Sadarangani Gautam P, Jiang Xianta, Simpson Lisa A, Eng Janice J, Menon Carlo
MENRVA Research Group, School of Engineering Science, Simon Fraser University, Burnaby, BC, Canada.
Graduate Program in Rehabilitation Sciences, University of British Columbia, Vancouver, BC, Canada.
Front Bioeng Biotechnol. 2017 Jul 27;5:42. doi: 10.3389/fbioe.2017.00042. eCollection 2017.
There is increasing research interest in technologies that can detect grasping, to encourage functional use of the hand as part of daily living, and thus promote upper-extremity motor recovery in individuals with stroke. Force myography (FMG) has been shown to be effective for providing biofeedback to improve fine motor function in structured rehabilitation settings, involving isolated repetitions of a single grasp type, elicited at a predictable time, without upper-extremity movements. The use of FMG, with machine learning techniques, to detect and distinguish between grasping and no grasping, continues to be an active area of research, in healthy individuals. The feasibility of classifying FMG for grasp detection in populations with upper-extremity impairments, in the presence of upper-extremity movements, as would be expected in daily living, has yet to be established. We explore the feasibility of FMG for this application by establishing and comparing (1) FMG-based grasp detection accuracy and (2) the amount of training data necessary for accurate grasp classification, in individuals with stroke and healthy individuals. FMG data were collected using a flexible forearm band, embedded with six force-sensitive resistors (FSRs). Eight participants with stroke, with mild to moderate upper-extremity impairments, and eight healthy participants performed 20 repetitions of three tasks that involved reaching, grasping, and moving an object in different planes of movement. A validation sensor was placed on the object to label data as corresponding to a grasp or no grasp. Grasp detection performance was evaluated using linear and non-linear classifiers. The effect of training set size on classification accuracy was also determined. FMG-based grasp detection demonstrated high accuracy of 92.2% (σ = 3.5%) for participants with stroke and 96.0% (σ = 1.6%) for healthy volunteers using a support vector machine (SVM). The use of a training set that was 50% the size of the testing set resulted in 91.7% (σ = 3.9%) accuracy for participants with stroke and 95.6% (σ = 1.6%) for healthy participants. These promising results indicate that FMG may be feasible for monitoring grasping, in the presence of upper-extremity movements, in individuals with stroke with mild to moderate upper-extremity impairments.
对于能够检测抓握的技术,研究兴趣与日俱增,其目的在于鼓励手部在日常生活中的功能性使用,进而促进中风患者的上肢运动恢复。肌动电流图(FMG)已被证明在结构化康复环境中提供生物反馈以改善精细运动功能方面是有效的,这种环境涉及在可预测的时间引发单一抓握类型的孤立重复动作,且无上肢运动。在健康个体中,利用FMG和机器学习技术来检测并区分抓握和非抓握状态,仍然是一个活跃的研究领域。在日常生活中预期会出现上肢运动的情况下,针对上肢有损伤的人群进行基于FMG的抓握检测分类的可行性尚未得到证实。我们通过在中风患者和健康个体中建立并比较(1)基于FMG的抓握检测准确率以及(2)准确抓握分类所需的训练数据量,来探索FMG在此应用中的可行性。使用嵌入六个力敏电阻(FSR)的柔性前臂带收集FMG数据。八名患有轻度至中度上肢损伤的中风患者和八名健康参与者对涉及在不同运动平面伸手、抓握和移动物体的三项任务进行了20次重复操作。在物体上放置一个验证传感器,将数据标记为对应抓握或非抓握。使用线性和非线性分类器评估抓握检测性能。还确定了训练集大小对分类准确率的影响。使用支持向量机(SVM)时,基于FMG的抓握检测对于中风患者的准确率为92.2%(σ = 3.5%),对于健康志愿者为96.0%(σ = 1.6%)。使用大小为测试集50%的训练集时,中风患者的准确率为91.7%(σ = 3.9%),健康参与者为95.6%(σ = 1.6%)。这些有前景的结果表明,对于轻度至中度上肢损伤的中风患者,在存在上肢运动的情况下,FMG用于监测抓握可能是可行的。