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An automatic measure for classifying clusters of suspected spikes into single cells versus multiunits

机译:一种自动测量方法,用于将可疑穗状花序群集分类为单个单元格还是多个单元

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While automatic spike sorting has been investigated for decades, little attention has been allotted to consistent evaluation criteria that will automatically determine whether a cluster of spikes represents the activity of a single cell or a multiunit. Consequently, the main tool for evaluation has remained visual inspection by a human. This paper quantifies the visual inspection process. The results are well-defined criteria for evaluation, which are mainly based on visual features of the spike waveform, and an automatic adaptive algorithm that learns the classification by a given human and can apply similar visual characteristics for classification of new data. To evaluate the suggested criteria, we recorded the activity of 1652 units (single cells and multiunits) from the cerebrum of 12 human patients undergoing evaluation for epilepsy surgery requiring implantation of chronic intracranial depth electrodes. The proposed method performed similar to human classifiers and obtained significantly higher accuracy than two existing methods (three variants of each). Evaluation on two synthetic datasets is also provided. The criteria are suggested as a standard for evaluation of the quality of separation that will allow comparison between different studies. The proposed algorithm is suitable for real-time operation and as such may allow brain-computer interfaces to treat single cells differently than multiunits.
机译:尽管自动穗分类已经研究了数十年,但很少有人关注一致的评估标准,该标准将自动确定穗簇是否代表单个细胞或多单位的活性。因此,评估的主要工具仍然是人工目视检查。本文对目视检查过程进行了量化。结果是明确定义的评估标准,主要基于尖峰波形的视觉特征,以及一种自动自适应算法,该算法可以学习给定人员的分类,并且可以将相似的视觉特征应用于新数据的分类。为了评估建议的标准,我们记录了12例接受癫痫手术评估(需要植入慢性颅内深度电极)的人类患者的大脑中1652个单位(单细胞和多单位)的活性。所提出的方法与人类分类器的性能相似,并且比两种现有方法(每种方法的三个变体)获得了更高的准确性。还提供了对两个综合数据集的评估。建议将该标准作为评估分离质量的标准,以允许在不同研究之间进行比较。所提出的算法适用于实时操作,因此可以使人机界面处理单个细胞的方式不同于对多个单元进行处理。

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  • 来源
    《Journal of neural engineering》 |2009年第5期|111-122|共12页
  • 作者单位

    Department of Neurosurgery, David Geffen School of Medicine. University of California, Los Angeles (UCLA), CA 90095, USA;

    School of Computer Science, Tel-Aviv University, Tel-Aviv 69978, Israel;

    Department of Neurosurgery, David Geffen School of Medicine. University of California, Los Angeles (UCLA), CA 90095, USA Semel Institute for Neuroscience and Human Behavior, David Geffen School of Medicine, University of California, Los Angeles (UCLA), CA 90095, USA Functional Neurosurgery Unit, Tel-Aviv Sourasky Medical Center, Tel-Aviv 64239, Israel Sackler School of Medicine, Tel-Aviv University, Tel-Aviv 69978, Israel;

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