Laboratory of Bioengineering, Department of Electrical, Computer and Biomedical Engineering, University of Pavia, 27100 Pavia, Italy.
Department of Research and Development, LUNEX International University of Health, Exercise and Sports, Avenue du Parc des Sports, 50, 4671 Differdange, Luxembourg.
Sensors (Basel). 2024 Oct 16;24(20):6666. doi: 10.3390/s24206666.
Lower limb exoskeletons represent a relevant tool for rehabilitating gait in patients with lower limb movement disorders. Partial assistance exoskeletons adaptively provide the joint torque needed, on top of that produced by the patient, for a correct and stable gait, helping the patient to recover an autonomous gait. Thus, the device needs to identify the different phases of the gait cycle to produce precisely timed commands that drive its joint motors appropriately. In this study, EMG signals have been used for gait phase detection considering that EMG activations lead limb kinematics by at least 120 ms. We propose a deep learning model based on bidirectional LSTM to identify stance and swing gait phases from EMG data. We built a dataset of EMG signals recorded at 1500 Hz from four muscles from the dominant leg in a population of 26 healthy subjects walking overground (WO) and walking on a treadmill (WT) using a lower limb exoskeleton. The data were labeled with the corresponding stance or swing gait phase based on limb kinematics provided by inertial motion sensors. The model was studied in three different scenarios, and we explored its generalization abilities and evaluated its applicability to the online processing of EMG data. The training was always conducted on 500-sample sequences from WO recordings of 23 subjects. Testing always involved WO and WT sequences from the remaining three subjects. First, the model was trained and tested on 500 Hz EMG data, obtaining an overall accuracy on the WO and WT test datasets of 92.43% and 91.16%, respectively. The simulation of online operation required 127 ms to preprocess and classify one sequence. Second, the trained model was evaluated against a test set built on 1500 Hz EMG data. The accuracies were lower, yet the processing times were 11 ms faster. Third, we partially retrained the model on a subset of the 1500 Hz training dataset, achieving 87.17% and 89.64% accuracy on the 1500 Hz WO and WT test sets, respectively. Overall, the proposed deep learning model appears to be a valuable candidate for entering the control pipeline of a lower limb rehabilitation exoskeleton in terms of both the achieved accuracy and processing times.
下肢外骨骼是一种用于康复下肢运动障碍患者步态的重要工具。部分辅助外骨骼自适应地提供关节扭矩,以帮助患者恢复自主步态。因此,该设备需要识别步态周期的不同阶段,以产生精确定时的命令,从而适当驱动其关节电机。在这项研究中,考虑到肌电图激活至少领先肢体运动学 120ms,我们使用肌电图信号来进行步态阶段检测。我们提出了一种基于双向 LSTM 的深度学习模型,用于从肌电图数据中识别站立和摆动步态阶段。我们构建了一个数据集,该数据集由 26 名健康受试者在地面(WO)和使用下肢外骨骼在跑步机(WT)上行走时,从优势腿的四块肌肉以 1500Hz 记录的肌电图信号组成。这些数据根据惯性运动传感器提供的相应站立或摆动步态阶段进行了标记。该模型在三种不同的场景中进行了研究,我们探索了其泛化能力,并评估了其在肌电图数据的在线处理中的适用性。训练始终在 23 名受试者的 WO 记录的 500 个样本序列上进行。测试始终涉及其余三名受试者的 WO 和 WT 序列。首先,我们在 500Hz 的肌电图数据上对模型进行了训练和测试,在 WO 和 WT 测试数据集上的整体准确性分别为 92.43%和 91.16%。在线操作的模拟需要 127ms 来预处理和分类一个序列。其次,我们在基于 1500Hz 肌电图数据的测试集上评估了经过训练的模型。准确性较低,但处理时间快了 11ms。最后,我们在 1500Hz 训练数据集的子集上部分重新训练了模型,在 1500Hz WO 和 WT 测试集上的准确性分别达到 87.17%和 89.64%。总的来说,基于所达到的准确性和处理时间,所提出的深度学习模型似乎是下肢康复外骨骼控制管道的一个有价值的候选者。