Literature DB >> 25066584

A neural network approach for determining gait modifications to reduce the contact force in knee joint implant.

Marzieh Mostafavizadeh Ardestani1, Zhenxian Chen1, Ling Wang2, Qin Lian1, Yaxiong Liu1, Jiankang He1, Dichen Li1, Zhongmin Jin3.   

Abstract

There is a growing interest in non-surgical gait rehabilitation treatments to reduce the loading in the knee joint. In particular, synergetic kinematic changes required for joint offloading should be determined individually for each subject. Previous studies for gait rehabilitation designs are typically relied on a "trial-and-error" approach, using multi-body dynamic (MBD) analysis. However MBD is fairly time demanding which prevents it to be used iteratively for each subject. This study employed an artificial neural network to develop a cost-effective computational framework for designing gait rehabilitation patterns. A feed forward artificial neural network (FFANN) was trained based on a number of experimental gait trials obtained from literature. The trained network was then hired to calculate the appropriate kinematic waveforms (output) needed to achieve desired knee joint loading patterns (input). An auxiliary neural network was also developed to update the ground reaction force and moment profiles with respect to the predicted kinematic waveforms. The feasibility and efficiency of the predicted kinematic patterns were then evaluated through MBD analysis. Results showed that FFANN-based predicted kinematics could effectively decrease the total knee joint reaction forces. Peak values of the resultant knee joint forces, with respect to the bodyweight (BW), were reduced by 20% BW and 25% BW in the midstance and the terminal stance phases. Impulse values of the knee joint loading patterns were also decreased by 17% BW*s and 24%BW*s in the corresponding phases. The FFANN-based framework suggested a cost-effective forward solution which directly calculated the kinematic variations needed to implement a given desired knee joint loading pattern. It is therefore expected that this approach provides potential advantages and further insights into knee rehabilitation designs.
Copyright © 2014 IPEM. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Gait modification; Kinematics; Knee joint loading; Multi-body dynamics; Neural network

Mesh:

Year:  2014        PMID: 25066584     DOI: 10.1016/j.medengphy.2014.06.016

Source DB:  PubMed          Journal:  Med Eng Phys        ISSN: 1350-4533            Impact factor:   2.242


  3 in total

1.  Prediction of Polyethylene Wear Rates from Gait Biomechanics and Implant Positioning in Total Hip Replacement.

Authors:  Marzieh M Ardestani; Pedro P Amenábar Edwards; Markus A Wimmer
Journal:  Clin Orthop Relat Res       Date:  2017-03-02       Impact factor: 4.176

Review 2.  How Artificial Intelligence and Machine Learning Is Assisting Us to Extract Meaning from Data on Bone Mechanics?

Authors:  Saeed Mouloodi; Hadi Rahmanpanah; Colin Martin; Soheil Gohari; Helen M S Davies
Journal:  Adv Exp Med Biol       Date:  2022       Impact factor: 2.622

Review 3.  Machine learning in human movement biomechanics: Best practices, common pitfalls, and new opportunities.

Authors:  Eni Halilaj; Apoorva Rajagopal; Madalina Fiterau; Jennifer L Hicks; Trevor J Hastie; Scott L Delp
Journal:  J Biomech       Date:  2018-09-13       Impact factor: 2.712

  3 in total

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