An End-to-End Deep Learning Generative Framework for Refinable Shape Matching and Generation

Soodeh Kalaie, Andy Bulpitt, Alejandro F Frangi, Ali Gooya*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Generative modelling for shapes is a prerequisite for In-Silico Clinical Trials (ISCTs), which aim to cost-effectively validate medical device interventions using synthetic anatomical shapes, often represented as 3D surface meshes. However, constructing AI models to generate shapes closely resembling the real mesh samples is challenging due to variable vertex counts, connectivities, and the lack of dense vertex-wise correspondences across the training data. Employing graph representations for meshes, we develop a novel unsupervised geometric deep-learning model to establish refinable shape correspondences in a latent space, construct a population-derived atlas and generate realistic synthetic shapes. We additionally extend our proposed base model to a joint shape generative-clustering multi-atlas framework to incorporate further variability and preserve more details in the generated shapes. Experimental results using liver and left-ventricular models demonstrate the approach's applicability to computational medicine, highlighting its suitability for ISCTs through a comparative analysis.

Original languageEnglish
JournalIEEE transactions on medical imaging
VolumePP
Early online date5 May 2025
DOIs
Publication statusE-pub ahead of print - 5 May 2025

Keywords

  • corresponence
  • generative modelling
  • graph
  • in-silico clinical trials
  • virtual population

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