Deep Learning Model for Predicting Airway Organoid Differentiation

Mi Hyun Lim, Seungmin Shin, Keonhyeok Park, Jaejung Park, Sung Won Kim, Mohammed Abdullah Basurrah, Seungchul Lee, Do Hyun Kim

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Background:: Organoids are self-organized three-dimensional culture systems and have the advantages of both in vitro and in vivo experiments. However, each organoid has a different degree of self-organization, and methods such as immunofluorescence staining are required for confirmation. Therefore, we established a system to select organoids with high tissue-specific similarity using deep learning without relying on staining by acquiring bright-field images in a non-destructive manner. Methods:: We identified four biomarkers in RNA extracted from airway organoids. We also predicted biomarker expression by image-based analysis of organoids by convolution neural network, a deep learning method. Results:: We predicted airway organoid-specific marker expression from bright-field images of organoids. Organoid differentiation was verified by immunofluorescence staining of the same organoid after predicting biomarker expression in bright-field images. Conclusion:: Our study demonstrates the potential of imaging and deep learning to distinguish organoids with high human tissue similarity in disease research and drug screening.

Original languageEnglish
Pages (from-to)1109-1117
Number of pages9
JournalTissue Engineering and Regenerative Medicine
Volume20
Issue number7
DOIs
StatePublished - Dec 2023

Bibliographical note

Publisher Copyright:
© 2023, Korean Tissue Engineering and Regenerative Medicine Society.

Keywords

  • Airway organoid
  • Bright-field image
  • Deep learning

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