老年肌肉减少症的AI分类系统

Yu-Ting Hung, Bo Liu, Yang-Cheng Lin
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引用次数: 0

摘要

世界逐渐进入老龄化社会,每年都有很多老年人死于跌倒,肌肉减少症是老年人跌倒的主要原因之一。因此,我们提出了一种新颖的方法,由台湾一家初创公司(Ai Free)开发的智能康复膝关节支架,收集了台湾当地台南社区55-70岁老年患者的755个数据。提取患者的肌电信号和六轴传感器值。根据肌肉力量的均方根(RMS)值,以肌肉疲劳的平均频率(MNF)和六轴传感器的y方向加速度作为训练数据。本研究采用带通滤波技术对表面肌电信号和六轴信号进行截取和滤波。随后,以30 Hz的采样率提取10秒数据集进行进一步分析和处理。共汇编了10 048组数据集并用作数据库。我们成功地训练了决策树(DT)的准确率为93.56%,支持向量机(SVM)的准确率为81.56%,随机森林(RF)的准确率为96.37%,k最近邻(KNN)的准确率为89.65%,朴素贝叶斯(Naive Bayes)的准确率为75.52%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Classification System on Sarcopenia for Elderly
The world has gradually entered an aging society, and many older people die of falls every year with sarcopenia being one of the main reasons for the elderly to fall. Thus, we present a novel approach with an intelligent rehabilitation knee brace developed by a Taiwanese start-up company (Ai Free) which collected 755 data from 55–70 age older patients in a local Tainan community in Taiwan. EMG signals and six-axis sensor values were extracted from the patients. According to the root mean square (RMS) value for muscle strength, the mean frequency (MNF) of muscle fatigue, and the Y-direction acceleration of the six-axis sensor were used as training data. In this study, a band-pass filtering technique was used to intercept and filter the sEMG and six-axis signals. Subsequently, a 10-second dataset was extracted at a sampling rate of 30 Hz for further analysis and processing. A total of 10,048 data sets were compiled and used as a database. We succeeded in training the decision tree (DT) at 93.56%, support vector machine (SVM) at 81.56%, random forest (RF) at 96.37%, K-nearest neighbor (KNN) at 89.65%, and Naive Bayes at 75.52% accuracy.
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