电极数据,我们能够分辨出91%的重叠波形,假阳性率为0.19%,对于95%的重叠波形,则可以分辨出四极体数据的假阳性率为0.27%。我们还将我们的方法应用于从初级视觉皮层记录的电极和四极体数据,这些数据集获得的结果表明,我们的方法提供了一种有效的方法来对重叠波形进行排序。可以轻松地将此方法作为额外的步骤添加到常用的峰值排序方法(例如KlustaKwik和MClust软件包)中,并且可以应用于已经使用这些方法进行了排序的数据集。

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