Computational models that predict internal joint forces have the potential to enhance our understanding of normal and pathological movement. Validation studies of modeling results are necessary if such models are to be adopted by clinicians to complement patient treatment and rehabilitation. The purposes of this paper are: (1) to describe an electromyogram (EMG)-driven modeling approach to predict knee joint contact forces, and (2) to evaluate the accuracy of model predictions for two distinctly different gait patterns (normal walking and medial thrust gait) against known values for a patient with a force recording knee prosthesis. Blinded model predictions and revised model estimates for knee joint contact forces are reported for our entry in the 2012 Grand Challenge to predict in vivo knee loads. The EMG-driven model correctly predicted that medial compartment contact force for the medial thrust gait increased despite the decrease in knee adduction moment. Model accuracy was high: the difference in peak loading was less than 0.01 bodyweight (BW) with an R2 = 0.92. The model also predicted lateral loading for the normal walking trial with good accuracy exhibiting a peak loading difference of 0.04 BW and an R2 = 0.44. Overall, the EMG-driven model captured the general shape and timing of the contact force profiles and with accurate input data the model estimated joint contact forces with sufficient accuracy to enhance the interpretation of joint loading beyond what is possible from data obtained from standard motion capture studies.
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February 2013
Research-Article
An Electromyogram-Driven Musculoskeletal Model of the Knee to Predict in Vivo Joint Contact Forces During Normal and Novel Gait Patterns
Kurt Manal,
Kurt Manal
1
e-mail: manal@udel.edu
1Corresponding author.
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Thomas S. Buchanan
Thomas S. Buchanan
Delaware Rehabilitation Institute,
Department of Mechanical Engineering,
Newark, DE 19716
Department of Mechanical Engineering,
University of Delaware
,Newark, DE 19716
Search for other works by this author on:
Kurt Manal
e-mail: manal@udel.edu
Thomas S. Buchanan
Delaware Rehabilitation Institute,
Department of Mechanical Engineering,
Newark, DE 19716
Department of Mechanical Engineering,
University of Delaware
,Newark, DE 19716
1Corresponding author.
Contributed by the Bioengineering Division of ASME for publication in the JOURNAL OF BIOMECHANICAL ENGINEERING. Manuscript received October 19, 2012; final manuscript received January 16, 2013; accepted manuscript posted January 18, 2013; published online February 7, 2013. Editor: Beth Winkelstein.
J Biomech Eng. Feb 2013, 135(2): 021014 (7 pages)
Published Online: February 7, 2013
Article history
Received:
October 19, 2012
Revision Received:
January 16, 2013
Accepted:
January 18, 2013
Citation
Manal, K., and Buchanan, T. S. (February 7, 2013). "An Electromyogram-Driven Musculoskeletal Model of the Knee to Predict in Vivo Joint Contact Forces During Normal and Novel Gait Patterns." ASME. J Biomech Eng. February 2013; 135(2): 021014. https://doi.org/10.1115/1.4023457
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