College of Computer Science and Software Engineering, Shenzhen University, Shenzhen 518061, China.
Department of Psychology, University of Wisconsin-Milwaukee, Milwaukee, WI 53211, USA.
Biosensors (Basel). 2022 Dec 30;13(1):61. doi: 10.3390/bios13010061.
Strengthening muscles can reduce body fat, increase lean muscle mass, maintain independence while aging, manage chronic conditions, and improve balance, reducing the risk of falling. The most critical factor inducing effectiveness in strength training is neuromuscular connection by adopting attentional focus during training. However, this is troublesome for end users since numerous fitness tracking devices or applications do not provide the ability to track the effectiveness of users' workout at the neuromuscular level. A practical approach for detecting attentional focus by assessing neuromuscular activity through biosignals has not been adequately evaluated. The challenging task to make the idea work in a real-world scenario is to minimize the cost and size of the clinical device and use a recognition system for muscle contraction to ensure a good user experience. We then introduce a multitasking and multiclassification network and an EMG shirt attached with noninvasive sensing electrodes that firmly fit to the body's surface, measuring neuron muscle activity during exercise. Our study exposes subjects to standard free-weight exercises focusing on isolated and compound muscle on the upper limb. The results of the experiment show a 94.79% average precision at different maximum forces of attentional focus conditions. Furthermore, the proposed system can perform at different lifting weights of 67% and 85% of a person's 1RM to recognize individual exercise effectiveness at the muscular level, proving that adopting attentional focus with low-intensity exercise can activate more upper-limb muscle contraction.
增强肌肉可以减少体脂,增加瘦肌肉量,在衰老过程中保持独立性,管理慢性疾病,提高平衡能力,降低跌倒风险。在力量训练中,最关键的因素是通过在训练中集中注意力来实现神经肌肉连接,从而提高效果。然而,对于终端用户来说,这很麻烦,因为许多健身追踪设备或应用程序无法跟踪用户在神经肌肉水平上的锻炼效果。通过生物信号评估神经肌肉活动来检测注意力集中的实用方法尚未得到充分评估。在实际场景中使这个想法发挥作用的挑战性任务是最小化临床设备的成本和尺寸,并使用肌肉收缩识别系统来确保良好的用户体验。然后,我们引入了一个多任务和多分类网络以及一个 EMG 衬衫,该衬衫附有非侵入式感应电极,可以牢固地贴合身体表面,在运动过程中测量神经元肌肉活动。我们的研究让受试者进行标准的自由重量练习,重点是上肢的孤立和复合肌肉。实验结果显示,在不同的注意力集中条件下,平均精度达到 94.79%。此外,该系统可以在不同的举重重量下(67%和 85%的 1RM)运行,以识别肌肉层面的个体运动效果,证明采用低强度运动的注意力集中可以激活更多的上肢肌肉收缩。