基于多维可穿戴足底压力特征的膝骨关节炎患者功能监测:横断面研究

IF 5 Q1 GERIATRICS & GERONTOLOGY
JMIR Aging Pub Date : 2024-11-25 DOI:10.2196/58261
Junan Xie, Shilin Li, Zhen Song, Lin Shu, Qing Zeng, Guozhi Huang, Yihuan Lin
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引用次数: 0

摘要

背景:膝关节骨性关节炎(KOA)患者通常会出现下肢运动功能障碍。然而,传统的放射摄影是一种静态评估,无法实现长期的动态功能监测。足底压力信号在膝关节骨性关节炎的诊断和康复监测中具有潜在的应用价值:通过可穿戴步态分析技术,我们旨在基于机器学习技术获取丰富的步态信息,开发一种简单、快速、有效、患者友好的功能评估模型,为 KOA 康复过程提供长期的远程监测,有利于减轻社会医疗系统的负担:这项横断面研究招募了被诊断为 KOA 的患者,这些患者能够独立行走 2 分钟。参与者接受了临床推荐的功能测试,包括 40 米快步行走测试(40mFPWT)和定时起立行走测试(TUGT)。我们使用智能鞋系统收集 KOA 患者的步态压力数据。从这些数据和身体特征中提取的多维步态特征被用来为足底压力测量系统建立 KOA 功能特征数据库。使用一系列成熟的机器学习算法训练了 40mFPWT 和 TUGT 回归预测模型。此外,还采用了模型堆叠和平均集合学习方法来进一步提高模型的泛化性能。采用平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和均方根误差(RMSE)作为回归性能指标来评估不同模型的结果:共纳入了 92 名 KOA 患者,根据 Kellgren 和 Lawrence 分类法的评估,他们的病情严重程度各不相同。共提取了 380 个步态特征和 4 个身体特征,形成了特征数据库。有效的逐步特征选择为 40mFPWT 确定了 11 个变量的最佳特征子集,为 TUGT 确定了 10 个变量的最佳特征子集。在所有模型中,使用 4 个基于树的模型的加权平均集合模型在测试集中的泛化性能最好,预测 40mFPWT 的 MAE 为 2.686 秒,MAPE 为 9.602%,RMSE 为 3.316 秒;预测 TUGT 的 MAE 为 1.280 秒,MAPE 为 12.389%,RMSE 为 1.905 秒:这项可穿戴足底压力特征技术能客观量化反映功能状态的指标,有望成为对 KOA 患者进行长期远程功能监测的新工具。未来的工作需要通过更多的功能测试和更大的样本群来进一步探索和研究步态特征与功能状态之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional Monitoring of Patients With Knee Osteoarthritis Based on Multidimensional Wearable Plantar Pressure Features: Cross-Sectional Study.

Background: Patients with knee osteoarthritis (KOA) often present lower extremity motor dysfunction. However, traditional radiography is a static assessment and cannot achieve long-term dynamic functional monitoring. Plantar pressure signals have demonstrated potential applications in the diagnosis and rehabilitation monitoring of KOA.

Objective: Through wearable gait analysis technology, we aim to obtain abundant gait information based on machine learning techniques to develop a simple, rapid, effective, and patient-friendly functional assessment model for the KOA rehabilitation process to provide long-term remote monitoring, which is conducive to reducing the burden of social health care system.

Methods: This cross-sectional study enrolled patients diagnosed with KOA who were able to walk independently for 2 minutes. Participants were given clinically recommended functional tests, including the 40-m fast-paced walk test (40mFPWT) and timed up-and-go test (TUGT). We used a smart shoe system to gather gait pressure data from patients with KOA. The multidimensional gait features extracted from the data and physical characteristics were used to establish the KOA functional feature database for the plantar pressure measurement system. 40mFPWT and TUGT regression prediction models were trained using a series of mature machine learning algorithms. Furthermore, model stacking and average ensemble learning methods were adopted to further improve the generalization performance of the model. Mean absolute error (MAE), mean absolute percentage error (MAPE), and root mean squared error (RMSE) were used as regression performance metrics to evaluate the results of different models.

Results: A total of 92 patients with KOA were included, exhibiting varying degrees of severity as evaluated by the Kellgren and Lawrence classification. A total of 380 gait features and 4 physical characteristics were extracted to form the feature database. Effective stepwise feature selection determined optimal feature subsets of 11 variables for the 40mFPWT and 10 variables for the TUGT. Among all models, the weighted average ensemble model using 4 tree-based models had the best generalization performance in the test set, with an MAE of 2.686 seconds, MAPE of 9.602%, and RMSE of 3.316 seconds for the prediction of the 40mFPWT and an MAE of 1.280 seconds, MAPE of 12.389%, and RMSE of 1.905 seconds for the prediction of the TUGT.

Conclusions: This wearable plantar pressure feature technique can objectively quantify indicators that reflect functional status and is promising as a new tool for long-term remote functional monitoring of patients with KOA. Future work is needed to further explore and investigate the relationship between gait characteristics and functional status with more functional tests and in larger sample cohorts.

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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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