Medical Electronics Engineering Department, M. S. Ramaiah Institute of Technology, Bangalore, India.
J Med Eng Technol. 2022 Jan;46(1):69-77. doi: 10.1080/03091902.2021.1992519. Epub 2021 Nov 26.
Cognitive brain-computer interface (cBCI) is an emerging area with applications in neurorehabilitation and performance monitoring. cBCI works on the cognitive brain signal that does not require a person to pay much effort unlike the motor brain-computer interface (BCI) however existing cBCI systems currently offer lower accuracy than the motor BCI. Since attention is one of the cognitive signals that can be used to realise the cBCI, this work uses the multiple object tracking (MOT) task to acquire the desired electroencephalograph (EEG) signal from healthy subjects. The main objective of the paper is to explore the preliminary applications of support vector machine (SVM) classifier to classify the attentional load in multiple object tracking task. Results show that the attentional load can be classified using SVM with sensitivity, specificity, and accuracy of 94.03%, 92.50%, and 93.28%, respectively using the spectral entropy EEG feature. The classification performance promises the potential application of the current approach in the cognitive brain-computer interface for neurorehabilitation.
认知脑机接口(cBCI)是一个新兴领域,在神经康复和性能监测中有应用。与运动脑机接口(BCI)不同,cBCI基于认知脑信号工作,不需要人付出太多努力,然而现有的cBCI系统目前的准确率低于运动BCI。由于注意力是可用于实现cBCI的认知信号之一,这项工作使用多目标跟踪(MOT)任务从健康受试者获取所需的脑电图(EEG)信号。本文的主要目的是探索支持向量机(SVM)分类器在多目标跟踪任务中对注意力负荷进行分类的初步应用。结果表明,使用频谱熵EEG特征,通过SVM可以对注意力负荷进行分类,灵敏度、特异度和准确率分别为94.03%、92.50%和93.28%。该分类性能预示了当前方法在用于神经康复的认知脑机接口中的潜在应用。