4.5 Article

Deep Learning for Musculoskeletal Force Prediction

Journal

ANNALS OF BIOMEDICAL ENGINEERING
Volume 47, Issue 3, Pages 778-789

Publisher

SPRINGER
DOI: 10.1007/s10439-018-02190-0

Keywords

Musculoskeletal modelling; Neural networks; Surrogate model

Funding

  1. Engineering and Physical Sciences Research Council
  2. Wellcome Trust as part of the Medical Engineering Solutions in Osteoarthritis Centre of Excellence at Imperial College London
  3. NVIDIA Corporation
  4. EPSRC [1855334] Funding Source: UKRI

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Musculoskeletal models permit the determination of internal forces acting during dynamic movement, which is clinically useful, but traditional methods may suffer from slowness and a need for extensive input data. Recently, there has been interest in the use of supervised learning to build approximate models for computationally demanding processes, with benefits in speed and flexibility. Here, we use a deep neural network to learn the mapping from movement space to muscle space. Trained on a set of kinematic, kinetic and electromyographic measurements from 156 subjects during gait, the network's predictions of internal force magnitudes show good concordance with those derived by musculoskeletal modelling. In a separate set of experiments, training on data from the most widely known benchmarks of modelling performance, the international Grand Challenge competitions, generates predictions that better those of the winning submissions in four of the six competitions. Computational speedup facilitates incorporation into a lab-based system permitting real-time estimation of forces, and interrogation of the trained neural networks provides novel insights into population-level relationships between kinematic and kinetic factors.

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