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多电极尖峰分类:分而治之的方法。

Spike sorting for polytrodes: a divide and conquer approach.

机构信息

Department of Ophthalmology and Visual Sciences, University of British Columbia Vancouver, BC, Canada.

出版信息

Front Syst Neurosci. 2014 Feb 10;8:6. doi: 10.3389/fnsys.2014.00006. eCollection 2014.

Abstract

In order to determine patterns of neural activity, spike signals recorded by extracellular electrodes have to be clustered (sorted) with the aim of ensuring that each cluster represents all the spikes generated by an individual neuron. Many methods for spike sorting have been proposed but few are easily applicable to recordings from polytrodes which may have 16 or more recording sites. As with tetrodes, these are spaced sufficiently closely that signals from single neurons will usually be recorded on several adjacent sites. Although this offers a better chance of distinguishing neurons with similarly shaped spikes, sorting is difficult in such cases because of the high dimensionality of the space in which the signals must be classified. This report details a method for spike sorting based on a divide and conquer approach. Clusters are initially formed by assigning each event to the channel on which it is largest. Each channel-based cluster is then sub-divided into as many distinct clusters as possible. These are then recombined on the basis of pairwise tests into a final set of clusters. Pairwise tests are also performed to establish how distinct each cluster is from the others. A modified gradient ascent clustering (GAC) algorithm is used to do the clustering. The method can sort spikes with minimal user input in times comparable to real time for recordings lasting up to 45 min. Our results illustrate some of the difficulties inherent in spike sorting, including changes in spike shape over time. We show that some physiologically distinct units may have very similar spike shapes. We show that RMS measures of spike shape similarity are not sensitive enough to discriminate clusters that can otherwise be separated by principal components analysis (PCA). Hence spike sorting based on least-squares matching to templates may be unreliable. Our methods should be applicable to tetrodes and scalable to larger multi-electrode arrays (MEAs).

摘要

为了确定神经活动的模式,必须对通过细胞外电极记录的尖峰信号进行聚类(排序),目的是确保每个聚类代表单个神经元产生的所有尖峰。已经提出了许多尖峰分类方法,但很少有方法易于应用于多电极记录,这些电极可能有 16 个或更多的记录位点。与四电极一样,这些电极之间的间隔足够近,以至于单个神经元的信号通常会在几个相邻的位点上记录。虽然这提供了更好的机会来区分具有相似形状尖峰的神经元,但在这种情况下,由于信号必须分类的空间的高维性,分类是困难的。本报告详细介绍了一种基于分而治之方法的尖峰分类方法。最初通过将每个事件分配给其最大的通道来形成聚类。然后,每个基于通道的聚类被进一步细分为尽可能多的不同聚类。然后,根据成对测试将它们重新组合成最终的聚类集。还进行了成对测试以确定每个聚类与其他聚类的区别程度。使用修改的梯度上升聚类(GAC)算法进行聚类。该方法可以在与长达 45 分钟的记录实时相当的时间内,以最小的用户输入对尖峰进行分类。我们的结果说明了尖峰分类中固有的一些困难,包括尖峰形状随时间的变化。我们表明,一些生理上不同的单元可能具有非常相似的尖峰形状。我们表明,尖峰形状相似性的 RMS 度量不足以区分通过主成分分析(PCA)否则可以分离的聚类。因此,基于与模板的最小二乘匹配的尖峰分类可能不可靠。我们的方法应该适用于四电极,并可扩展到更大的多电极阵列(MEA)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b41/3918743/87edf4f53e86/fnsys-08-00006-g0001.jpg

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