4.6 Article

A neural network to predict the knee adduction moment in patients with osteoarthritis using anatomical landmarks obtainable from 2D video analysis

Journal

OSTEOARTHRITIS AND CARTILAGE
Volume 29, Issue 3, Pages 346-356

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.joca.2020.12.017

Keywords

Knee adduction moment; Osteoarthritis; Gait; Machine learning; Neural network; Video motion analysis

Funding

  1. Graduate Research Fellowship Program from the United States (U.S.) National Science Foundation [DGE-114747, DGE1656518]
  2. U.S. Department of Veterans Affairs Rehabilitation RAMP
  3. D (Rehab RD) Service [I01 RX001811]
  4. U.S. National Institutes of Health [U54EB020405, P41EB027060]

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This study successfully utilized neural networks to accurately predict the peak knee adduction moment (KAM) during natural and modified walking patterns, demonstrating the feasibility of measuring KAM using positions obtainable from 2D video analysis.
Objective: The knee adduction moment (KAM) can inform treatment of medial knee osteoarthritis; however, measuring the KAM requires an expensive gait analysis laboratory. We evaluated the feasibility of predicting the peak KAM during natural and modified walking patterns using the positions of anatomical landmarks that could be identified from video analysis. Method: Using inverse dynamics, we calculated the KAM for 86 individuals (64 with knee osteoarthritis, 22 without) walking naturally and with foot progression angle modifications. We trained a neural network to predict the peak KAM using the 3-dimensional positions of 13 anatomical landmarks measured with motion capture (3D neural network). We also trained models to predict the peak KAM using 2-dimensional subsets of the dataset to simulate 2-dimensional video analysis (frontal and sagittal plane neural networks). Model performance was evaluated on a held-out, 8-person test set that included steps from all trials. Results: The 3D neural network predicted the peak KAM for all test steps with r(2)( Murray et al., 2012) 2 = 0.78. This model predicted individuals' average peak KAM during natural walking with r(2) ( Murray et al., 2012) 2 = 0.86 and classified which 15 degrees foot progression angle modifications reduced the peak KAM with accuracy = 0.85. The frontal plane neural network predicted peak KAM with similar accuracy (r(2) ( Murray et al., 2012) 2 = 0.85) to the 3D neural network, but the sagittal plane neural network did not (r(2) ( Murray et al., 2012) 2 = 0.14). Conclusion: Using the positions of anatomical landmarks from motion capture, a neural network accurately predicted the peak KAM during natural and modified walking. This study demonstrates the feasibility of measuring the peak KAM using positions obtainable from 2D video analysis. (C) 2021 Osteoarthritis Research Society International. Published by Elsevier Ltd. All rights reserved.

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