Title |
Analysis of Uncertainty and Variability in Finite Element Computational Models for Biomedical Engineering: Characterization and Propagation
|
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Published in |
Frontiers in Bioengineering and Biotechnology, November 2016
|
DOI | 10.3389/fbioe.2016.00085 |
Pubmed ID | |
Authors |
Nerea Mangado, Gemma Piella, Jérôme Noailly, Jordi Pons-Prats, Miguel Ángel González Ballester |
Abstract |
Computational modeling has become a powerful tool in biomedical engineering thanks to its potential to simulate coupled systems. However, real parameters are usually not accurately known, and variability is inherent in living organisms. To cope with this, probabilistic tools, statistical analysis and stochastic approaches have been used. This article aims to review the analysis of uncertainty and variability in the context of finite element modeling in biomedical engineering. Characterization techniques and propagation methods are presented, as well as examples of their applications in biomedical finite element simulations. Uncertainty propagation methods, both non-intrusive and intrusive, are described. Finally, pros and cons of the different approaches and their use in the scientific community are presented. This leads us to identify future directions for research and methodological development of uncertainty modeling in biomedical engineering. |
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