Department of Mechanical Engineering and Construction, Universitat Jaume I, 12071 Castelló de la Plana, Spain.
Department of Bioengineering, Imperial College London, London SW7 2AZ, UK.
Sensors (Basel). 2024 Oct 18;24(20):6706. doi: 10.3390/s24206706.
Surface-electromyography (sEMG) allows investigators to detect differences in muscle activation due to hand pathologies. However, its use as a functional indicator and the challenges related to the required normalization have not been fully addressed. This study aimed to use forearm muscle sEMG signals to distinguish between healthy individuals and patients with hand osteoarthritis (HOA). sEMG data were collected from seven sensors on the forearms of twenty-one healthy women and twenty women with HOA during the Sollerman test. Amplitude-based parameters (median and range) were normalized using three methods: maximum signals during Sollerman tasks (MAX), during maximum voluntary contraction tasks (MVC), and during maximum effort grasping (GRASP). Waveform parameters (new-zero-crossing and enhanced-wavelength) were also considered. MVC and GRASP resulted in higher values in patients. Discriminant analysis showed the worst success rates in predicting HOA for amplitude-based parameters, requiring extra tasks for normalization (MVC or GRASP), while when using both amplitude (MAX) and waveform parameters and only Sollerman tasks, the success rate reached 90.2% Results show the importance of normalization methods, highlight the potential of waveform parameters as reliable pathology indicators, and suggest sEMG as a diagnostic tool. Additionally, the comparison of sEMG parameters allows the functional impact of suffering from HOA to be inferred.
表面肌电图(sEMG)可用于检测因手部疾病导致的肌肉激活差异。然而,其作为功能指标的应用以及与所需归一化相关的挑战尚未得到充分解决。本研究旨在利用前臂肌肉 sEMG 信号区分健康个体和手部骨关节炎(HOA)患者。在 Sollerman 测试中,从 21 名健康女性和 20 名手部骨关节炎患者的前臂七个传感器中采集 sEMG 数据。使用三种方法对基于幅度的参数(中位数和范围)进行归一化:Sollerman 任务期间的最大信号(MAX)、最大随意收缩任务期间的最大信号(MVC)和最大用力抓握任务期间的最大信号(GRASP)。还考虑了波形参数(新零交叉和增强波长)。MVC 和 GRASP 导致患者的数值更高。判别分析显示,基于幅度的参数预测手部骨关节炎的成功率最低,需要额外的归一化任务(MVC 或 GRASP),而当同时使用幅度(MAX)和波形参数且仅使用 Sollerman 任务时,成功率达到 90.2%。结果表明归一化方法的重要性,突出了波形参数作为可靠病理指标的潜力,并提示 sEMG 可作为诊断工具。此外,sEMG 参数的比较可推断出手部骨关节炎患者的功能影响。