Dey Sharmita, Yoshida Takashi, Schilling Arndt F
Applied Rehabilitation Technology Lab (ART-Lab), Department of Trauma Surgery, Orthopedics and Plastic Surgery, University Medical Center Göttingen, Göttingen, Germany.
Front Bioeng Biotechnol. 2020 Aug 7;8:855. doi: 10.3389/fbioe.2020.00855. eCollection 2020.
Intelligent control strategies for active biomimetic prostheses could exploit the inter-joint coordination of limbs in human gait in order to mimic the functioning of a biological joint. A machine learning regression model could be employed to learn an input-output relationship between the coordinated limb motion in human gait and predict the motion of a particular limb/joint given the motion of other limbs/joints. Such a model could be potentially used as a controller for an intelligent prosthesis which aims to restore the functioning similar to an intact biological joint. For this, the model needs to be tailored for each user by learning the gait pattern specific to the user. The challenge of training such machine learning regression models in prosthetic control is that, the desired reference output cannot be obtained from an amputee due to the missing limb. In this study, we investigate the feasibility of using two different methods for training a random forest algorithm using incomplete amputee-specific data to predict the ankle kinematics and dynamics from hip, knee, and shank kinematics. First is an inter-subject approach which learns a generalized input-output relationship from a group of able-bodied individuals and then applies this generalized relationship to amputees. Second is a subject-specific approach which maps the amputee's inputs to a desired normative reference output calculated from able-bodied individuals. The subject-specific model outperformed the inter-subject model in predicting the ankle angle and moment in most cases and can be potentially used for devising a control strategy for an intelligent biomimetic ankle.
主动仿生假肢的智能控制策略可以利用人类步态中肢体的关节间协调,以模仿生物关节的功能。可以采用机器学习回归模型来学习人类步态中肢体协调运动之间的输入输出关系,并在给定其他肢体/关节运动的情况下预测特定肢体/关节的运动。这样的模型有可能用作智能假肢的控制器,旨在恢复类似于完整生物关节的功能。为此,需要通过学习特定于用户的步态模式为每个用户定制模型。在假肢控制中训练这种机器学习回归模型的挑战在于,由于肢体缺失,无法从截肢者那里获得期望的参考输出。在本研究中,我们调查了使用两种不同方法训练随机森林算法的可行性,该算法使用不完整的特定截肢者数据从髋部、膝盖和小腿运动学预测踝关节的运动学和动力学。第一种是受试者间方法,它从一组健全个体中学习广义的输入输出关系,然后将这种广义关系应用于截肢者。第二种是特定于受试者的方法,它将截肢者的输入映射到根据健全个体计算出的期望规范参考输出。在大多数情况下,特定于受试者的模型在预测踝关节角度和力矩方面优于受试者间模型,并且有可能用于设计智能仿生踝关节的控制策略。