Development of a reduced-order model for understanding FL thrombosis in type B aortic dissection using a global sensitivity analysis and polynomial chaos expansion

Gian Marco Melito*, Alireza Jafarinia, Thomas Stephan Müller, Malte Rolf-Pissarczyk, Gerhard Holzapfel, Günter Brenn, Thomas Hochrainer, Katrin Ellermann

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference paper

Abstract

In this study, we focus on developing a reduced-order model to understand the most significant morphological parameters influencing FL thrombosis in Type B Aortic Dissection using a combination of the thrombus formation model and global sensitivity analysis. The results provide valuable insights into how various morphological parameters influence FL thrombosis. Additionally, by introducing non-dimensional parameters, we aim to enable the ability to transfer results between patients. The sensitive parameters identified in this study play a crucial role in classifying morphologies into a patent, a partially thrombosed, and a completely thrombosed FL. Specifically, a polynomial chaos expansion (PCE) is used to create a reduced-order model that can be used for further analysis and optimization, leading to a more efficient and accurate understanding of TBAD.
Original languageEnglish
Title of host publicationProceedings of the 7th ECCOMAS Young Investigators Conference (ECCOMAS YIC 2023) Creators
DOIs
Publication statusPublished - 2023
Event7th ECCOMAS Young Investigators Conference: YIC 2023 - Porto, Portugal
Duration: 19 Jun 202321 Jun 2023

Conference

Conference7th ECCOMAS Young Investigators Conference
Abbreviated titleYIC2023
Country/TerritoryPortugal
CityPorto
Period19/06/2321/06/23

Keywords

  • aortic dissection
  • Thrombus formation
  • Global sensitivity analysis
  • Morphological parametrization
  • Thrombus classification

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