Biomedical Engineering Department, Faculty of Engineering, University of Malaya, Kuala Lumpur, Malaysia.
Biomedical Engineering Department, Faculty of Engineering, University of Malaya, 50603, Kuala Lumpur, Malaysia.
Biomed Tech (Berl). 2020 Oct 25;65(5):567-576. doi: 10.1515/bmt-2018-0249.
A transfemoral prosthesis is required to assist amputees to perform the activity of daily living (ADL). The passive prosthesis has some drawbacks such as utilization of high metabolic energy. In contrast, the active prosthesis consumes less metabolic energy and offers better performance. However, the recent active prosthesis uses surface electromyography as its sensory system which has weak signals with microvolt-level intensity and requires a lot of computation to extract features. This paper focuses on recognizing different phases of sitting and standing of a transfemoral amputee using in-socket piezoelectric-based sensors. 15 piezoelectric film sensors were embedded in the inner socket wall adjacent to the most active regions of the agonist and antagonist knee extensor and flexor muscles, i. e. region with the highest level of muscle contractions of the quadriceps and hamstring. A male transfemoral amputee wore the instrumented socket and was instructed to perform several sitting and standing phases using an armless chair. Data was collected from the 15 embedded sensors and went through signal conditioning circuits. The overlapping analysis window technique was used to segment the data using different window lengths. Fifteen time-domain and frequency-domain features were extracted and new feature sets were obtained based on the feature performance. Eight of the common pattern recognition multiclass classifiers were evaluated and compared. Regression analysis was used to investigate the impact of the number of features and the window lengths on the classifiers' accuracies, and Analysis of Variance (ANOVA) was used to test significant differences in the classifiers' performances. The classification accuracy was calculated using k-fold cross-validation method, and 20% of the data set was held out for testing the optimal classifier. The results showed that the feature set (FS-5) consisting of the root mean square (RMS) and the number of peaks (NP) achieved the highest classification accuracy in five classifiers. Support vector machine (SVM) with cubic kernel proved to be the optimal classifier, and it achieved a classification accuracy of 98.33 % using the test data set. Obtaining high classification accuracy using only two time-domain features would significantly reduce the processing time of controlling a prosthesis and eliminate substantial delay. The proposed in-socket sensors used to detect sit-to-stand and stand-to-sit movements could be further integrated with an active knee joint actuation system to produce powered assistance during energy-demanding activities such as sit-to-stand and stair climbing. In future, the system could also be used to accurately predict the intended movement based on their residual limb's muscle and mechanical behaviour as detected by the in-socket sensory system.
为了帮助截肢者进行日常生活活动(ADL),需要使用经股假肢。被动假肢有一些缺点,例如消耗大量代谢能量。相比之下,主动假肢消耗的代谢能量更少,性能更好。然而,最近的主动假肢使用表面肌电图作为其传感器系统,其信号强度为微伏级,需要大量计算来提取特征。本文专注于使用嵌入式套鞋中的基于压电的传感器来识别经股截肢者的不同坐站阶段。15 个压电薄膜传感器被嵌入到靠近股四头肌和腘绳肌主动伸展和弯曲肌肉最活跃区域的内套壁上,即股四头肌和腘绳肌收缩程度最高的区域。一名经股截肢男性佩戴了带有嵌入式传感器的义肢,并在无臂椅子上进行了几次坐站阶段的指导。从 15 个嵌入式传感器中收集数据,并通过信号调理电路进行处理。重叠分析窗口技术用于使用不同的窗口长度对数据进行分段。提取了 15 个时域和频域特征,并基于特征性能获得了新的特征集。评估和比较了 8 种常用的模式识别多类分类器。回归分析用于研究特征数量和窗口长度对分类器准确性的影响,方差分析(ANOVA)用于测试分类器性能的显著差异。使用 k 折交叉验证法计算分类准确性,并将数据集的 20%留出用于测试最优分类器。结果表明,由均方根(RMS)和峰值数(NP)组成的特征集(FS-5)在五个分类器中具有最高的分类准确性。立方核支持向量机(SVM)被证明是最优分类器,使用测试数据集可实现 98.33%的分类准确性。仅使用两个时域特征即可获得高分类准确性,这将显著减少控制假肢的处理时间并消除大量延迟。用于检测坐站和站坐运动的嵌入式传感器可以进一步与主动膝关节驱动系统集成,以便在能量消耗大的活动(如坐站和爬楼梯)中提供动力辅助。未来,该系统还可以根据嵌入式传感器系统检测到的残肢肌肉和机械行为,准确预测预期的运动。