IEEE J Biomed Health Inform. 2023 Jul;27(7):3222-3233. doi: 10.1109/JBHI.2023.3268239. Epub 2023 Jun 30.
This work investigates real-time estimation of vertical ground reaction force (vGRF) and external knee extension moment (KEM) during single- and double-leg drop landings via wearable inertial measurement units (IMUs) and machine learning. A real-time, modular LSTM model with four sub-deep neural networks was developed to estimate vGRF and KEM. Sixteen subjects wore eight IMUs on the chest, waist, right and left thighs, shanks, and feet and performed drop landing trials. Ground embedded force plates and an optical motion capture system were used for model training and evaluation. During single-leg drop landings, accuracy for the vGRF and KEM estimation was R = 0.88 ± 0.12 and R = 0.84 ± 0.14, respectively, and during double-leg drop landings, accuracy for the vGRF and KEM estimation was R = 0.85 ± 0.11 and R = 0.84 ± 0.12, respectively. The best vGRF and KEM estimations of the model with the optimal LSTM unit number (130) require eight IMUs placed on the eight selected locations during single-leg drop landings. During double-leg drop landings, the best estimation on a leg only needs five IMUs placed on the chest, waist, and the leg's shank, thigh, and foot. The proposed modular LSTM-based model with optimally-configurable wearable IMUs can accurately estimate vGRF and KEM in real-time with relatively low computational cost during single- and double-leg drop landing tasks. This investigation could potentially enable in-field, non-contact anterior cruciate ligament injury risk screening and intervention training programs.
这项工作通过可穿戴惯性测量单元(IMU)和机器学习研究了单腿和双腿跳下落地过程中垂直地面反作用力(vGRF)和外部膝关节伸展力矩(KEM)的实时估计。开发了一个具有四个子深度神经网络的实时、模块化 LSTM 模型来估计 vGRF 和 KEM。16 名受试者在胸部、腰部、右大腿、左大腿、小腿和脚上佩戴了 8 个 IMU,并进行了跳下落地试验。地面嵌入式力板和光学运动捕捉系统用于模型训练和评估。在单腿跳下落地时,vGRF 和 KEM 估计的准确性分别为 R = 0.88 ± 0.12 和 R = 0.84 ± 0.14,在双腿跳下落地时,vGRF 和 KEM 估计的准确性分别为 R = 0.85 ± 0.11 和 R = 0.84 ± 0.12。在最佳 LSTM 单元数量(130)的模型中,最佳 vGRF 和 KEM 估计需要在单腿跳下落地时将 8 个 IMU 放置在 8 个选定位置上。在双腿跳下落地时,仅在一条腿上进行最佳估计需要将 5 个 IMU 放置在胸部、腰部和腿部的小腿、大腿和脚上。基于模块化 LSTM 的模型具有可优化配置的可穿戴式 IMU,可以在单腿和双腿跳下落地任务中以相对较低的计算成本实时准确地估计 vGRF 和 KEM。这项研究可能能够实现现场、非接触式前交叉韧带损伤风险筛查和干预训练计划。