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Method for unsupervised classification of multiunit neural signal recording under low signal-to-noise ratio

机译:低信噪比下多单元神经信号记录的无监督分类方法

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摘要

Neural spike sorting is an indispensable step in the analysis of multiunit extracellular neural signal recording. The applicability of spike sorting systems has been limited, mainly to the recording of sufficiently high signal-to-noise ratios, or to the cases where supervised classification can be utilized. We present a novel unsupervised method that shows satisfactory performance even under high background noise. The system consists of an efficient spike detector, a feature extractor that utilizes projection pursuit based on negentropy maximization (Huber, 1985 and Hyvarinen et al., 1999), and an unsupervised classifier based on probability density modeling using a mixture of Gaussians (Jain et al., 2000). Our classifier is based on the mixture model with a roughly approximated number of Gaussians and subsequent mode-seeking. It does not require accurate estimation of the number of units present in the recording and, thus, is better suited for use in fully automated systems. The feature extraction stage leads to better performance than those utilizing principal component analysis and two nonlinear mappings for the recordings from the somatosensory cortex of rat and the abdominal ganglion of Aplysia. The classification method yielded correct classification ratio as high as 95%, for data where it was only 66% when a k-means-type algorithm was used for the classification stage.
机译:神经穗分类是多单元细胞外神经信号记录分析中不可缺少的步骤。尖峰分拣系统的适用性受到限制,主要限于记录足够高的信噪比,或者限于可以使用监督分类的情况。我们提出了一种新颖的无监督方法,即使在高背景噪声下也能显示令人满意的性能。该系统包括一个高效的尖峰检测器,一个利用基于负熵最大化的投影追踪的特征提取器(Huber,1985年和Hyvarinen等人,1999年),以及一个基于概率密度建模的无监督分类器,使用高斯混合模型(Jain等人)。等(2000)。我们的分类器基于具有近似高斯数的混合模型和随后的模式寻找。它不需要精确估计记录中存在的单元数,因此更适合在全自动系统中使用。特征提取阶段比使用主成分分析和两个非线性映射从大鼠的体感皮层和海兔腹部神经节记录的记录中获得更好的性能。当使用k均值类型算法进行分类时,对于只有66%的数据,分类方法得出的正确分类率高达95%。

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