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Identification of reliable spike templates in multi-unit extracellular recordings using fuzzy clustering.

机译:使用模糊聚类识别多单位细胞外记录中可靠的尖峰模板。

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摘要

A method for extracting single-unit spike trains from extracellular recordings containing the activity of several simultaneously active cells is presented. The technique is particularly effective when spikes overlap temporally. It is capable of identifying the exact number of neurons contributing to a recording and of creating reliable spike templates. The procedure is based on fuzzy clustering and its performance is controlled by minimizing a cluster-validity index which optimizes the compactness and separation of the identified clusters. Application examples with synthetic spike trains generated from real spikes and segments of background noise show the advantage of the fuzzy method over conventional template-creation approaches in a wide range of signal-to-noise ratios.
机译:提出了一种从细胞外记录中提取单个单位峰序列的方法,该记录包含多个同时活跃细胞的活性。当峰值在时间上重叠时,该技术特别有效。它能够识别出有助于记录的确切神经元数量,并能够创建可靠的峰值模板。该过程基于模糊聚类,并且通过最小化聚类有效性指数来控制其性能,聚类有效性指数优化了所识别聚类的紧凑性和分离性。由实际尖峰和背景噪声片段生成的合成尖峰序列的应用示例表明,在广泛的信噪比范围内,模糊方法相对于常规模板创建方法具有优势。

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