Kim Minjae, Simon Ann M, Hargrove Levi J
Department of Physical Medicine and Rehabilitation, Northwestern University, Evanston, IL, USA.
Center for Bionic Medicine, Shirley Ryan AbilityLab, Chicago, IL, USA.
Wearable Technol. 2022;3. doi: 10.1017/wtc.2022.19. Epub 2022 Sep 28.
Powered prosthetic legs are becoming a promising option for amputee patients. However, developing safe, robust, and intuitive control strategies for powered legs remains one of the greatest challenges. Although a variety of control strategies have been proposed, creating and fine-tuning the system parameters is time-intensive and complicated when more activities need to be restored. In this study, we developed a deep neural network (DNN) model that facilitates seamless and intuitive gait generation and transitions across five ambulation modes: level-ground walking, ascending/descending ramps, and ascending/descending stairs. The combination of latent and time sequence features generated the desired impedance parameters within the ambulation modes and allowed seamless transitions between ambulation modes. The model was applied to the open-source bionic leg and tested on unilateral transfemoral users. It achieved the overall coefficient of determination of 0.72 with the state machine-based impedance parameters in the offline testing session. In addition, users were able to perform in-laboratory ambulation modes with an overall success rate of 96% during the online testing session. The results indicate that the DNN model is a promising candidate for subject-independent and tuning-free prosthetic leg control for transfemoral amputees.
动力假肢腿正成为截肢患者一个很有前景的选择。然而,为动力假肢腿开发安全、可靠且直观的控制策略仍然是最大的挑战之一。尽管已经提出了各种控制策略,但当需要恢复更多活动时,创建和微调系统参数既耗时又复杂。在本研究中,我们开发了一种深度神经网络(DNN)模型,该模型有助于在五种行走模式(平地上行走、上下斜坡以及上下楼梯)之间实现无缝且直观的步态生成和转换。潜在特征和时间序列特征的结合在行走模式内生成了所需的阻抗参数,并允许在行走模式之间进行无缝转换。该模型应用于开源仿生腿,并在单侧大腿截肢用户身上进行了测试。在离线测试环节中,与基于状态机的阻抗参数相比,其总体决定系数达到了0.72。此外,在在线测试环节中,用户能够以96%的总体成功率进行实验室行走模式。结果表明,DNN模型是用于大腿截肢者的独立于个体且无需调整的假肢腿控制的一个很有前景的候选方案。