CEMay 26

From Centerlines to Hemodynamics: Anisotropic RBF Decoders for Coronary Arteries

arXiv:2605.2757820.4h-index: 5Has Code
Predicted impact top 6% in CE · last 90 daysOriginality Incremental advance
AI Analysis

For clinicians and researchers assessing Coronary Artery Disease, this provides a faster, non-invasive alternative to invasive FFR and costly CFD simulations.

The paper introduces a framework for fast, non-invasive coronary hemodynamics prediction using a transformer-based encoder and anisotropic RBF decoder, achieving lower pressure and WSS errors than neural-operator baselines (e.g., 52% lower mean relative L2 error on multi-vessel dataset) at a fraction of CFD cost.

Accurate and rapid estimation of hemodynamic metrics, such as pressure and wall shear stress (WSS), is important for assessing the severity of Coronary Artery Disease (CAD). Existing approaches, including invasive Fractional Flow Reserve (FFR) measurements and computationally expensive Computational Fluid Dynamics (CFD) simulations, face challenges in invasiveness, cost, and speed. We present a framework for fast, non-invasive coronary hemodynamics prediction. The model encodes 1D vessel centerlines together with inlet flow rate using a transformer-based encoder, and predicts continuous wall-based fields via an anisotropic Radial Basis Function (RBF) decoder aligned with vessel morphology. To support training and evaluation, we introduce two datasets with paired steady-state OpenFOAM simulations: (i) a synthetic benchmark of 4,200 single-vessel geometries with controlled anatomical variations, and (ii) a multi-vessel dataset derived from ImageCAS including 4,800 cases spanning both right and left coronary arteries, generated by randomly introducing stenoses and varying physiologically plausible flow rates. Across both datasets, our method achieves lower pressure and WSS errors than strong neural-operator baselines (GNOT, Transolver, and ONO) at a fraction of the computational cost of CFD. On the multi-vessel dataset, using 1,024 anisotropic RBF centers our model reduces the mean relative L2 error by 52% compared to the best neural-operator baseline, while at 128 centers it requires 13.8x fewer FLOPs than GNOT and still outperforms all baselines. The single-vessel dataset is publicly available at https://huggingface.co/datasets/angioinsight/single-vessel-flow.

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