National Research Council of Italy, Institute for Microelectronics and Microsystems, 73100 Lecce, Italy.
Sensors (Basel). 2022 Apr 1;22(7):2721. doi: 10.3390/s22072721.
Sarcopenia is a geriatric condition characterized by a loss of strength and muscle mass, with a high impact on health status, functional independence and quality of life in older adults. [d=TT, ]To reduce the effects of the disease, just the diagnostic is not enough, it is necessary more than recognition.To reduce the effects of the disease, it is important to recognize the level and progression of sarcopenia early. Surface electromyography is becoming increasingly relevant for the prevention and diagnosis of sarcopenia, also due to a wide diffusion of smart and minimally invasive wearable devices suitable for electromyographic monitoring. The purpose of this work is manifold. The first aim is the design and implementation of a hardware/software platform. It is based on the elaboration of surface electromyographic signals extracted from the Gastrocnemius Lateralis and Tibialis Anterior muscles, useful to analyze the strength of the muscles with the purpose of distinguishing three different "confidence" levels of sarcopenia. The second aim is to compare the efficiency of state of the art supervised classifiers in the evaluation of sarcopenia. The experimentation stage was performed on an "augmented" dataset starting from data acquired from 32 patients. The latter were distributed in an unbalanced manner on 3 "confidence" levels of sarcopenia. The obtained results in terms of classification accuracy demonstrated the ability of the proposed platform to distinguish different sarcopenia "confidence" levels, with highest accuracy value given by Support Vector Machine classifier, outperforming the other classifiers by an average of 7.7%.
肌肉减少症是一种老年疾病,其特征是力量和肌肉质量的丧失,对老年人的健康状况、功能独立性和生活质量有很大影响。[d=TT, ]为了降低疾病的影响,仅仅诊断是不够的,还需要更多的认识。为了降低疾病的影响,重要的是要及早认识到肌肉减少症的程度和进展。表面肌电图在肌肉减少症的预防和诊断中变得越来越重要,这也是由于智能和微创可穿戴设备的广泛传播,这些设备适用于肌电图监测。这项工作的目的是多方面的。第一个目标是设计和实现一个硬件/软件平台。它基于对从腓肠肌外侧和胫骨前肌提取的表面肌电信号的精心处理,这些信号有助于分析肌肉的力量,目的是区分肌肉减少症的三个不同的“置信”水平。第二个目标是比较现有监督分类器在评估肌肉减少症中的效率。实验阶段是从从 32 名患者采集的数据开始,在“增强”数据集上进行的。后者在肌肉减少症的三个“置信”水平上以不平衡的方式分布。从分类准确性方面得到的结果表明,所提出的平台有能力区分不同的肌肉减少症“置信”水平,支持向量机分类器的准确率最高,平均比其他分类器高出 7.7%。