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Machine learning methods to support personalized neuromusculoskeletal modelling
Author(s) -
David J. Saxby,
Bryce A. Killen,
Claudio Pizzolato,
Christopher P. Carty,
Laura E. Diamond,
Luca Modenese,
Justin Fernandez,
Giorgio Davico,
Martina Barzan,
Gavin K. Lenton,
Simao Brito da Luz,
Edin Suwarganda,
Daniel Devaprakash,
Rami K. Korhonen,
Jacqueline Alderson,
Thor F. Besier,
Rod Barrett,
David G. Lloyd
Publication year - 2020
Publication title -
biomechanics and modeling in mechanobiology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.765
H-Index - 68
eISSN - 1617-7959
pISSN - 1617-7940
DOI - 10.1007/s10237-020-01367-8
Subject(s) - personalization , big data , fidelity , computer science , machine learning , engineering , artificial intelligence , data mining , telecommunications , world wide web
Many biomedical, orthopaedic, and industrial applications are emerging that will benefit from personalized neuromusculoskeletal models. Applications include refined diagnostics, prediction of treatment trajectories for neuromusculoskeletal diseases, in silico design, development, and testing of medical implants, and human-machine interfaces to support assistive technologies. This review proposes how physics-based simulation, combined with machine learning approaches from big data, can be used to develop high-fidelity personalized representations of the human neuromusculoskeletal system. The core neuromusculoskeletal model features requiring personalization are identified, and big data/machine learning approaches for implementation are presented together with recommendations for further research.

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