Literature DB >> 30073612

Propagation of material behavior uncertainty in a nonlinear finite element model of reconstructive surgery.

Taeksang Lee1, Sergey Y Turin2, Arun K Gosain2, Ilias Bilionis1, Adrian Buganza Tepole3,4.   

Abstract

Excessive mechanical stress following surgery can lead to delayed healing, hypertrophic scars, and even skin necrosis. Measuring stress directly in the operating room over large skin areas is not feasible, and nonlinear finite element simulations have become an appealing alternative to predict stress contours on arbitrary geometries. However, this approach has been limited to generic cases, when in reality each patient geometry and procedure are unique, and material properties change from one person to another. In this manuscript, we use multi-view stereo to capture the patient-specific geometry of a 7-year-old female undergoing cranioplasty and complex tissue rearrangement. The geometry is used to setup a nonlinear finite element simulation of the reconstructive procedure. A key contribution of this work is incorporation of material behavior uncertainty. The finite element simulation is computationally expensive, and it is not suitable for uncertainty propagation which would require many such simulations. Instead, we run only a few expensive simulations in order to build a surrogate model by Gaussian process regression of the principal components of the stress fields computed with these few samples. The inexpensive surrogate is then used to compute the statistics of the stress distribution in this patient-specific scenario.

Entities:  

Keywords:  Gaussian process regression; Multi-view stereo; Nonlinear finite elements; Patient-specific simulation; Principal component analysis; Uncertainty propagation

Mesh:

Year:  2018        PMID: 30073612     DOI: 10.1007/s10237-018-1061-4

Source DB:  PubMed          Journal:  Biomech Model Mechanobiol        ISSN: 1617-7940


  6 in total

1.  Bayesian calibration of a computational model of tissue expansion based on a porcine animal model.

Authors:  Tianhong Han; Taeksang Lee; Joanna Ledwon; Elbert Vaca; Sergey Turin; Aaron Kearney; Arun K Gosain; Adrian B Tepole
Journal:  Acta Biomater       Date:  2021-10-08       Impact factor: 8.947

2.  Propagation of uncertainty in the mechanical and biological response of growing tissues using multi-fidelity Gaussian process regression.

Authors:  Taeksang Lee; Ilias Bilionis; Adrian Buganza Tepole
Journal:  Comput Methods Appl Mech Eng       Date:  2019-12-09       Impact factor: 6.756

3.  Acceleration of PDE-Based Biological Simulation Through the Development of Neural Network Metamodels.

Authors:  Lukasz Burzawa; Linlin Li; Xu Wang; Adrian Buganza-Tepole; David M Umulis
Journal:  Curr Pathobiol Rep       Date:  2020-11-06

4.  Multiscale modeling meets machine learning: What can we learn?

Authors:  Grace C Y Peng; Mark Alber; Adrian Buganza Tepole; William R Cannon; Suvranu De; Salvador Dura-Bernal; Krishna Garikipati; George Karniadakis; William W Lytton; Paris Perdikaris; Linda Petzold; Ellen Kuhl
Journal:  Arch Comput Methods Eng       Date:  2020-02-17       Impact factor: 7.302

5.  Improving reconstructive surgery design using Gaussian process surrogates to capture material behavior uncertainty.

Authors:  Casey Stowers; Taeksang Lee; Ilias Bilionis; Arun K Gosain; Adrian Buganza Tepole
Journal:  J Mech Behav Biomed Mater       Date:  2021-02-09

Review 6.  Integrating machine learning and multiscale modeling-perspectives, challenges, and opportunities in the biological, biomedical, and behavioral sciences.

Authors:  Mark Alber; Adrian Buganza Tepole; William R Cannon; Suvranu De; Salvador Dura-Bernal; Krishna Garikipati; George Karniadakis; William W Lytton; Paris Perdikaris; Linda Petzold; Ellen Kuhl
Journal:  NPJ Digit Med       Date:  2019-11-25
  6 in total

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