Hwang Ui-Jae, Chung Kyu Sung, Ha Sung-Min
Department of Rehabilitation Sciences, Hong Kong Polytechnic University, Hung Hom, Hong Kong.
Hanyang University Guri Hospital, Department of Orthopaedic Surgery, Hanyang University, Guri-si, Gyeonggi-do, Republic of South Korea.
PeerJ. 2025 May 27;13:e19471. doi: 10.7717/peerj.19471. eCollection 2025.
Early detection of knee osteoarthritis is crucial for improving patient outcomes. While conventional imaging methods often fail to detect early changes and require specialized expertise for interpretation, this study aimed to investigate the use of frontal plane kinematic data during step-up (SU) and step-down (SD) tests to classify and predict early osteoarthritis (EOA) using machine-learning techniques.
Forty-three recreational table tennis players (eighty-six legs: 42 with EOA and 44 without EOA) underwent SU and SD tests. Frontal plane kinematics was analyzed using two-dimensional video analysis with markers placed at five key anatomical landmarks. Horizontal displacement measurements were compared between groups using independent -tests. Unsupervised learning (Louvain clustering) was used to identify distinct movement patterns, whereas supervised learning algorithms were employed to classify EOA status. The feature importance was assessed using feature permutation importance (FPI).
Significant differences were observed between EOA and non-EOA groups in frontal plane kinematics during SU and SD tests ( < 0.001 for most variables). Louvain clustering identified four distinct kinematic profiles with varying proportions of EOA (ranging from 41.2% to 70.7%). Supervised learning models achieved high performance in classifying EOA status, with Random Forest, gradient boosting, and decision tree algorithms achieving 100% classification accuracy (AUC = 1.000) on the test dataset. FPI consistently highlighted the horizontal displacements of the ankle and femur during SU and of the pelvis and femur during SD as the most influential predictors.
Machine-learning analysis of frontal plane kinematics during SU and SD tests showed promising potential for EOA detection and classification, offering a cost-effective and accessible alternative to conventional imaging-based approaches.
早期发现膝关节骨关节炎对于改善患者预后至关重要。传统成像方法往往无法检测到早期变化,且需要专业知识进行解读,本研究旨在调查在踏上(SU)和踏下(SD)测试过程中使用额面运动学数据,运用机器学习技术对早期骨关节炎(EOA)进行分类和预测。
43名业余乒乓球运动员(86条腿:42条患有EOA,44条未患EOA)接受了SU和SD测试。使用二维视频分析对额面运动学进行分析,在五个关键解剖标志点放置标记。使用独立样本t检验比较组间水平位移测量值。采用无监督学习(Louvain聚类)来识别不同的运动模式,而监督学习算法则用于对EOA状态进行分类。使用特征排列重要性(FPI)评估特征重要性。
在SU和SD测试过程中,EOA组和非EOA组在额面运动学方面存在显著差异(大多数变量P<0.001)。Louvain聚类识别出四种不同的运动学特征,EOA的比例各不相同(范围从41.2%到70.7%)。监督学习模型在对EOA状态进行分类方面表现出高性能,随机森林、梯度提升和决策树算法在测试数据集上的分类准确率达到100%(AUC = 1.000)。FPI始终突出显示在SU期间踝关节和股骨以及SD期间骨盆和股骨的水平位移是最有影响力的预测因素。
对SU和SD测试期间的额面运动学进行机器学习分析显示出在EOA检测和分类方面具有广阔的潜力,为基于传统成像的方法提供了一种经济高效且易于获得的替代方案。