Boston University Chobanian & Avedisian School of Medicine, 650 Albany Street, Suite X200, Boston, MA, 02118, USA.
Tel Aviv University, Tel Aviv, Israel.
Sci Rep. 2022 Dec 23;12(1):22200. doi: 10.1038/s41598-022-21142-2.
Gait alterations in those with mild unilateral knee pain during walking may provide clues to modifiable alterations that affect progression of knee pain and osteoarthritis (OA). To examine this, we applied machine learning (ML) approaches to gait data from wearable sensors in a large observational knee OA cohort, the Multicenter Osteoarthritis (MOST) study. Participants completed a 20-m walk test wearing sensors on their trunk and ankles. Parameters describing spatiotemporal features of gait and symmetry, variability and complexity were extracted. We used an ensemble ML technique ("super learning") to identify gait variables in our cross-sectional data associated with the presence/absence of unilateral knee pain. We then used logistic regression to determine the association of selected gait variables with odds of mild knee pain. Of 2066 participants (mean age 63.6 [SD: 10.4] years, 56% female), 21.3% had mild unilateral pain while walking. Gait parameters selected in the ML process as influential included step regularity, sample entropy, gait speed, and amplitude dominant frequency, among others. In adjusted cross-sectional analyses, lower levels of step regularity (i.e., greater gait variability) and lower sample entropy(i.e., lower gait complexity) were associated with increased likelihood of unilateral mild pain while walking [aOR 0.80 (0.64-1.00) and aOR 0.79 (0.66-0.95), respectively].
在行走过程中,患有轻度单侧膝关节疼痛的人步态的改变可能提供了可改变的改变线索,这些改变会影响膝关节疼痛和骨关节炎(OA)的进展。为了研究这一点,我们将机器学习(ML)方法应用于来自大型观察性膝关节 OA 队列(多中心骨关节炎(MOST)研究)中可穿戴传感器的步态数据。参与者在躯干和脚踝上佩戴传感器完成 20 米步行测试。提取描述步态时空特征、对称性、可变性和复杂性的参数。我们使用集成 ML 技术(“超级学习”)来识别我们的横断面数据中与单侧膝关节疼痛存在/不存在相关的步态变量。然后,我们使用逻辑回归来确定选定的步态变量与轻度膝关节疼痛的可能性之间的关联。在 2066 名参与者(平均年龄 63.6 [SD:10.4]岁,56%为女性)中,21.3%在行走时患有轻度单侧疼痛。在 ML 过程中选择的有影响力的步态参数包括步幅规律性、样本熵、步速和幅度主导频率等。在调整后的横断面分析中,较低的步幅规律性(即较大的步态可变性)和较低的样本熵(即较低的步态复杂性)与单侧轻度疼痛的可能性增加相关[比值比(OR)0.80(0.64-1.00)和 OR 0.79(0.66-0.95)]。