从体内电生理记录中有效分离单个单位活动的计算框架

Hristos S. Courellis, Samuel U. Nummela, Cory T. Miller, G. Cauwenberghs
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引用次数: 1

摘要

现代尖峰分类技术严重依赖于无监督机器学习算法,以从噪声通道记录中隔离单个单元活动。最常见的方法之一是k-means聚类,它对分析前选择的聚类数量(k)高度敏感。需要一种强大的自动化方法来确定k,特别是对于神经科学界目前正在分析的大型数据集。通常应用于此分析的信息标准可能产生过度拟合的聚类建议,并采用关于聚类高斯的强假设,这些假设不一定适用于真实的体内神经电生理记录。利用串列多级小波分解和主成分分析构造判别特征空间,提出了一种尖峰排序算法。K-means聚类应用于该特征空间,使用各种距离度量来确定哪种方法产生最佳的聚类分离。聚类结果使用熵积来评估,熵积是一种基于信息熵的度量,对聚类中峰值的潜在分布没有任何假设。当将束状微线阵列植入狨猴初级视觉皮层中进行视觉刺激任务时,该测量方法比其他信息标准更能提供聚类结果的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational framework for effective isolation of single-unit activity from in-vivo electrophysiological recording
Modern spike sorting techniques are heavily reliant on unsupervised machine learning algorithms for isolation of single-unit activity from noisy channel recordings. One of the most common methods, k-means clustering, is highly sensitive to the number of clusters selected (k) prior to analysis. A robust automated method for determining k is required, in particular for the large datasets currently being analyzed by the Neuroscience community. Information criteria, often applied for this analysis, can yield over-fitted clustering recommendations and employ strong assumptions about cluster gaussianity which do not necessarily hold for real in-vivo neuro-electrophysiological recordings. An algorithmic approach to spike sorting is applied utilizing tandem multi-level wavelet decomposition and principal component analysis to construct a discriminant feature space. K-means clustering is applied to this feature space using a variety of distance metrics to determine which approach yields optimal cluster separation. Clustering outcomes are evaluated using the Entropic Product, an information entropy-based measure that makes no assumptions about the underlying distribution of spikes within a cluster. This measure is demonstrated to be more informative about clustering outcomes than other information criteria when sorting spike data collected using bundled microwire arrays implanted in the Primary Visual Cortex of marmosets conducting a visual-stimulation task.
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