EMG-informed neuromusculoskeletal models accurately predict knee loading measured using instrumented implants
Author:
Bennett Kieran,Pizzolato Claudio,Martelli Saulo,Bahl Jasvir,Sivakumar Arjun,Atkins Gerald,Solomon Bogdan,Thewlis Dominic
Abstract
<p>We
investigated three different methods for simulating neuromusculoskeletal (NMS)
control to generate estimates of knee joint loading which were compared to
in-vivo measured loads. The major contributions of this work to the literature
are in generalizing EMG-informed and probabilistic methods for modelling NMS
control.</p>
<p>A single
calibration function for EMG-informed NMS modelling was identified which
accurately estimated knee loads for multiple people across multiple trials.
Using a stochastic approach to NMS modelling, we investigated the range of
possible solutions for knee joint loading during walking, showing the method's
generalizability and capability to generate solutions which encompassed the
measured knee loads. Through this stochastic approach, we were able to show
that a single degree of freedom planar knee is suited to estimating total knee
loading, but is insufficient for estimating the directional components of load.</p>
<p> </p>
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Cited by
1 articles.
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