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In quest of the missing neuron: Spike sorting based on dominant-sets clustering

机译:寻求缺失的神经元:基于优势集聚类的穗分类

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摘要

Spike sorting algorithms aim at decomposing complex extracellular signals to independent events from single neurons in the electrode's vicinity. The decision about the actual number of active neurons is still an open issue, with sparsely firing neurons and background activity the most influencing factors. We introduce a graph-theoretical algorithmic procedure that successfully resolves this issue. Dimensionality reduction coupled with a modern, efficient and progressively executable clustering routine proved to achieve higher performance standards than popular spike sorting methods. Our method is validated extensively using simulated data for different levels of SNR.
机译:峰值分类算法旨在将复杂的细胞外信号分解为电极附近单个神经元的独立事件。关于活动神经元的实际数量的决定仍然是一个悬而未决的问题,神经元稀疏和背景活动是影响最大的因素。我们介绍一种可以成功解决此问题的图论算法程序。降维与现代,高效且可逐步执行的聚类例程相结合,被证明可以实现比流行的峰值排序方法更高的性能标准。我们的方法已针对不同级别的SNR使用模拟数据进行了广泛验证。

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