Sarmah Arnab, Boruah Lipika, Ito Satoshi, Kanagaraj Subramani
Department of Mechanical Engineering, Indian Institute of Technology Guwahati, Guwahati, India.
Graduate School of Engineering, Gifu University, Gifu, Japan.
Front Bioeng Biotechnol. 2024 Jul 31;12:1401153. doi: 10.3389/fbioe.2024.1401153. eCollection 2024.
Osteoarthritis (OA) is a highly prevalent global musculoskeletal disorder, and knee OA (KOA) accounts for four-fifths of the cases worldwide. It is a degenerative disorder that greatly affects the quality of life. Thus, it is managed through different methods, such as weight loss, physical therapy, and knee arthroplasty. Physical therapy aims to strengthen the knee periarticular muscles to improve joint stability.
Pedobarographic data and pelvis and trunk motion of 56 adults are recorded. Among them, 28 subjects were healthy, and 28 subjects were suffering from varying degrees of KOA. Age, sex, BMI, and the recorded variables are used together to identify subjects with KOA using machine learning (ML) models, namely, logistic regression, SVM, decision tree, and random forest. Surface electromyography (sEMG) signals are also recorded bilaterally from two muscles, the rectus femoris and biceps femoris caput longus, bilaterally during various activities for two healthy and six KOA subjects. Cluster analysis is then performed using the principal components obtained from time-series features, frequency features, and time-frequency features.
KOA is successfully identified using the pedobarographic data and the pelvis and trunk motion with the highest accuracy and sensitivity of 89.3% and 85.7%, respectively, using a decision tree classifier. In addition, sEMG data have been successfully used to cluster healthy subjects from KOA subjects, with wavelet analysis features providing the best performance for the standing activity under different conditions.
KOA is detected using gait variables not directly related to the knee, such as pedobarographic measurements and pelvis and trunk motion captured by pedobarography mats and wearable sensors, respectively. KOA subjects are also distinguished from healthy individuals through clustering analysis using sEMG data from knee periarticular muscles during walking and standing. Gait data and sEMG complement each other, aiding in KOA identification and rehabilitation monitoring. It is important because wearable sensors simplify data collection, require minimal sample preparation, and offer a non-radiographic, safe method suitable for both laboratory and real-world scenarios. The decision tree classifier, trained with stratified k-fold cross validation (SKCV) data, is observed to be the best for KOA identification using gait data.
骨关节炎(OA)是一种在全球范围内高度流行的肌肉骨骼疾病,其中膝关节骨关节炎(KOA)占全球病例的五分之四。它是一种退行性疾病,极大地影响生活质量。因此,可通过不同方法进行治疗,如减肥、物理治疗和膝关节置换术。物理治疗旨在增强膝关节周围肌肉,以提高关节稳定性。
记录了56名成年人的足底压力数据以及骨盆和躯干运动情况。其中,28名受试者健康,28名受试者患有不同程度的KOA。年龄、性别、体重指数以及记录的变量共同用于通过机器学习(ML)模型,即逻辑回归、支持向量机、决策树和随机森林,来识别KOA受试者。还在两名健康受试者和六名KOA受试者进行各种活动期间,从股直肌和股二头肌长头这两块肌肉双侧记录表面肌电图(sEMG)信号。然后使用从时间序列特征、频率特征和时频特征获得的主成分进行聚类分析。
使用决策树分类器,通过足底压力数据以及骨盆和躯干运动成功识别出KOA,其最高准确率和灵敏度分别为89.3%和85.7%。此外,sEMG数据已成功用于将健康受试者与KOA受试者聚类,小波分析特征在不同条件下的站立活动中表现最佳。
使用与膝关节无直接关联的步态变量,如分别由足底压力测量以及足底压力垫和可穿戴传感器捕获的骨盆和躯干运动,可检测出KOA。在行走和站立期间,通过使用来自膝关节周围肌肉的sEMG数据进行聚类分析,也可将KOA受试者与健康个体区分开来。步态数据和sEMG相互补充,有助于KOA的识别和康复监测。这很重要,因为可穿戴传感器简化了数据收集,所需样本制备最少,并提供了一种适用于实验室和现实场景的非放射性、安全的方法。观察到,使用分层k折交叉验证(SKCV)数据训练的决策树分类器在使用步态数据识别KOA方面表现最佳。