AddBiomechanics: Automating model scaling, inverse kinematics, and inverse dynamics from human motion data through sequential optimization

Author:

Werling KeenonORCID,Bianco Nicholas A.ORCID,Raitor Michael,Stingel JonORCID,Hicks Jennifer L.,Collins Steven H.,Delp Scott L.,Liu C. Karen

Abstract

Creating large-scale public datasets of human motion biomechanics could unlock data-driven breakthroughs in our understanding of human motion, neuromuscular diseases, and assistive devices. However, the manual effort currently required to process motion capture data and quantify the kinematics and dynamics of movement is costly and limits the collection and sharing of large-scale biomechanical datasets. We present a method, called AddBiomechanics, to automate and standardize the quantification of human movement dynamics from motion capture data. We use linear methods followed by a non-convex bilevel optimization to scale the body segments of a musculoskeletal model, register the locations of optical markers placed on an experimental subject to the markers on a musculoskeletal model, and compute body segment kinematics given trajectories of experimental markers during a motion. We then apply a linear method followed by another non-convex optimization to find body segment masses and fine tune kinematics to minimize residual forces given corresponding trajectories of ground reaction forces. The optimization approach requires approximately 3-5 minutes to determine a subject’s skeleton dimensions and motion kinematics, and less than 30 minutes of computation to also determine dynamically consistent skeleton inertia properties and fine-tuned kinematics and kinetics, compared with about one day of manual work for a human expert. We used AddBiomechanics to automatically reconstruct joint angle and torque trajectories from previously published multi-activity datasets, achieving close correspondence to expert-calculated values, marker root-mean-square errors less than 2 cm, and residual force magnitudes smaller than 2% of peak external force. Finally, we confirmed that AddBiomechanics accurately reproduced joint kinematics and kinetics from synthetic walking data with low marker error and residual loads. We have published the algorithm as an open source cloud service at AddBiomechanics.org, which is available at no cost and asks that users agree to share processed and de-identified data with the community. As of this writing, hundreds of researchers have used the prototype tool to process and share about ten thousand motion files from about one thousand experimental subjects. Reducing the barriers to processing and sharing high-quality human motion biomechanics data will enable more people to use state-of-the-art biomechanical analysis, do so at lower cost, and share larger and more accurate datasets.

Funder

National Science Foundation

Wu Tsai Human Performance Alliance at Stanford University and the Joe and Clara Tsai Foundation

Stanford Bio-X

National Institutes of Health

Stanford Institute for Human-Centered Artificial Intelligence, Stanford University

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference66 articles.

1. Grand challenge competition to predict in vivo knee loads;BJ Fregly;Journal of Orthopaedic Research,2012

2. An EMG-driven musculoskeletal model to estimate muscle forces and knee joint moments in vivo;DG Lloyd;Journal of Biomechanics,2003

3. Anticipatory effects on knee joint loading during running and cutting maneuvers;TF Besier;Medicine and Science in Sports and Exercise,2001

4. On-field player workload exposure and knee injury risk monitoring via deep learning;WR Johnson;Journal of Biomechanics,2019

5. Lenton GK, Doyle TL, Lloyd DG, Pizzolato C, Saxby DJ. Hip joint contact forces increase in response to greater body-borne loads and faster walking speeds. In: XXVII Congress of the International Society of Biomechanics; 2019.

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