College of Mechanical Engineering, Sichuan University, Chengdu 610065, China.
College of Mechanical and Electrical Engineering, Chengdu University of Technology, Chengdu 610059, China.
Sensors (Basel). 2024 Aug 11;24(16):5189. doi: 10.3390/s24165189.
Sarcopenia is an age-related syndrome characterized by the loss of skeletal muscle mass and function. Community screening, commonly used in early diagnosis, usually lacks features such as real-time monitoring, low cost, and convenience. This study introduces a promising approach to sarcopenia screening by dynamic plantar pressure monitoring. We propose a wearable flexible-printed piezoelectric sensing array incorporating barium titanate thin films. Utilizing a flexible printer, we fabricate the array with enhanced compressive strength and measurement range. Signal conversion circuits convert charge signals of the sensors into voltage signals, which are transmitted to a mobile phone via Bluetooth after processing. Through cyclic loading, we obtain the average voltage sensitivity (4.844 mV/kPa) of the sensing array. During a 6 m walk, the dynamic plantar pressure features of 51 recruited participants are extracted, including peak pressures for both sarcopenic and control participants before and after weight calibration. Statistical analysis discerns feature significance between groups, and five machine learning models are employed to screen for sarcopenia with the collected features. The results show that the features of dynamic plantar pressure have great potential in early screening of sarcopenia, and the Support Vector Machine model after feature selection achieves a high accuracy of 93.65%. By combining wearable sensors with machine learning techniques, this study aims to provide more convenient and effective sarcopenia screening methods for the elderly.
肌肉减少症是一种与年龄相关的综合征,其特征是骨骼肌质量和功能的丧失。社区筛查通常用于早期诊断,但缺乏实时监测、低成本和方便等特点。本研究通过动态足底压力监测介绍了一种有前途的肌肉减少症筛查方法。我们提出了一种可穿戴的柔性印刷压电传感阵列,该阵列结合了钛酸钡薄膜。我们利用柔性打印机制造了具有增强抗压强度和测量范围的阵列。信号转换电路将传感器的电荷信号转换为电压信号,经过处理后通过蓝牙传输到移动电话。通过循环加载,我们获得了传感阵列的平均电压灵敏度(4.844 mV/kPa)。在 6 米步行过程中,提取了 51 名招募参与者的动态足底压力特征,包括在体重校准前后肌少症和对照组参与者的峰值压力。统计分析区分了组间特征的显著性,并且使用五个机器学习模型对采集到的特征进行肌少症筛查。结果表明,动态足底压力特征在肌少症的早期筛查中具有很大的潜力,经过特征选择的支持向量机模型达到了 93.65%的高精度。本研究旨在通过将可穿戴传感器与机器学习技术相结合,为老年人提供更方便、更有效的肌少症筛查方法。