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High performance spike detection and sorting using neural waveform phase information and SOM clustering

机译:使用神经波形相位信息和SOM聚类的高性能尖峰检测和分类

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Neural spike detection is the very first step in the analysis of recorded neural waveforms for brain machine interface applications and for neuroscientific studies. Spike detection accuracy and algorithm robustness is an important consideration in developing detection algorithms. For real neural recording data without respective ground truth, the evaluation of detection performance is a challenge. In the present paper we evaluate the detections by inspecting the detected spike waveforms for their compliance with neural spike electrophysiological properties. After classifying similar waveforms into one cluster, those qualified detections are determined to be spikes with high confidence. This new spike detection evaluation method is based on using the waveform phase information for cluster analysis. By including clustering as an integral step in the detection algorithm, we can refine detection results and improve detection performance. The new algorithm is easy to implement and is effective as demonstrated using both artificial and real neural waveforms.
机译:神经峰值检测是分析脑机接口应用和神经科学研究的记录神经波形的第一步。尖峰检测精度和算法坚固性是开发检测算法的重要考虑因素。对于没有各自的理论而没有各自的神经记录数据,检测性能的评估是挑战。在本文中,我们通过检查检测到的尖峰波形来评估检测的检测,以遵守神经尖峰电生理性质。在将类似的波形分类为一个群集之后,确定这些合格的检测以高信任的尖峰。这种新的尖峰检测评估方法是基于使用波形相位信息进行聚类分析。通过将聚类作为检测算法中的积分步骤,我们可以改进检测结果并提高检测性能。新算法易于实施,并且使用人工和真正的神经波形所证明的是有效的。

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