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脑皮层电图(ECoG)网格空间密度对解码手部屈伸影响的研究

Investigation of the Influence of ECoG Grid Spatial Density on Decoding Hand Flexion and Extension.

作者信息

Jiang Tianxiao, Jiang Tao, Wang Taylor, Mei Shanshan, Liu Qingzhu, Li Yunlin, Wang Xiaofei, Prabhu Sujit, Sha Zhiyi, Ince Nuri F

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:3052-3055. doi: 10.1109/EMBC.2018.8513008.

Abstract

Electrocorticogram (ECoG) has been used as a reliable modality to control a brain machine interface (BMI). Recently, promising results of high-density ECoG have shown that non redundant information can be recorded with finer spatial resolution from the cortical surface. In this study, highdensity ECoG was recorded intraoperatively from two patients during awake brain surgery while performing instructed hand flexion and extension. Event related desynchronization (ERD) were found in the low frequency band (LFB: 8-32 Hz) band while event related synchronization (ERS) were found in the high frequency band (HFB: 60-200 Hz). The classification between hand flexion and extension was performed by using common spatial pattern (CSP) as a feature extraction technique and linear discriminant analysis (LDA) as a classifier. In order to compare the high-density ECoG and normal ECoG in terms of classifying between hand flexion and extension, we simulated a typical clinical ECoG (8 mm spacing) by averaging the neural activity of nearest four channels. The same classification methods were applied on the averaged recordings. In HFB, the classification error rate using simulated ECoG greatly increased and lagged the movement onset compared to the original highdensity ECoG. In LFB, the differences between them were not prominent. These results indicated that high-density ECoG is able to capture non-redundant task-related information from the motor cortex and potentially serves as a better modality to drive a neural prosthetic compared to typical clinical electrodes.

摘要

脑皮层电图(ECoG)已被用作控制脑机接口(BMI)的可靠方式。最近,高密度ECoG的 promising 结果表明,可以从皮层表面以更高的空间分辨率记录非冗余信息。在本研究中,在清醒脑部手术期间,对两名患者进行术中高密度ECoG记录,同时进行指令性手部屈伸动作。在低频带(LFB:8 - 32Hz)发现事件相关去同步化(ERD),而在高频带(HFB:60 - 200Hz)发现事件相关同步化(ERS)。使用共同空间模式(CSP)作为特征提取技术,线性判别分析(LDA)作为分类器,对手部屈伸进行分类。为了在手部屈伸分类方面比较高密度ECoG和常规ECoG,我们通过对最近四个通道的神经活动进行平均,模拟了典型的临床ECoG(8mm间距)。对平均记录应用相同的分类方法。在HFB中,与原始高密度ECoG相比,使用模拟ECoG的分类错误率大幅增加,并且运动开始时间滞后。在LFB中,它们之间的差异不明显。这些结果表明,与典型的临床电极相比,高密度ECoG能够从运动皮层捕获非冗余的任务相关信息,并有可能作为驱动神经假体的更好方式。

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