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LDDMM stochastic interpolants: an application to domain uncertainty quantification in hemodynamics

30 March 2026
Sarah Katz
Francesco Romor
Jia-Jie Zhu
Alfonso Caiazzo
    MedImAI4CE
ArXiv (abs)PDFHTMLGithub
32 Figures
6 Tables
Appendix:37 Pages
Abstract

We introduce a novel conditional stochastic interpolant framework for generative modeling of three-dimensional shapes. The method builds on a recent LDDMM-based registration approach to learn the conditional drift between geometries. By leveraging the resulting pull-back and push-forward operators, we extend this formulation beyond standard Cartesian grids to complex shapes and random variables defined on distinct domains. We present an application in the context of cardiovascular simulations, where aortic shapes are generated from an initial cohort of patients. The conditioning variable is a latent geometric representation defined by a set of centerline points and the radii of the corresponding inscribed spheres. This methodology facilitates both data augmentation for three-dimensional biomedical shapes, and the generation of random perturbations of controlled magnitude for a given shape. These capabilities are essential for quantifying the impact of domain uncertainties arising from medical image segmentation on the estimation of relevant biomarkers.

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