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A Novel Feature Extractor Based on Wavelet and Kernel PCA for Spike Sorting Neural Signals

机译:基于小波和核PCA的新型特征提取器,用于钉分类神经信号

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Spike sorting is often required for analyzing neural recordings to isolate the activity of single neurons. In this paper, a new feature extractor based on Wavelet and kernel PCA for spike sorting was proposed. Electrophysiology recordings were made in Sprague-Dawley (SD) rats to provide neural signals. Here, an adaptive threshold based on the duty-cycle keeping method was used to detect spike and a new spike alignment technique was used to decrease sampling skew error. After spikes were detected and alimented, to extract spike features, their wavelet transform was calculated, the first 10 coefficients with the largest deviation from normality provided a compressed representation of the spike features that serves as the input to KPCA algorithm. Once the features have been extracted, k-means clustering was utilised to separate the features and differentiate the spikes. Test results with simulated data files and data obtained from SD rats in vivo showed an excellent classification result, indicating the good performance of the described algorithm approach.
机译:分析神经记录以分离单一神经元的活性来分析尖峰分类。本文提出了一种基于小波和核PCA的新特征提取器,用于尖峰分选。 Sprague-Dawley(SD)大鼠中的电生理记录是提供神经信号。这里,使用基于占空比保持方法的自适应阈值来检测尖峰,并且使用新的尖峰对准技术来降低采样偏斜误差。在检测到钉钉并进行消化之后,为了提取尖峰特征,计算它们的小波变换,其具有与正常性偏差最大偏差的第一10系数提供了用作KPCA算法的输入的尖峰特征的压缩表示。一旦提取了特征,就利用K-Means聚类来分离特征并区分尖峰。测试结果具有模拟数据文件和从Vivo中的SD大鼠获得的数据显示出优异的分类结果,表示所描述的算法方法的良好性能。

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