Department of Mechanical Engineering, The University of Texas at Austin, Austin, Texas, United States of America.
Department of Veterans Affairs, Puget Sound Health Care System, Seattle, Washington, United States of America.
PLoS One. 2018 Feb 16;13(2):e0192950. doi: 10.1371/journal.pone.0192950. eCollection 2018.
Advanced prosthetic foot designs often incorporate mechanisms that adapt to terrain changes in real-time to improve mobility. Early identification of terrain (e.g., cross-slopes) is critical to appropriate adaptation. This study suggests that a simple classifier based on linear discriminant analysis can accurately predict a cross-slope encountered (0°, -15°, 15°) using measurements from the residual limb, primarily from the prosthesis itself. The classifier was trained and tested offline using motion capture and in-pylon sensor data collected during walking trials in mid-swing and early stance. Residual limb kinematics, especially measurements from the foot, shank and ankle, successfully predicted the cross-slope terrain with high accuracy (99%). Although accuracy decreased when predictions were made for test data instead of the training data, the accuracy was still relatively high for one input signal set (>89%) and moderate for three others (>71%). This suggests that classifiers can be designed and generalized to be effective for new conditions and/or subjects. While measurements of shank acceleration and angular velocity from only in-pylon sensors were insufficient to accurately predict the cross-slope terrain, the addition of foot and ankle kinematics from motion capture data allowed accurate terrain prediction. Inversion angular velocity and foot vertical velocity were particularly useful. As in-pylon sensor data and shank kinematics from motion capture appeared interchangeable, combining foot and ankle kinematics from prosthesis-mounted sensors with shank kinematics from in-pylon sensors may provide enough information to accurately predict the terrain.
高级假肢设计通常采用实时适应地形变化的机制,以提高移动性。早期识别地形(例如横坡)对于适当的适应至关重要。本研究表明,基于线性判别分析的简单分类器可以使用残肢(主要来自假肢本身)的测量值准确预测遇到的横坡(0°、-15°、15°)。该分类器使用运动捕捉和在中摆和早期支撑阶段行走试验中收集的支柱内传感器数据离线进行训练和测试。残肢运动学,特别是来自足部、小腿和脚踝的测量值,成功地以高精度(99%)预测了横坡地形。尽管在对测试数据而不是训练数据进行预测时准确性降低,但对于一个输入信号集(>89%)仍然相对较高,对于其他三个信号集(>71%)则为中等。这表明可以设计和推广分类器以适应新的条件和/或对象。虽然仅从支柱内传感器测量的小腿加速度和角速度不足以准确预测横坡地形,但添加来自运动捕捉数据的足部和脚踝运动学可以实现准确的地形预测。反转角速度和足部垂直速度特别有用。由于支柱内传感器数据和运动捕捉的小腿运动学似乎可以互换,因此将假肢安装传感器的足部和脚踝运动学与支柱内传感器的小腿运动学结合起来,可能提供足够的信息来准确预测地形。