Literature DB >> 35646876

Predicting the Internal Knee Abduction Impulse During Walking Using Deep Learning.

Issam Boukhennoufa1, Zainab Altai2, Xiaojun Zhai1, Victor Utti2, Klaus D McDonald-Maier1, Bernard X W Liew2.   

Abstract

Knee joint moments are commonly calculated to provide an indirect measure of knee joint loads. A shortcoming of inverse dynamics approaches is that the process of collecting and processing human motion data can be time-consuming. This study aimed to benchmark five different deep learning methods in using walking segment kinematics for predicting internal knee abduction impulse during walking. Three-dimensional kinematic and kinetic data used for the present analyses came from a publicly available dataset on walking (participants n = 33). The outcome for prediction was the internal knee abduction impulse over the stance phase. Three-dimensional (3D) angular and linear displacement, velocity, and acceleration of the seven lower body segment's center of mass (COM), relative to a fixed global coordinate system were derived and formed the predictor space (126 time-series predictors). The total number of observations in the dataset was 6,737. The datasets were split into training (75%, n = 5,052) and testing (25%, n = 1685) datasets. Five deep learning models were benchmarked against inverse dynamics in quantifying knee abduction impulse. A baseline 2D convolutional network model achieved a mean absolute percentage error (MAPE) of 10.80%. Transfer learning with InceptionTime was the best performing model, achieving the best MAPE of 8.28%. Encoding the time-series as images then using a 2D convolutional model performed worse than the baseline model with a MAPE of 16.17%. Time-series based deep learning models were superior to an image-based method when predicting knee abduction moment impulse during walking. Future studies looking to develop wearable technologies will benefit from knowing the optimal network architecture, and the benefit of transfer learning for predicting joint moments.
Copyright © 2022 Boukhennoufa, Altai, Zhai, Utti, McDonald-Maier and Liew.

Entities:  

Keywords:  gait biomechanics; knee joint moments; machine learning; neural network; time-series

Year:  2022        PMID: 35646876      PMCID: PMC9133596          DOI: 10.3389/fbioe.2022.877347

Source DB:  PubMed          Journal:  Front Bioeng Biotechnol        ISSN: 2296-4185


  28 in total

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3.  Gender differences in the knee adduction moment after anterior cruciate ligament reconstruction surgery.

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Authors:  Crystal O Kean; Rana S Hinman; Kelly Ann Bowles; Flavia Cicuttini; Miranda Davies-Tuck; Kim L Bennell
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6.  Effect of real-time biofeedback on peak knee adduction moment in patients with medial knee osteoarthritis: Is direct feedback effective?

Authors:  Rosie E Richards; Josien C van den Noort; Martin van der Esch; Marjolein J Booij; Jaap Harlaar
Journal:  Clin Biomech (Bristol, Avon)       Date:  2017-07-13       Impact factor: 2.063

7.  A comprehensive evaluation of state-of-the-art time-series deep learning models for activity-recognition in post-stroke rehabilitation assessment.

Authors:  Issam Boukhennoufa; Xiaojun Zhai; Victor Utti; Jo Jackson; Klaus D McDonald-Maier
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2021-11

8.  Relationship between knee joint contact forces and external knee joint moments in patients with medial knee osteoarthritis: effects of gait modifications.

Authors:  R E Richards; M S Andersen; J Harlaar; J C van den Noort
Journal:  Osteoarthritis Cartilage       Date:  2018-04-30       Impact factor: 6.576

9.  Systematic Comparison of the Influence of Different Data Preprocessing Methods on the Performance of Gait Classifications Using Machine Learning.

Authors:  Johannes Burdack; Fabian Horst; Sven Giesselbach; Ibrahim Hassan; Sabrina Daffner; Wolfgang I Schöllhorn
Journal:  Front Bioeng Biotechnol       Date:  2020-04-15

10.  An Open-Source and Wearable System for Measuring 3D Human Motion in Real-Time.

Authors:  Patrick Slade; Ayman Habib; Jennifer L Hicks; Scott L Delp
Journal:  IEEE Trans Biomed Eng       Date:  2022-01-21       Impact factor: 4.538

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