Detection of arterial wall abnormalities via Bayesian model selection
Author(s) -
Karen Larson,
Clark Bowman,
Costas Papadimitriou,
Petros Koumoutsakos,
Anastasios Matzavinos
Publication year - 2019
Publication title -
royal society open science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.84
H-Index - 51
ISSN - 2054-5703
DOI - 10.1098/rsos.182229
Subject(s) - computer science , model selection , selection (genetic algorithm) , bayesian network , bayesian probability , tree (set theory) , estimation theory , data mining , artificial intelligence , algorithm , machine learning , mathematics , mathematical analysis
Patient-specific modelling of haemodynamics in arterial networks has so far relied on parameter estimation for inexpensive or small-scale models. We describe here a Bayesian uncertainty quantification framework which makes two major advances: an efficient parallel implementation, allowing parameter estimation for more complex forward models, and a system for practical model selection, allowing evidence-based comparison between distinct physical models. We demonstrate the proposed methodology by generating simulated noisy flow velocity data from a branching arterial tree model in which a structural defect is introduced at an unknown location; our approach is shown to accurately locate the abnormality and estimate its physical properties even in the presence of significant observational and systemic error. As the method readily admits real data, it shows great potential in patient-specific parameter fitting for haemodynamical flow models.
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