npj Digital Medicine (Dec 2024)

Probing the limits and capabilities of diffusion models for the anatomic editing of digital twins

  • Karim Kadry,
  • Shreya Gupta,
  • Farhad R. Nezami,
  • Elazer R. Edelman

DOI
https://doi.org/10.1038/s41746-024-01332-0
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 12

Abstract

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Abstract Numerical simulations of cardiovascular device deployment within digital twins of patient-specific anatomy can expedite and de-risk the device design process. Nonetheless, the exclusive use of patient-specific data constrains the anatomic variability that can be explored. We study how Latent Diffusion Models (LDMs) can edit digital twins to create digital siblings. Siblings can serve as the basis for comparative simulations, which can reveal how subtle anatomic variations impact device deployment, and augment virtual cohorts for improved device assessment. Using a case example centered on cardiac anatomy, we study various methods to generate digital siblings. We specifically introduce anatomic variation at different spatial scales or within localized regions, demonstrating the existence of bias toward common anatomic features. We furthermore leverage this bias for virtual cohort augmentation through selective editing, addressing issues related to dataset imbalance and diversity. Our framework delineates the capabilities of diffusion models in synthesizing anatomic variation for numerical simulation studies.