Home
Scholarly Works
Deep-LUMEN assay – human lung epithelial spheroid...
Journal article

Deep-LUMEN assay – human lung epithelial spheroid classification from brightfield images using deep learning

Abstract

Three-dimensional (3D) tissue models such as epithelial spheroids or organoids have become popular for pre-clinical drug studies. In contrast to 2D monolayer culture, the characterization of 3D tissue models from non-invasive brightfield images is a significant challenge. To address this issue, here we report a deep-learning uncovered measurement of epithelial networks (Deep-LUMEN) assay. Deep-LUMEN is an object detection algorithm that has been fine-tuned to automatically uncover subtle differences in epithelial spheroid morphology from brightfield images. This algorithm can track changes in the luminal structure of tissue spheroids and distinguish between polarized and non-polarized lung epithelial spheroids. The Deep-LUMEN assay was validated by screening for changes in spheroid epithelial architecture in response to different extracellular matrices and drug treatments. Specifically, we found the dose-dependent toxicity of cyclosporin can be underestimated if the effect of the drug on tissue morphology is not considered. Hence, Deep-LUMEN could be used to assess drug effects and capture morphological changes in 3D spheroid models in a non-invasive manner.

Authors

Abdul L; Rajasekar S; Lin DSY; Raja SV; Sotra A; Feng Y; Liu A; Zhang B

Journal

Lab on a Chip, Vol. 20, No. 24, pp. 4623–4631

Publisher

Royal Society of Chemistry (RSC)

Publication Date

December 15, 2020

DOI

10.1039/d0lc01010c

ISSN

1473-0197

Contact the Experts team