Abstract
one-fiber model incorporates correction factors to emulate patient-specific attributes, such as local geometry variations. In the offline stage, Bayesian inference is used to calibrate these correction factors on training data generated using a full-order isogeometric cardiac model (FOM). A Gaussian process is used in the online stage to predict the correction factors for geometries that are not in the training data. The proposed framework is demonstrated using two examples. The first example considers idealized left-ventricle geometries, for which the behavior of the ROM framework can be studied in detail. In the second example, the ROM framework is applied to scan-based geometries, based on which the application of the ROM framework in the clinical setting is discussed. The results for the two examples convey that the ROM framework can provide accurate online predictions, provided that adequate FOM training data is available. The uncertainty bands provided by the ROM framework give insight into the trustworthiness of its results. Large uncertainty bands can be considered as an indicator for the further population of the training data set.
Original language | English |
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Article number | 109983 |
Number of pages | 29 |
Journal | Computers in Biology and Medicine |
Volume | 190 |
Early online date | 23 Mar 2025 |
DOIs | |
Publication status | Published - May 2025 |
Funding
This publication is part of the COMBAT-VT project (no. 17983) of the research program High Tech Systems and Materials which is partly financed by the Dutch Research Council (NWO) . Additionally, this work was performed within the IMPULS framework under the Picasso project (no. TKI HTSM/20.0022) of the Eindhoven MedTech Innovation Center (e/MTIC, incorporating Eindhoven University of Technology, Philips Research, and the Catharina Hospital), including a PPS-supplement from the Dutch Ministry of Economic Affairs and Climate Policy. We would also like to thank the European Union\u2019s Horizon 2020 research and innovation program for the financial support under the grant agreement no. 101017578 (SIMCor) and the ECSEL Joint Undertaking (JU) under grant agreement no. 101007319 (AI-TWILIGHT). We acknowledge the team of Nutils [46] for their support regarding the numerical implementation of the cardiac model. This publication is part of the COMBAT-VT project (no. 17983) of the research program High Tech Systems and Materials which is partly financed by the Dutch Research Council (NWO). Additionally, this work was performed within the IMPULS framework under the Picasso project (no. TKI HTSM/20.0022) of the Eindhoven MedTech Innovation Center (e/MTIC, incorporating Eindhoven University of Technology, Philips Research, and the Catharina Hospital), including a PPS-supplement from the Dutch Ministry of Economic Affairs and Climate Policy. We would also like to thank the European Union's Horizon 2020 research and innovation program for the financial support under the grant agreement no. 101017578 (SIMCor) and the ECSEL Joint Undertaking (JU) under grant agreement no. 101007319 (AI-TWILIGHT). We acknowledge the team of Nutils [46] for their support regarding the numerical implementation of the cardiac model.
Keywords
- Cardiac mechanics
- Reduced-order modeling
- Gaussian processes
- Bayesian inference
- Patient-specific analysis
- One-fiber model
- Isogeometric analysis