Kwon Michelle P, Hullfish Todd J, Humbyrd Casey J, Boakye Lorraine A T, Baxter Josh R
medRxiv. 2023 Jun 5:2023.06.03.23290612. doi: 10.1101/2023.06.03.23290612.
Achilles tendon injuries are treated with progressive weight bearing to promote tendon healing and restore function. Patient rehabilitation progression are typically studied in controlled, lab settings and do not represent the long-term loading experienced during daily living. The purpose of this study is to develop a wearable paradigm to accurately monitor Achilles tendon loading and walking speed using low-cost sensors that reduce subject burden. Ten healthy adults walked in an immobilizing boot under various heel wedge conditions (30°, 5°, 0°) and walking speeds. Three-dimensional motion capture, ground reaction force, and 6-axis inertial measurement unit (IMU) signals were collected per trial. We used Least Absolute Shrinkage and Selection Operator (LASSO) regression to predict peak Achilles tendon load and walking speed. The effects of using only accelerometer data, different sampling frequency, and multiple sensors to train the model were also explored. Walking speed models outperformed (mean absolute percentage error (MAPE): 8.41 ± 4.08%) tendon load models (MAPE: 33.93 ± 23.9%). Models trained with subject-specific data performed significantly better than generalized models. For example, our personalized model that was trained with only subject-specific data predicted tendon load with a 11.5 ± 4.41% MAPE and walking speed with a 4.50 ± 0.91% MAPE. Removing gyroscope channels, decreasing sampling frequency, and using combinations of sensors had inconsequential effects on models performance (changes in MAPE < 6.09%). We developed a simple monitoring paradigm that uses LASSO regression and wearable sensors to accurately predict Achilles tendon loading and walking speed while ambulating in an immobilizing boot. This paradigm provides a clinically implementable strategy to longitudinally monitor patient loading and activity while recovering from Achilles tendon injuries.
跟腱损伤采用渐进性负重治疗,以促进肌腱愈合并恢复功能。患者康复进展通常在受控的实验室环境中进行研究,并不代表日常生活中所经历的长期负荷。本研究的目的是开发一种可穿戴模式,使用低成本传感器准确监测跟腱负荷和步行速度,以减轻受试者负担。十名健康成年人在不同足跟楔形条件(30°、5°、0°)和步行速度下穿着固定靴行走。每次试验收集三维运动捕捉、地面反作用力和六轴惯性测量单元(IMU)信号。我们使用最小绝对收缩和选择算子(LASSO)回归来预测跟腱峰值负荷和步行速度。还探讨了仅使用加速度计数据、不同采样频率以及多个传感器训练模型的效果。步行速度模型的表现优于跟腱负荷模型(平均绝对百分比误差(MAPE):8.41±4.08%)(MAPE:33.93±23.9%)。使用特定受试者数据训练的模型表现明显优于通用模型。例如,我们仅使用特定受试者数据训练的个性化模型预测跟腱负荷的MAPE为11.5±4.41%,预测步行速度的MAPE为4.50±0.91%。去除陀螺仪通道、降低采样频率以及使用传感器组合对模型性能的影响微不足道(MAPE变化<6.09%)。我们开发了一种简单的监测模式,该模式使用LASSO回归和可穿戴传感器在穿着固定靴行走时准确预测跟腱负荷和步行速度。这种模式提供了一种临床可实施的策略,用于在跟腱损伤恢复过程中纵向监测患者的负荷和活动情况。