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Title:Bayesian parameter inference and uncertainty-informed sensitivity analysis in a 0D cardiovascular model for intraoperative hypotension
Authors:ID Thiel, Jan-Niklas (Author)
ID Žličar, Marko (Author)
ID Steinseifer, Ulrich (Author)
ID Kirn, Borut (Author)
ID Neidlin, Michael (Author)
Files:.pdf PDF - Presentation file, download (5,82 MB)
MD5: 2E380BB238CAB6D6A5AF87AF86E70B07
 
URL URL - Source URL, visit https://www.sciencedirect.com/science/article/pii/S0010482525017251?via%3Dihub
 
Language:English
Typology:1.01 - Original Scientific Article
Organization:Logo UKC LJ - Ljubljana University Medical Centre
Abstract:Computational cardiovascular models are promising tools for clinical decision support, particularly in complex conditions, such as intraoperative hypotension (IOH). IOH arises from different mechanisms, making treatment selection non-trivial. Patient-specific predictions require calibration, typically performed using classical optimization prone to parameter non-identifiability and lacking uncertainty quantification, hindering clinical translation. Consequently, Bayesian approaches are needed that facilitate parameter inference, sensitivity analysis, and uncertainty quantification in cardiovascular models. We utilize Bayesian Markov chain Monte Carlo (MCMC) to estimate parameter distributions of a cardiovascular lumped parameter model (LPM) across different IOH scenarios. We demonstrate parameter non-uniqueness and its impact on sensitivity indices. We improve parameter reliability by incorporating clinical knowledge and measurement uncertainties. Continual learning of the model is achieved by sequential parameter updating as new patient data become available. We introduce an uncertainty-aware sensitivity analysis and compare it with a classical approach. Classical optimization yielded many local solutions for IOH, with notably different sensitivities. MCMC distinguished different hypotension scenarios, such as those induced by impaired contractility or hypovolemia. Parameter uncertainty decreased by about 70 % with additional data, and by up to 94 % with sequential updating. Propagating uncertainties from MCMC through sensitivity analysis provided tighter credible intervals, resulting in more stable parameter rankings than the classical approach. The Bayesian approach revealed differences in model sensitivity and treatment suggestions across patient conditions, highlighting the potential to inform therapy planning. Combining Bayesian inference with sequential updating and sensitivity analysis improves the reliability and identifiability of parameter estimates, enhancing the clinical utility of LPMs for therapy guidance.
Keywords:Bayesian parameter inference, cardiovascular modeling, global sensitivity analysis, lumped parameter modeling, reduced-order modeling, uncertainty quantification
Publication status:Published
Publication version:Version of Record
Year of publishing:2026
Number of pages:str. 1-14
Numbering:Vol. 200, iss. [Article no.] 111371
PID:20.500.12556/DiRROS-28792 New window
UDC:616.1
ISSN on article:1879-0534
DOI:10.1016/j.compbiomed.2025.111371 New window
COBISS.SI-ID:263802883 New window
Note:Nasl. z nasl. zaslona; Opis vira z dne 7. 1. 2026;
Publication date in DiRROS:07.04.2026
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Downloads:11
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Record is a part of a journal

Title:Computers in biology and medicine
Shortened title:Comput. biol. & med.
Publisher:Elsevier
ISSN:1879-0534
COBISS.SI-ID:23205637 New window

Document is financed by a project

Funder:Other - Other funder or multiple funders
Funding programme:Deutsche Forschungsgemeinschaft
Project number:313779459/SPP 2014
Name:Towards an Implantable Lung

Licences

License:CC BY 4.0, Creative Commons Attribution 4.0 International
Link:http://creativecommons.org/licenses/by/4.0/
Description:This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.

Secondary language

Language:Slovenian
Keywords:kardiovaskularno modeliranje, modeliranje z zbranimi parametri, modeliranje reduciranega reda, kvantifikacija negotovosti


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