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Automatic spike sorting by unsupervised clustering with diffusion maps and silhouettes

机译:通过带有扩散图和轮廓的无监督聚类自动对峰值进行排序

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摘要

Knowledge of the activity of single neurons is crucial for understanding neural functions. Therefore the process of attributing every single spike to a particular neuron, called spike sorting, is particularly important in electrophysiological data analysis. This task however is greatly complicated because of numerous factors. Bursts or fast changes in ion channel activation or deactivation can cause a large variability of spike waveforms. Another considerable source of uncertainties results from noise caused by firing of nearby neurons. Movement of electrodes and external electrical noise from the environment also hamper the spike sorting. This paper introduces an integrated approach of diffusion maps (DM), silhouette statistics, and k-means clustering methods for spike sorting. DM is employed to extract spike features that are highly capable of discriminating different spike shapes. The combination of k-means and silhouette statistics provides an automatic unsupervised clustering, which takes features extracted by DM as inputs. Experimental results demonstrate the noticeable superiority of the features extracted by DM compared to those selected by wavelet transformation (WT). Accordingly, the proposed integrated method significantly dominates the popular existing combination of WT and superparamag-netic clustering regarding spike sorting accuracy.
机译:单个神经元活动的知识对于理解神经功能至关重要。因此,将每个单个峰值归于特定神经元的过程(称为峰值排序)在电生理数据分析中特别重要。然而,由于许多因素,该任务非常复杂。离子通道激活或失活的突发或快速变化可能会导致尖峰波形变化很大。不确定性的另一个重要来源是由附近神经元发射引起的噪声引起的。电极的移动和来自环境的外部电噪声也妨碍了尖峰的分类。本文介绍了一种用于尖峰排序的扩散图(DM),轮廓统计和k-均值聚类方法的集成方法。 DM用于提取尖峰特征,这些特征高度能够区分不同的尖峰形状。 k均值和轮廓统计的组合提供了自动无监督聚类,该聚类以DM提取的特征作为输入。实验结果表明,与通过小波变换(WT)选择的特征相比,通过DM提取的特征具有明显的优越性。因此,就尖峰分选精度而言,所提出的集成方法在WT和超顺磁性簇的流行现有组合中占据了主导地位。

著录项

  • 来源
    《Neurocomputing》 |2015年第4期|199-210|共12页
  • 作者单位

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

    Centre for Intelligent Systems Research (CISR), Deakin University, VIC 3216, Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Spike sorting; Diffusion maps; Silhouette statistics; Gap statistics; k-Means clustering; Mean shift clustering;

    机译:穗分选;扩散图;轮廓统计;差距统计;k-均值聚类;均值漂移聚类;
  • 入库时间 2022-08-18 02:06:55

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