IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2024)

Prediction of Achilles Tendon Force During Common Motor Tasks From Markerless Video

  • Zhengliang Xia,
  • Bradley M. Cornish,
  • Daniel Devaprakash,
  • Rod S. Barrett,
  • David G. Lloyd,
  • Andrea H. Hams,
  • Claudio Pizzolato

DOI
https://doi.org/10.1109/TNSRE.2024.3403092
Journal volume & issue
Vol. 32
pp. 2070 – 2077

Abstract

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Remodeling of the Achilles tendon (AT) is partly driven by its mechanical environment. AT force can be estimated with neuromusculoskeletal (NMSK) modeling; however, the complex experimental setup required to perform the analyses confines use to the laboratory. We developed task-specific long short-term memory (LSTM) neural networks that employ markerless video data to predict the AT force during walking, running, countermovement jump, single-leg landing, and single-leg heel rise. The task-specific LSTM models were trained on pose estimation keypoints and corresponding AT force data from 16 subjects, calculated via an established NMSK modeling pipeline, and cross-validated using a leave-one-subject-out approach. As proof-of-concept, new motion data of one participant was collected with two smartphones and used to predict AT forces. The task-specific LSTM models predicted the time-series AT force using synthesized pose estimation data with root mean square error (RMSE) $\le 526$ N, normalized RMSE (nRMSE) $\le 0.21$ , R $^{{2}} \ge 0.81$ . Walking task resulted the most accurate with RMSE $= 189\pm 62$ N; nRMSE $= 0.11\pm 0.03$ , R $^{{2}}= 0.92\pm 0.04$ . AT force predicted with smartphones video data was physiologically plausible, agreeing in timing and magnitude with established force profiles. This study demonstrated the feasibility of using low-cost solutions to deploy complex biomechanical analyses outside the laboratory.

Keywords