Dec. 6, 2023, 9:26 a.m. | Lucy Smith

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In their work VesselVAE: Recursive Variational Autoencoders for 3D Blood Vessel Synthesis, Paula Feldman and colleagues present a data-driven generative framework for synthesizing blood vessel 3D geometry. We asked Paula about this work, their methodology, and why this is such an interesting area for study. What is the topic of the research in your paper […]

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