Non-invasive Estimation of Pressure Drop Across Aortic Coarctations: Validation of 0D and 3D Computational Models with In Vivo Measurements
Blood pressure gradient ( Δ P ) across an aortic coarctation (CoA) is an important measurement to diagnose CoA severity and gauge treatment efficacy. Invasive cardiac catheterization is currently the gold-standard method for measuring blood pressure. The objective of this study was to evaluate the a...
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Veröffentlicht in: | Annals of biomedical engineering 2024-05, Vol.52 (5), p.1335-1346 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Blood pressure gradient (
Δ
P
) across an aortic coarctation (CoA) is an important measurement to diagnose CoA severity and gauge treatment efficacy. Invasive cardiac catheterization is currently the gold-standard method for measuring blood pressure. The objective of this study was to evaluate the accuracy of
Δ
P
estimates derived non-invasively using patient-specific 0D and 3D deformable wall simulations. Medical imaging and routine clinical measurements were used to create patient-specific models of patients with CoA (
N
= 17). 0D simulations were performed first and used to tune boundary conditions and initialize 3D simulations.
Δ
P
across the CoA estimated using both 0D and 3D simulations were compared to invasive catheter-based pressure measurements for validation. The 0D simulations were extremely efficient (
∼
15 s computation time) compared to 3D simulations (
∼
30 h computation time on a cluster). However, the 0D
Δ
P
estimates, unsurprisingly, had larger mean errors when compared to catheterization than 3D estimates (12.1 ± 9.9 mmHg vs 5.3 ± 5.4 mmHg). In particular, the 0D model performance degraded in cases where the CoA was adjacent to a bifurcation. The 0D model classified patients with severe CoA requiring intervention (defined as
Δ
P
≥
20 mmHg) with 76% accuracy and 3D simulations improved this to 88%. Overall, a combined approach, using 0D models to efficiently tune and launch 3D models, offers the best combination of speed and accuracy for non-invasive classification of CoA severity. |
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ISSN: | 0090-6964 1573-9686 |
DOI: | 10.1007/s10439-024-03457-5 |