Smooth and accurate predictions of joint contact force time-series in gait using over parameterised deep neural networks

Front Bioeng Biotechnol. 2023 Jul 3:11:1208711. doi: 10.3389/fbioe.2023.1208711. eCollection 2023.

Abstract

Alterations in joint contact forces (JCFs) are thought to be important mechanisms for the onset and progression of many musculoskeletal and orthopaedic pain disorders. Computational approaches to JCFs assessment represent the only non-invasive means of estimating in-vivo forces; but this cannot be undertaken in free-living environments. Here, we used deep neural networks to train models to predict JCFs, using only joint angles as predictors. Our neural network models were generally able to predict JCFs with errors within published minimal detectable change values. The errors ranged from the lowest value of 0.03 bodyweight (BW) (ankle medial-lateral JCF in walking) to a maximum of 0.65BW (knee VT JCF in running). Interestingly, we also found that over parametrised neural networks by training on longer epochs (>100) resulted in better and smoother waveform predictions. Our methods for predicting JCFs using only joint kinematics hold a lot of promise in allowing clinicians and coaches to continuously monitor tissue loading in free-living environments.

Keywords: deep learning; locomotion; machine learning; musculoskeletal modelling; running biomechanics; walking biomechanics.

Grants and funding

The primary study was sponsored by the National Natural Science Foundation of China (No. 12202216). BL and ZA are supported by The Academy of Medical Sciences, UK, Springboard Award (SBF006\1019). XZ is supported by the UK Engineering and Physical Sciences Research Council through grant EP/V034111/1.