Benemerito, I.; Montefiori, E.; Marzo, A.; Mazzà, C. Reducing the Complexity of Musculoskeletal Models Using Gaussian Process Emulators. Appl. Sci.2022, 12, 12932.
Benemerito, I.; Montefiori, E.; Marzo, A.; Mazzà, C. Reducing the Complexity of Musculoskeletal Models Using Gaussian Process Emulators. Appl. Sci. 2022, 12, 12932.
Benemerito, I.; Montefiori, E.; Marzo, A.; Mazzà, C. Reducing the Complexity of Musculoskeletal Models Using Gaussian Process Emulators. Appl. Sci.2022, 12, 12932.
Benemerito, I.; Montefiori, E.; Marzo, A.; Mazzà, C. Reducing the Complexity of Musculoskeletal Models Using Gaussian Process Emulators. Appl. Sci. 2022, 12, 12932.
Abstract
Musculoskeletal models (MSKMs) are used to estimate the muscle and joint forces involved in human locomotion, often associated with the onset of degenerative musculoskeletal pathologies (e.g. osteoarthritis). Subject-specific MSKMs offer more accurate predictions than their scaled-generic counterparts. This accuracy is achieved through time-consuming personalisation of models and manual tuning procedures that suffers from potential repeatability errors, hence limiting the wider application of this modelling approach. In this work we have developed a methodology for identifying and ranking the muscles that are more important to the determination of the joint forces, thus producing reduced but still accurate representation of the musculoskeletal system in shorter timeframes. The methodology hinges on Sobol's sensitivity analysis (SSA) for ranking the muscle importance. The thousands of data points required for SSA are generated using Gaussian Process emulators, a Bayesian technique to infer the input-output relationship between nonlinear models from a limited number of observations. Results show that there is a pool of muscles whose personalisation has little effects on the model predictions. Furthermore, joint forces in subject generic and subject generic models are influenced by different set of muscles, suggesting the existence of a model specific component of the sensitivity analysis.
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