Laboratory of Applied Biomechanics, Sport Sciences Department, State University of Londrina, Londrina, Brazil.
Wageningen Data Competence Center, Wageningen University and Research, Wageningen, The Netherlands.
Sci Rep. 2024 Jan 16;14(1):1379. doi: 10.1038/s41598-023-50481-x.
Knee osteoarthritis (OA) is a public health problem affecting millions of people worldwide. The intensity of the tibiofemoral contact forces is related to cartilage degeneration, and so is the importance of quantifying joint loads during daily activities. Although simulation with musculoskeletal models has been used to calculate joint loads, it demands high-cost equipment and a very time-consuming process. This study aimed to evaluate consolidated machine learning algorithms to predict tibiofemoral forces during gait analysis of healthy individuals and knee OA patients. Also, we evaluated three different datasets to train each model, considering different combinations of primary kinematic and kinetic data, and post-processing data. We evaluated 14 patients with severe unilateral knee OA and 14 healthy individuals during 3-5 gait trials. Data were split into 70% and 30% of the samples as training and test data. Test data was independently evaluated considering a mixture of pathological and healthy individuals, and only OA and Control patients. The main results showed that accurate predictions of the tibiofemoral contact forces were achieved using machine learning methods and that the predictions were sensitive to changes in the input data as training. The present study provided insights into the most promising regressions methods to predict knee contact forces representing an important starting point for the broader application of biomechanical analysis in clinical environments.
膝关节骨关节炎(OA)是一个影响全球数百万人的公共健康问题。胫骨股骨接触力的强度与软骨退化有关,因此在日常活动中量化关节负荷非常重要。尽管使用肌肉骨骼模型进行模拟已被用于计算关节负荷,但它需要昂贵的设备和非常耗时的过程。本研究旨在评估整合机器学习算法,以预测健康个体和膝骨关节炎患者步态分析中的胫骨股骨力。此外,我们评估了三个不同的数据集来训练每个模型,考虑了主要运动学和动力学数据以及后处理数据的不同组合。我们评估了 14 名患有严重单侧膝骨关节炎的患者和 14 名健康个体在 3-5 次步态试验中的情况。数据分为 70%和 30%的样本作为训练和测试数据。考虑到病理和健康个体的混合以及仅 OA 和对照患者,使用测试数据进行了独立评估。主要结果表明,使用机器学习方法可以实现对胫骨股骨接触力的准确预测,并且预测对输入数据的变化很敏感,作为训练。本研究为预测膝关节接触力提供了有价值的见解,这是将生物力学分析更广泛地应用于临床环境的重要起点。