Estimating ground reaction forces from gait kinematics in cerebral palsy : A convolutional neural network approach
Citation
Arslan, Yunus Z., Özateş, Mustafa E., Salami, F., Wolf, Sebastian I. (2024). Estimating ground reaction forces from gait kinematics in cerebral palsy : A convolutional neural network approach. Annals of Biomedical Engineering.Abstract
Purpose While gait analysis is essential for assessing neuromotor disorders like cerebral palsy (CP), capturing accurate
ground reaction force (GRF) measurements during natural walking presents challenges, particularly due to variations in gait
patterns. Previous studies have explored GRF prediction using machine learning, but specifc focus on patients with CP is
lacking. This research aims to address this gap by predicting GRF using joint angles derived from marker data during gait
in patients with CP, thereby suggesting a protocol for gait analysis without the need for force plates.
Methods The study employed an extensive dataset comprising both typically developed (TD) subjects (n=132) and patients
with CP (n=622), captured using motion capture systems and force plates. Kinematic data included lower limb angles in
three planes of motion, while GRF data encompassed three axes. A one-dimensional convolutional neural network model was
designed to extract features from kinematic time series, followed by densely connected layers for GRF prediction. Evaluation
metrics included normalized root mean squared error (nRMSE) and Pearson correlation coefcient (PCC).
Results GRFs of patients with CP were predicted with nRMSE values consistently below 20.13% and PCC scores surpassing 0.84. In the TD group, all GRFs were predicted with higher accuracy, showing nRMSE values lower than 12.65% and
PCC scores exceeding 0.94.
Conclusion The predictions considerably captured the patterns observed in the experimentally obtained GRFs. Despite
limitations, including the absence of upper extremity kinematics data and the need for continuous model evolution, the study
demonstrates the potential of machine learning in predicting GRFs in patients with CP, albeit with current prediction errors
constraining immediate clinical applicability.