Literature DB >> 28845061

A generalized multi-resolution expansion for uncertainty propagation with application to cardiovascular modeling.

D E Schiavazzi1, A Doostan2, G Iaccarino3, A L Marsden4.   

Abstract

Computational models are used in a variety of fields to improve our understanding of complex physical phenomena. Recently, the realism of model predictions has been greatly enhanced by transitioning from deterministic to stochastic frameworks, where the effects of the intrinsic variability in parameters, loads, constitutive properties, model geometry and other quantities can be more naturally included. A general stochastic system may be characterized by a large number of arbitrarily distributed and correlated random inputs, and a limited support response with sharp gradients or event discontinuities. This motivates continued research into novel adaptive algorithms for uncertainty propagation, particularly those handling high dimensional, arbitrarily distributed random inputs and non-smooth stochastic responses. In this work, we generalize a previously proposed multi-resolution approach to uncertainty propagation to develop a method that improves computational efficiency, can handle arbitrarily distributed random inputs and non-smooth stochastic responses, and naturally facilitates adaptivity, i.e., the expansion coefficients encode information on solution refinement. Our approach relies on partitioning the stochastic space into elements that are subdivided along a single dimension, or, in other words, progressive refinements exhibiting a binary tree representation. We also show how these binary refinements are particularly effective in avoiding the exponential increase in the multi-resolution basis cardinality and significantly reduce the regression complexity for moderate to high dimensional random inputs. The performance of the approach is demonstrated through previously proposed uncertainty propagation benchmarks and stochastic multi-scale finite element simulations in cardiovascular flow.

Entities:  

Keywords:  Cardiovascular simulation; Multi-resolution stochastic expansion; Multi-scale models for cardiovascular flow; Relevance vector machines; Sparsity-promoting regression; Uncertainty quantification

Year:  2016        PMID: 28845061      PMCID: PMC5568857          DOI: 10.1016/j.cma.2016.09.024

Source DB:  PubMed          Journal:  Comput Methods Appl Mech Eng        ISSN: 0045-7825            Impact factor:   6.756


  5 in total

1.  Uncertainty quantification in virtual surgery hemodynamics predictions for single ventricle palliation.

Authors:  D E Schiavazzi; G Arbia; C Baker; A M Hlavacek; T Y Hsia; A L Marsden; I E Vignon-Clementel
Journal:  Int J Numer Method Biomed Eng       Date:  2015-09-02       Impact factor: 2.747

2.  A stochastic collocation method for uncertainty quantification and propagation in cardiovascular simulations.

Authors:  Sethuraman Sankaran; Alison L Marsden
Journal:  J Biomech Eng       Date:  2011-03       Impact factor: 2.097

3.  Surgical repair of tricuspid atresia.

Authors:  F Fontan; E Baudet
Journal:  Thorax       Date:  1971-05       Impact factor: 9.139

4.  Differential characterization of blood flow, velocity, and vascular resistance between proximal and distal normal epicardial human coronary arteries: analysis by intracoronary Doppler spectral flow velocity.

Authors:  E O Ofili; M J Kern; J A St Vrain; T J Donohue; R Bach; B al-Joundi; F V Aguirre; R Castello; A J Labovitz
Journal:  Am Heart J       Date:  1995-07       Impact factor: 4.749

5.  Automated Tuning for Parameter Identification and Uncertainty Quantification in Multi-scale Coronary Simulations.

Authors:  Justin S Tran; Daniele E Schiavazzi; Abhay B Ramachandra; Andrew M Kahn; Alison L Marsden
Journal:  Comput Fluids       Date:  2016-05-16       Impact factor: 3.013

  5 in total
  6 in total

1.  Uncertainty quantification of simulated biomechanical stimuli in coronary artery bypass grafts.

Authors:  Justin S Tran; Daniele E Schiavazzi; Andrew M Kahn; Alison L Marsden
Journal:  Comput Methods Appl Mech Eng       Date:  2018-11-15       Impact factor: 6.756

Review 2.  Machine Learning for Cardiovascular Biomechanics Modeling: Challenges and Beyond.

Authors:  Amirhossein Arzani; Jian-Xun Wang; Michael S Sacks; Shawn C Shadden
Journal:  Ann Biomed Eng       Date:  2022-04-20       Impact factor: 3.934

3.  Geometric Uncertainty in Patient-Specific Cardiovascular Modeling with Convolutional Dropout Networks.

Authors:  Gabriel D Maher; Casey M Fleeter; Daniele E Schiavazzi; Alison L Marsden
Journal:  Comput Methods Appl Mech Eng       Date:  2021-08-14       Impact factor: 6.588

4.  Multilevel and multifidelity uncertainty quantification for cardiovascular hemodynamics.

Authors:  Casey M Fleeter; Gianluca Geraci; Daniele E Schiavazzi; Andrew M Kahn; Alison L Marsden
Journal:  Comput Methods Appl Mech Eng       Date:  2020-04-21       Impact factor: 6.756

5.  Uncertainty quantification in cerebral circulation simulations focusing on the collateral flow: Surrogate model approach with machine learning.

Authors:  Changyoung Yuhn; Marie Oshima; Yan Chen; Motoharu Hayakawa; Shigeki Yamada
Journal:  PLoS Comput Biol       Date:  2022-07-22       Impact factor: 4.779

Review 6.  Hemodynamics of Cerebral Aneurysms: Connecting Medical Imaging and Biomechanical Analysis.

Authors:  Vitaliy L Rayz; Aaron A Cohen-Gadol
Journal:  Annu Rev Biomed Eng       Date:  2020-03-25       Impact factor: 11.324

  6 in total

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