IEEE Trans Biomed Eng. 2024 Sep;71(9):2718-2727. doi: 10.1109/TBME.2024.3388874. Epub 2024 Aug 21.
Real-time measurement of biological joint moment could enhance clinical assessments and generalize exoskeleton control. Accessing joint moments outside clinical and laboratory settings requires harnessing non-invasive wearable sensor data for indirect estimation. Previous approaches have been primarily validated during cyclic tasks, such as walking, but these methods are likely limited when translating to non-cyclic tasks where the mapping from kinematics to moments is not unique.
We trained deep learning models to estimate hip and knee joint moments from kinematic sensors, electromyography (EMG), and simulated pressure insoles from a dataset including 10 cyclic and 18 non-cyclic activities. We assessed estimation error on combinations of sensor modalities during both activity types.
Compared to the kinematics-only baseline, adding EMG reduced RMSE by 16.9% at the hip and 30.4% at the knee (p < 0.05) and adding insoles reduced RMSE by 21.7% at the hip and 33.9% at the knee (p < 0.05). Adding both modalities reduced RMSE by 32.5% at the hip and 41.2% at the knee (p < 0.05) which was significantly higher than either modality individually (p < 0.05). All sensor additions improved model performance on non-cyclic tasks more than cyclic tasks (p < 0.05).
These results demonstrate that adding kinetic sensor information through EMG or insoles improves joint moment estimation both individually and jointly. These additional modalities are most important during non-cyclic tasks, tasks that reflect the variable and sporadic nature of the real-world.
Improved joint moment estimation and task generalization is pivotal to developing wearable robotic systems capable of enhancing mobility in everyday life.
实时测量生物关节力矩可以增强临床评估并推广外骨骼控制。在临床和实验室环境之外获取关节力矩需要利用非侵入性可穿戴传感器数据进行间接估计。以前的方法主要在循环任务(如行走)中进行了验证,但当这些方法转化为非循环任务时,由于运动学到力矩的映射不唯一,这些方法可能受到限制。
我们使用包括 10 种循环活动和 18 种非循环活动在内的数据集,通过训练深度学习模型来估计来自运动学传感器、肌电图(EMG)和模拟压力鞋垫的髋关节和膝关节关节力矩。我们评估了在这两种活动类型下各种传感器模式的组合的估计误差。
与仅运动学基线相比,添加 EMG 可使髋关节和膝关节的 RMSE 分别降低 16.9%和 30.4%(p < 0.05),添加鞋垫可使髋关节和膝关节的 RMSE 分别降低 21.7%和 33.9%(p < 0.05)。添加两种模式可使髋关节和膝关节的 RMSE 分别降低 32.5%和 41.2%(p < 0.05),明显高于任何一种模式单独使用的效果(p < 0.05)。所有传感器的添加都提高了非循环任务的模型性能,优于循环任务(p < 0.05)。
这些结果表明,通过 EMG 或鞋垫添加运动学传感器信息可单独和联合提高关节力矩估计。这些附加模式在非循环任务中最为重要,这些任务反映了现实世界中多变和零星的性质。
改善关节力矩估计和任务泛化对于开发能够增强日常生活中移动能力的可穿戴机器人系统至关重要。