Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming 650500, China.
Brain Cognition and Brain-Computer Intelligence Integration Group, Kunming University of Science and Technology, Kunming 650500, China.
J Healthc Eng. 2021 Jun 29;2021:5533565. doi: 10.1155/2021/5533565. eCollection 2021.
Brain-computer interaction based on motor imagery (MI) is an important brain-computer interface (BCI). Most methods for MI classification are based on electroencephalogram (EEG), and few studies have investigated signal processing based on MI-Functional Near-Infrared Spectroscopy (fNIRS). In addition, there is a need to improve the classification accuracy for MI fNIRS methods. In this study, a deep belief network (DBN) based on a restricted Boltzmann machine (RBM) was used to classify fNIRS signals of flexion and extension imagery involving the left and right arms. fNIRS signals from 16 channels covering the motor cortex area were recorded for each of 10 subjects executing or imagining flexion and extension involving the left and right arms. Oxygenated hemoglobin (HbO) concentration was used as a feature to train two RBMs that were subsequently stacked with an additional softmax regression output layer to construct DBN. We also explored the DBN model classification accuracy for the test dataset from one subject using training dataset from other subjects. The average DBN classification accuracy for flexion and extension movement and imagery involving the left and right arms was 84.35 ± 3.86% and 78.19 ± 3.73%, respectively. For a given DBN model, better classification results are obtained for test datasets for a given subject when the model is trained using dataset from the same subject than when the model is trained using datasets from other subjects. The results show that the DBN algorithm can effectively identify flexion and extension imagery involving the right and left arms using fNIRS. This study is expected to serve as a reference for constructing online MI-BCI systems based on DBN and fNIRS.
基于运动想象 (MI) 的脑机交互是一种重要的脑机接口 (BCI)。大多数 MI 分类方法都是基于脑电图 (EEG) 的,很少有研究基于 MI-近红外光谱 (fNIRS) 进行信号处理。此外,还需要提高 MI fNIRS 方法的分类准确性。在这项研究中,使用基于受限玻尔兹曼机 (RBM) 的深度置信网络 (DBN) 对涉及左右手臂的屈伸想象的 fNIRS 信号进行分类。每个受试者执行或想象左右手臂的屈伸时,从覆盖运动皮层区域的 16 个通道记录 fNIRS 信号。使用特征作为训练数据,训练两个 RBM,然后将其与附加的 softmax 回归输出层堆叠以构建 DBN。我们还探索了使用来自其他受试者的训练数据集对来自一个受试者的测试数据集的 DBN 模型分类准确性。左右手臂屈伸运动和想象的 DBN 分类平均准确率分别为 84.35 ± 3.86%和 78.19 ± 3.73%。对于给定的 DBN 模型,当使用来自同一受试者的数据集训练模型时,对于给定受试者的测试数据集获得了更好的分类结果,而当使用来自其他受试者的数据集训练模型时。结果表明,DBN 算法可以有效地使用 fNIRS 识别左右手臂的屈伸想象。这项研究有望为构建基于 DBN 和 fNIRS 的在线 MI-BCI 系统提供参考。