Cargando…

Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?

Subject-specific musculoskeletal modeling can be applied to study musculoskeletal disorders, allowing inclusion of personalized anatomy and properties. Independent of the tools used for model creation, there are unavoidable uncertainties associated with parameter identification, whose effect on mode...

Descripción completa

Detalles Bibliográficos
Autores principales: Valente, Giordano, Pitto, Lorenzo, Testi, Debora, Seth, Ajay, Delp, Scott L., Stagni, Rita, Viceconti, Marco, Taddei, Fulvia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4229232/
https://www.ncbi.nlm.nih.gov/pubmed/25390896
http://dx.doi.org/10.1371/journal.pone.0112625
_version_ 1782344105764847616
author Valente, Giordano
Pitto, Lorenzo
Testi, Debora
Seth, Ajay
Delp, Scott L.
Stagni, Rita
Viceconti, Marco
Taddei, Fulvia
author_facet Valente, Giordano
Pitto, Lorenzo
Testi, Debora
Seth, Ajay
Delp, Scott L.
Stagni, Rita
Viceconti, Marco
Taddei, Fulvia
author_sort Valente, Giordano
collection PubMed
description Subject-specific musculoskeletal modeling can be applied to study musculoskeletal disorders, allowing inclusion of personalized anatomy and properties. Independent of the tools used for model creation, there are unavoidable uncertainties associated with parameter identification, whose effect on model predictions is still not fully understood. The aim of the present study was to analyze the sensitivity of subject-specific model predictions (i.e., joint angles, joint moments, muscle and joint contact forces) during walking to the uncertainties in the identification of body landmark positions, maximum muscle tension and musculotendon geometry. To this aim, we created an MRI-based musculoskeletal model of the lower limbs, defined as a 7-segment, 10-degree-of-freedom articulated linkage, actuated by 84 musculotendon units. We then performed a Monte-Carlo probabilistic analysis perturbing model parameters according to their uncertainty, and solving a typical inverse dynamics and static optimization problem using 500 models that included the different sets of perturbed variable values. Model creation and gait simulations were performed by using freely available software that we developed to standardize the process of model creation, integrate with OpenSim and create probabilistic simulations of movement. The uncertainties in input variables had a moderate effect on model predictions, as muscle and joint contact forces showed maximum standard deviation of 0.3 times body-weight and maximum range of 2.1 times body-weight. In addition, the output variables significantly correlated with few input variables (up to 7 out of 312) across the gait cycle, including the geometry definition of larger muscles and the maximum muscle tension in limited gait portions. Although we found subject-specific models not markedly sensitive to parameter identification, researchers should be aware of the model precision in relation to the intended application. In fact, force predictions could be affected by an uncertainty in the same order of magnitude of its value, although this condition has low probability to occur.
format Online
Article
Text
id pubmed-4229232
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-42292322014-11-18 Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification? Valente, Giordano Pitto, Lorenzo Testi, Debora Seth, Ajay Delp, Scott L. Stagni, Rita Viceconti, Marco Taddei, Fulvia PLoS One Research Article Subject-specific musculoskeletal modeling can be applied to study musculoskeletal disorders, allowing inclusion of personalized anatomy and properties. Independent of the tools used for model creation, there are unavoidable uncertainties associated with parameter identification, whose effect on model predictions is still not fully understood. The aim of the present study was to analyze the sensitivity of subject-specific model predictions (i.e., joint angles, joint moments, muscle and joint contact forces) during walking to the uncertainties in the identification of body landmark positions, maximum muscle tension and musculotendon geometry. To this aim, we created an MRI-based musculoskeletal model of the lower limbs, defined as a 7-segment, 10-degree-of-freedom articulated linkage, actuated by 84 musculotendon units. We then performed a Monte-Carlo probabilistic analysis perturbing model parameters according to their uncertainty, and solving a typical inverse dynamics and static optimization problem using 500 models that included the different sets of perturbed variable values. Model creation and gait simulations were performed by using freely available software that we developed to standardize the process of model creation, integrate with OpenSim and create probabilistic simulations of movement. The uncertainties in input variables had a moderate effect on model predictions, as muscle and joint contact forces showed maximum standard deviation of 0.3 times body-weight and maximum range of 2.1 times body-weight. In addition, the output variables significantly correlated with few input variables (up to 7 out of 312) across the gait cycle, including the geometry definition of larger muscles and the maximum muscle tension in limited gait portions. Although we found subject-specific models not markedly sensitive to parameter identification, researchers should be aware of the model precision in relation to the intended application. In fact, force predictions could be affected by an uncertainty in the same order of magnitude of its value, although this condition has low probability to occur. Public Library of Science 2014-11-12 /pmc/articles/PMC4229232/ /pubmed/25390896 http://dx.doi.org/10.1371/journal.pone.0112625 Text en © 2014 Valente et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Valente, Giordano
Pitto, Lorenzo
Testi, Debora
Seth, Ajay
Delp, Scott L.
Stagni, Rita
Viceconti, Marco
Taddei, Fulvia
Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title_full Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title_fullStr Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title_full_unstemmed Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title_short Are Subject-Specific Musculoskeletal Models Robust to the Uncertainties in Parameter Identification?
title_sort are subject-specific musculoskeletal models robust to the uncertainties in parameter identification?
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4229232/
https://www.ncbi.nlm.nih.gov/pubmed/25390896
http://dx.doi.org/10.1371/journal.pone.0112625
work_keys_str_mv AT valentegiordano aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT pittolorenzo aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT testidebora aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT sethajay aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT delpscottl aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT stagnirita aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT vicecontimarco aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification
AT taddeifulvia aresubjectspecificmusculoskeletalmodelsrobusttotheuncertaintiesinparameteridentification