A generative AI framework for disease-specific lung microtissue bioengineering

Journal: bioRxiv
Published Date:

Abstract

Generative Lung Architecture Modeling (GLAM) is an integrated bioengineering framework that couples high-resolution three-dimensional tissue imaging with generative artificial intelligence to de novo design and 3D-bioprint anatomically detailed lung microtissue models. Native extracellular 3D matrix architectures of pulmonary parenchyma were extracted from healthy, fibrotic, and emphysematous in vivo mouse disease models and processed through a computational pipeline containing pre-trained image segmentation and 3D mesh generation. The resulting datasets were used to train a U-Net generative diffusion model with attention layers capable of synthesizing healthy and diseased lung tissue architectures. Microtissue cubes of about 200 - 300 micrometer edge length of native and synthetic datasets were fabricated through high-resolution two-photon stereolithography with gelatin-methacryloyl biomaterial ink and successfully seeded with cells, demonstrating biological compatibility. In closing the loop between biological imaging, generative modeling, and high-resolution biofabrication, this integrated framework establishes generative AI as a functional design layer for tissue engineering. The resulting lung microtissues retained architectural features of the native and original tissues, making them an application-ready platform for customizable and scalable fabrication of biological tissue surrogates for preclinical modeling, drug testing, and precision regenerative bioengineering.

Authors

  • Bahry
  • E.; Pestoni
  • J. C.; Hirzel
  • K.; Savchyn
  • T.; Porras-Gonzalez
  • D.; Getmanchuk-Zaporoshchenko
  • V.; Gregor
  • M.; Conlon
  • T. M.; Önder Yildirim
  • A.; Harrington
  • K.; Schmidt
  • D.; Burgstaller
  • G.; Heymann
  • M.

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