Department of Biomedical Engineering, Tel Aviv University, Tel Aviv, Israel.
Medical Corps, Israel Defense Forces, Ramat Gan, Israel.
PLoS One. 2024 Feb 15;19(2):e0298304. doi: 10.1371/journal.pone.0298304. eCollection 2024.
The use of wearable sensors for real-time monitoring of exercise-related measures has been extensively studied in recent years (e.g., performance enhancement, optimizing athlete's training, and preventing injuries). Surface electromyography (sEMG), which measures muscle activity, is a widely researched technology in exercise monitoring. However, due to their cumbersome nature, traditional sEMG electrodes are limited. In particular, facial EMG (fEMG) studies in physical training have been limited, with some scarce evidence suggesting that fEMG may be used to monitor exercise-related measurements. Altogether, sEMG recordings from facial muscles in the context of exercise have been examined relatively inadequately. In this feasibility study, we assessed the ability of a new wearable sEMG technology to measure facial muscle activity during exercise. Six young, healthy, and recreationally active participants (5 females), performed an incremental cycling exercise test until exhaustion, while facial sEMG and vastus lateralis (VL) EMG were measured. Facial sEMG signals from both natural expressions and voluntary smiles were successfully recorded. Stable recordings and high-resolution facial muscle activity mapping were achieved during different exercise intensities until exhaustion. Strong correlations were found between VL and multiple facial muscles' activity during voluntary smiles during exercise, with statistically significant coefficients ranging from 0.80 to 0.95 (p<0.05). This study demonstrates the feasibility of monitoring facial muscle activity during exercise, with potential implications for sports medicine and exercise physiology, particularly in monitoring exercise intensity and fatigue.
近年来,人们广泛研究了可穿戴传感器在实时监测与运动相关的测量方面的应用(例如,提高表现、优化运动员训练和预防损伤)。表面肌电图(sEMG)测量肌肉活动,是运动监测中广泛研究的技术。然而,由于其繁琐的性质,传统的 sEMG 电极受到限制。特别是,在体育训练中的面部肌电图(fEMG)研究受到限制,一些稀缺的证据表明 fEMG 可能用于监测与运动相关的测量。总的来说,在运动背景下对面部肌肉的 sEMG 记录研究不够充分。在这项可行性研究中,我们评估了一种新的可穿戴 sEMG 技术在运动中测量面部肌肉活动的能力。六名年轻、健康和有运动爱好的参与者(5 名女性)进行了递增式自行车运动测试,直至力竭,同时测量了面部 sEMG 和股外侧肌(VL)的 EMG。成功记录了自然表情和自愿微笑时的面部 sEMG 信号。在不同的运动强度下,直至力竭,均实现了稳定的记录和高分辨率的面部肌肉活动映射。在自愿微笑时,VL 和多个面部肌肉的活动之间发现了很强的相关性,统计学上显著的系数范围从 0.80 到 0.95(p<0.05)。这项研究表明,在运动中监测面部肌肉活动是可行的,这对运动医学和运动生理学具有潜在的影响,特别是在监测运动强度和疲劳方面。