Issue 21, 2022

D-CryptO: deep learning-based analysis of colon organoid morphology from brightfield images

Abstract

Stem cell-derived organoids are a promising tool to model native human tissues as they resemble human organs functionally and structurally compared to traditional monolayer cell-based assays. For instance, colon organoids can spontaneously develop crypt-like structures similar to those found in the native colon. While analyzing the structural development of organoids can be a valuable readout, using traditional image analysis tools makes it challenging because of the heterogeneities and the abstract nature of organoid morphologies. To address this limitation, we developed and validated a deep learning-based image analysis tool, named D-CryptO, for the classification of organoid morphology. D-CryptO can automatically assess the crypt formation and opacity of colorectal organoids from brightfield images to determine the extent of organoid structural maturity. To validate this tool, changes in organoid morphology were analyzed during organoid passaging and short-term forskolin stimulation. To further demonstrate the potential of D-CryptO for drug testing, organoid structures were analyzed following treatments with a panel of chemotherapeutic drugs. With D-CryptO, subtle variations in how colon organoids responded to the different chemotherapeutic drugs were detected, which suggest potentially distinct mechanisms of action. This tool could be expanded to other organoid types, like intestinal organoids, to facilitate 3D tissue morphological analysis.

Graphical abstract: D-CryptO: deep learning-based analysis of colon organoid morphology from brightfield images

Supplementary files

Article information

Article type
Paper
Submitted
01 Jul 2022
Accepted
21 Sep 2022
First published
06 Oct 2022

Lab Chip, 2022,22, 4118-4128

D-CryptO: deep learning-based analysis of colon organoid morphology from brightfield images

L. Abdul, J. Xu, A. Sotra, A. Chaudary, J. Gao, S. Rajasekar, N. Anvari, H. Mahyar and B. Zhang, Lab Chip, 2022, 22, 4118 DOI: 10.1039/D2LC00596D

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