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Automatic bad channel detection in implantable brain-computer interfaces using multimodal features based on local field potentials and spike signals

机译:使用基于本地现场电位和尖峰信号的多模式特征在植入式脑接口中自动频道检测

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摘要

"Bad channels" in implantable multi-channel recordings bring troubles into the precise quantitative description and analysis of neural signals, especially in the current "big data" era. In this paper, we combine multimodal features based on local field potentials (LFPs) and spike signals to detect bad channels automatically using machine learning. On the basis of 2632 pairs of LFPs and spike recordings acquired from five pigeons, 12 multimodal features are used to quantify each channel's temporal, frequency, phase and firing-rate properties. We implement seven classifiers in the detection tasks, in which the synthetic minority oversampling technique (SMOTE) system and Fisher weighted Euclidean distance sorting (FWEDS) are used to cope with the class imbalance problem. The results of the two-dimensional scatterplots and classifications demonstrate that correlation coefficient, phase locking value, and coherence have good discriminability. For the multimodal features, almost all the classifiers can obtain high accuracy and bad channel detection rate after the SMOTE operation, in which the Random Forests classifier shows relatively better comprehensive performance (accuracy: 0.9092 +/- 0.0081, precision: 0.9123 +/- 0.0100, and recall: 0.9057 +/- 0.0121). The proposed approach can automatically detect bad channels based on multimodal features, and the results provide valuable references for larger datasets.
机译:“不良渠道”在植入式多通道记录中,对神经信号的精确定量描述和分析,尤其是在当前的“大数据”时代。在本文中,我们将基于本地领域电位(LFPS)和尖峰信号组合的多式联偶特征,以使用机器学习自动检测不良通道。在从五只鸽子获得的2632对LFP和尖峰录制的基础上,使用12个多模式特征来量化每个通道的时间,频率,相位和射击率特性。我们在检测任务中实施七个分类器,其中合成少数群体过采样技术(Smote)系统和Fisher加权欧几里德距离分选(FWEDS)用于应对阶级不平衡问题。二维散点片和分类的结果表明相关系数,相位锁定值和相干性具有良好的辨别性。对于多模式特征,几乎所有的分类器都可以在拍摄操作后获得高精度和不良的信道检测速率,其中随机森林分类器显示相对更好的全面性能(准确度:0.9092 +/- 0.0081,精确度:0.9123 +/- 0.0100 ,并记得:0.9057 +/- 0.0121)。所提出的方法可以根据多模式特征自动检测不良频道,结果为较大数据集提供有价值的引用。

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