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基于深度学习的脑机接口最少通道自动选择

Deep-Learning-Based Automatic Selection of Fewest Channels for Brain–Machine Interfaces

IEEE Transactions on Cybernetics · 2021
被引 19
ABS 3

中文导读

提出一种深度学习技术,自动为脑机接口选出最少脑电图通道,在三种任务中验证其解码精度不低于全通道,且所选通道具有神经生理可解释性。

Abstract

Due to the development of convenient brain-machine interfaces (BMIs), the automatic selection of a minimum channel (electrode) set has attracted increasing interest because the decrease in the number of channels increases the efficiency of BMIs. This study proposes a deep-learning-based technique to automatically search for the minimum number of channels applicable to general BMI paradigms using a compact convolutional neural network for electroencephalography (EEG)-based BMIs. For verification, three types of BMI paradigms are assessed: 1) the typical P300 auditory oddball; 2) the new top-down steady-state visually evoked potential; and 3) the endogenous motor imagery. We observe that the optimized minimal EEG-channel sets are automatically selected in all three cases. Their decoding accuracies using the minimal channels are statistically equivalent to (or even higher than) those based on all channels. The brain areas of the selected channel set are neurophysiologically interpretable for all of these cognitive task paradigms. This study shows that the minimal EEG channel set can be automatically selected, irrespective of the types of BMI paradigms or EEG input features using a deep-learning approach, which also contributes to their portability.

脑机接口深度学习脑电图通道选择神经科学