Uncertainty quantification of a three-dimensional in-stent restenosis model with surrogate modelling

Dongwei Ye*, Pavel Zun, Valeria Krzhizhanovskaya, Alfons G. Hoekstra

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

20 Citations (Scopus)

Abstract

In-stent restenosis is a recurrence of coronary artery narrowing due to vascular injury caused by balloon dilation and stent placement. It may lead to the relapse of angina symptoms or to an acute coronary syndrome. An uncertainty quantification of a model for in-stent restenosis with four uncertain parameters (endothelium regeneration time, the threshold strain for smooth muscle cell bond breaking, blood flow velocity and the percentage of fenestration in the internal elastic lamina) is presented. Two quantities of interest were studied, namely the average cross-sectional area and the maximum relative area loss in a vessel. Owing to the high computational cost required for uncertainty quantification, a surrogate model, based on Gaussian process regression with proper orthogonal decomposition, was developed and subsequently used for model response evaluation in the uncertainty quantification. A detailed analysis of the uncertainty propagation is presented. Around 11% and 16% uncertainty is observed on the two quantities of interest, respectively, and the uncertainty estimates show that a higher fenestration mainly determines the uncertainty in the neointimal growth at the initial stage of the process. The uncertainties in blood flow velocity and endothelium regeneration time mainly determine the uncertainty in the quantities of interest at the later, clinically relevant stages of the restenosis process.

Original languageEnglish
Article number20210864
JournalJournal of the Royal Society Interface
Volume19
Issue number187
DOIs
Publication statusPublished - 2022
Externally publishedYes

Keywords

  • Gaussian process regression
  • in-stent restenosis
  • Multiscale simulation
  • Proper orthogonal decomposition
  • Surrogate modelling
  • Uncertainty quantification

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