IEEE Trans Neural Syst Rehabil Eng. 2020 Jun;28(6):1246-1253. doi: 10.1109/TNSRE.2020.2987888. Epub 2020 Apr 14.
Functional connectivity between the brain and body kinematics has largely not been investigated due to the requirement of motionlessness in neuroimaging techniques such as functional magnetic resonance imaging (fMRI). However, this connectivity is disrupted in many neurodegenerative disorders, including Parkinsons Disease (PD), a neurological progressive disorder characterized by movement symptoms including slowness of movement, stiffness, tremors at rest, and walking and standing instability. In this study, brain activity is recorded through functional near-infrared spectroscopy (fNIRS) and electroencephalography (EEG), and body kinematics were captured by a motion capture system (Mocap) based on an inertial measurement unit (IMU) for gross movements (large movements such as limb kinematics), and the WearUp glove for fine movements (small range movements such as finger kinematics). PD and neurotypical (NT) participants were recruited to perform 8 different movement tasks. The recorded data from each modality have been analyzed individually, and the processed data has been used for classification between the PD and NT groups. The average changes in oxygenated hemoglobin (HbO2) from fNIRS, EEG power spectral density in the Theta, Alpha, and Beta bands, acceleration vector from Mocap, and normalized WearUp flex sensor data were used for classification. 12 different support vector machine (SVM) classifiers have been used on different datasets such as only fNIRS data, only EEG data, hybrid fNIRS/EEG data, and all the fused data for two classification scenarios: classifying PD and NT based on individual activities, and all activity data fused together. The PD and NT group could be distinguished with more than 83% accuracy for each individual activity. For all the fused data, the PD and NT groups are classified with 81.23%, 92.79%, 92.27%, and 93.40% accuracy for the fNIRS only, EEG only, hybrid fNIRS/EEG, and all fused data, respectively. The results indicate that the overall performance of classification in distinguishing PD and NT groups improves when using both brain and body data.
由于神经影像学技术(如功能磁共振成像(fMRI))需要保持静止,因此大脑与身体运动之间的功能连接在很大程度上尚未得到研究。然而,这种连接在许多神经退行性疾病中被破坏,包括帕金森病(PD),这是一种以运动症状为特征的进行性神经疾病,包括运动迟缓、僵硬、静止时震颤以及行走和站立不稳。在这项研究中,通过功能近红外光谱(fNIRS)和脑电图(EEG)记录大脑活动,并通过基于惯性测量单元(IMU)的运动捕捉系统(Mocap)捕捉身体运动学,用于大运动(如肢体运动学),以及WearUp 手套用于精细运动(如手指运动学)。招募 PD 和神经典型(NT)参与者执行 8 种不同的运动任务。对每种模态记录的数据进行了单独分析,并使用处理后的数据对 PD 和 NT 组进行分类。fNIRS 的含氧血红蛋白(HbO2)平均变化、EEG 中Theta、Alpha 和 Beta 频段的功率谱密度、Mocap 的加速度矢量和归一化 WearUp 挠曲传感器数据用于分类。在不同的数据集上使用了 12 种不同的支持向量机(SVM)分类器,例如仅 fNIRS 数据、仅 EEG 数据、fNIRS/EEG 混合数据以及两个分类场景下融合的所有数据:基于个体活动区分 PD 和 NT,以及融合所有活动数据。对于每个个体活动,PD 和 NT 组的区分准确率超过 83%。对于所有融合数据,仅使用 fNIRS、EEG、fNIRS/EEG 混合数据和所有融合数据,PD 和 NT 组的分类准确率分别为 81.23%、92.79%、92.27%和 93.40%。结果表明,当同时使用大脑和身体数据时,区分 PD 和 NT 组的分类性能整体提高。