Abstract

A hallmark of human locomotion is that it continuously adapts to changes in the environment and predictively adjusts to changes in the terrain, both of which are major challenges to lower limb amputees due to the limitations in prostheses and control algorithms. Here, the ability of a single-network nonlinear autoregressive model to continuously predict future ankle kinematics and kinetics simultaneously across ambulation conditions using lower limb surface electromyography (EMG) signals was examined. Ankle plantarflexor and dorsiflexor EMG from ten healthy young adults were mapped to normal ranges of ankle angle and ankle moment during level overground walking, stair ascent, and stair descent, including transitions between terrains (i.e., transitions to/from staircase). Prediction performance was characterized as a function of the time between current EMG/angle/moment inputs and future angle/moment model predictions (prediction interval), the number of past EMG/angle/moment input values over time (sampling window), and the number of units in the network hidden layer that minimized error between experimentally measured values (targets) and model predictions of ankle angle and moment. Ankle angle and moment predictions were robust across ambulation conditions with root mean squared errors less than 1° and 0.04 Nm/kg, respectively, and cross-correlations (R2) greater than 0.99 for prediction intervals of 58 ms. Model predictions at critical points of trip-related fall risk fell within the variability of the ankle angle and moment targets (Benjamini-Hochberg adjusted p > 0.065). EMG contribution to ankle angle and moment predictions occurred consistently across ambulation conditions and model outputs. EMG signals had the greatest impact on noncyclic regions of gait such as double limb support, transitions between terrains, and around plantarflexion and moment peaks. The use of natural muscle activation patterns to continuously predict variations in normal gait and the model’s predictive capabilities to counteract electromechanical inherent delays suggest that this approach could provide robust and intuitive user-driven real-time control of a wide variety of lower limb robotic devices, including active powered ankle-foot prostheses.

Highlights

  • Human locomotion continuously adapts to changes in the environment to maintain balance, reacts to unpredictable perturbations, and predictively adjusts walking patterns to changes in the terrain (Pearson, 2000; Choi and Bastian, 2007)

  • EMG activity was variable across trials, occasionally exhibiting co-activation; activation patterns were consistent with the reported literature for all ambulation conditions for all participants (Selk Ghafari et al, 2009; Benedetti et al, 2012; Han et al, 2015)

  • Model error for predicting ankle angle and moment was largely unaffected by the size of the sampling window across ambulation conditions (ANOVA p > 0.009, R2 = [0.65, 0.85]) with error saturating after 33 ms (ANOVA p > 0.033, R2 = [0.81, 0.94])

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Summary

INTRODUCTION

Human locomotion continuously adapts to changes in the environment to maintain balance, reacts to unpredictable perturbations, and predictively adjusts walking patterns to changes in the terrain (Pearson, 2000; Choi and Bastian, 2007). Gupta et al proposed separate subject-specific autoregressive models for five individual terrain types (level walking, stair ascent, stair descent, ramp ascent, ramp descent) to estimate ankle angle using two able-bodied lower limb EMG signals and knee angle (Gupta et al, 2020). The subject-specific model was limited to the prediction of a single ambulation condition (level treadmill walking) and did not estimate ankle moments needed in stiffness and impedance control. The feedforward NARX model architecture was expanded to a multiple-output model that provided simultaneous estimates of future intended state of ankle angle and ankle moment across multiple ambulation conditions using lower limb surface EMG signals as input. Via lower limb EMG signals, was explored by quantifying the impact of EMG inputs on the model prediction of ankle angle and moment

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