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深度学习对运动想象 EEG 的分类提高了低效率脑机接口用户的性能。

Classification of motor imagery EEG using deep learning increases performance in inefficient BCI users.

机构信息

Department of Cognitive Science and Artificial Intelligence, Tilburg University, Tilburg, The Netherlands.

Research Department, Unravel Research, Utrecht, The Netherlands.

出版信息

PLoS One. 2022 Jul 22;17(7):e0268880. doi: 10.1371/journal.pone.0268880. eCollection 2022.

Abstract

Motor Imagery Brain-Computer Interfaces (MI-BCIs) are AI-driven systems that capture brain activity patterns associated with mental imagination of movement and convert them into commands for external devices. Traditionally, MI-BCIs operate on Machine Learning (ML) algorithms, which require extensive signal processing and feature engineering to extract changes in sensorimotor rhythms (SMR). In recent years, Deep Learning (DL) models have gained popularity for EEG classification as they provide a solution for automatic extraction of spatio-temporal features in the signals. However, past BCI studies that employed DL models, only attempted them with a small group of participants, without investigating the effectiveness of this approach for different user groups such as inefficient users. BCI inefficiency is a known and unsolved problem within BCI literature, generally defined as the inability of the user to produce the desired SMR patterns for the BCI classifier. In this study, we evaluated the effectiveness of DL models in capturing MI features particularly in the inefficient users. EEG signals from 54 subjects who performed a MI task of left- or right-hand grasp were recorded to compare the performance of two classification approaches; a ML approach vs. a DL approach. In the ML approach, Common Spatial Patterns (CSP) was used for feature extraction and then Linear Discriminant Analysis (LDA) model was employed for binary classification of the MI task. In the DL approach, a Convolutional Neural Network (CNN) model was constructed on the raw EEG signals. Additionally, subjects were divided into high vs. low performers based on their online BCI accuracy and the difference between the two classifiers' performance was compared between groups. Our results showed that the CNN model improved the classification accuracy for all subjects within the range of 2.37 to 28.28%, but more importantly, this improvement was significantly larger for low performers. Our findings show promise for employment of DL models on raw EEG signals in future MI-BCI systems, particularly for BCI inefficient users who are unable to produce desired sensorimotor patterns for conventional ML approaches.

摘要

运动想象脑-机接口(MI-BCI)是一种人工智能驱动的系统,它可以捕捉与运动想象相关的大脑活动模式,并将其转换为外部设备的命令。传统上,MI-BCI 基于机器学习(ML)算法运行,这些算法需要进行大量的信号处理和特征工程,以提取感觉运动节律(SMR)的变化。近年来,深度学习(DL)模型在 EEG 分类方面得到了广泛的应用,因为它们为信号中的时空特征自动提取提供了一种解决方案。然而,过去使用 DL 模型的 BCI 研究仅在一小部分参与者中尝试过,而没有研究这种方法对不同用户群体(如低效用户)的有效性。BCI 效率低下是 BCI 文献中已知且未解决的问题,通常定义为用户无法为 BCI 分类器产生所需的 SMR 模式。在这项研究中,我们评估了 DL 模型在捕捉 MI 特征方面的有效性,特别是在低效用户中。记录了 54 名受试者执行左手或右手抓握 MI 任务的 EEG 信号,以比较两种分类方法的性能;一种是 ML 方法,另一种是 DL 方法。在 ML 方法中,使用共空间模式(CSP)进行特征提取,然后使用线性判别分析(LDA)模型对 MI 任务进行二进制分类。在 DL 方法中,在原始 EEG 信号上构建了卷积神经网络(CNN)模型。此外,根据在线 BCI 准确性将受试者分为高表现者和低表现者,并比较两组之间两种分类器性能的差异。我们的结果表明,CNN 模型提高了所有受试者的分类准确性,范围在 2.37%到 28.28%之间,但更重要的是,这种提高对低表现者更为显著。我们的研究结果表明,在未来的 MI-BCI 系统中,在原始 EEG 信号上使用 DL 模型具有一定的应用前景,特别是对于无法为传统 ML 方法产生期望的感觉运动模式的 BCI 低效用户。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b2f1/9307149/b0ca1cf7f1b0/pone.0268880.g001.jpg

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