Literature DB >> 8550057

Estimating net joint torques from kinesiological data using optimal linear system theory.

C F Runge1, F E Zajac, J H Allum, D W Risher, A E Bryson, F Honegger.   

Abstract

Net joint torques (NJT) are frequently computed to provide insights into the motor control of dynamic biomechanical systems. An inverse dynamics approach is almost always used, whereby the NJT are computed from 1) kinematic measurements (e.g., position of the segments), 2) kinetic measurements (e.g., ground reaction forces) that are, in effect, constraints defining unmeasured kinematic quantities based on a dynamic segmental model, and 3) numerical differentiation of the measured kinematics to estimate velocities and accelerations that are, in effect, additional constraints. Due to errors in the measurements, the segmental model, and the differentiation process, estimated NJT rarely produce the observed movement in a forward simulation when the dynamics of the segmental system are inherently unstable (e.g., human walking). Forward dynamic simulations are, however, essential to studies of muscle coordination. We have developed an alternative approach, using the linear quadratic follower (LQF) algorithm, which computes the NJT such that a stable simulation of the observed movement is produced and the measurements are replicated as well as possible. The LQF algorithm does not employ constraints depending on explicit differentiation of the kinematic data, but rather employs those depending on specification of a cost function, based on quantitative assumptions about data confidence. We illustrate the usefulness of the LQF approach by using it to estimate NJT exerted by standing humans perturbed by support-surface movements. We show that unless the number of kinematic and force variables recorded is sufficiently high, the confidence that can be placed in the estimates of the NJT, obtained by any method (e.g., LQF, or the inverse dynamics approach), may be unsatisfactorily low.

Entities:  

Keywords:  Non-programmatic

Mesh:

Year:  1995        PMID: 8550057     DOI: 10.1109/10.476122

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  2 in total

1.  Computational Models for Neuromuscular Function.

Authors:  Francisco J Valero-Cuevas; Heiko Hoffmann; Manish U Kurse; Jason J Kutch; Evangelos A Theodorou
Journal:  IEEE Rev Biomed Eng       Date:  2009

2.  Risk factors for anterior cruciate ligament injury: a review of the literature - part 1: neuromuscular and anatomic risk.

Authors:  Helen C Smith; Pamela Vacek; Robert J Johnson; James R Slauterbeck; Javad Hashemi; Sandra Shultz; Bruce D Beynnon
Journal:  Sports Health       Date:  2012-01       Impact factor: 3.843

  2 in total

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