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Angio-Net: Deep Learning-based Label-free Detection and Morphometric Analysis of Angiogenesis

Overview
Journal Lab Chip
Specialties Biotechnology
Chemistry
Date 2024 Jan 9
PMID 38193617
Authors
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Abstract

Despite significant advancements in three-dimensional (3D) cell culture technology and the acquisition of extensive data, there is an ongoing need for more effective and dependable data analysis methods. These concerns arise from the continued reliance on manual quantification techniques. In this study, we introduce a microphysiological system (MPS) that seamlessly integrates 3D cell culture to acquire large-scale imaging data and employs deep learning-based virtual staining for quantitative angiogenesis analysis. We utilize a standardized microfluidic device to obtain comprehensive angiogenesis data. Introducing Angio-Net, a novel solution that replaces conventional immunocytochemistry, we convert brightfield images into label-free virtual fluorescence images through the fusion of SegNet and cGAN. Moreover, we develop a tool capable of extracting morphological blood vessel features and automating their measurement, facilitating precise quantitative analysis. This integrated system proves to be invaluable for evaluating drug efficacy, including the assessment of anticancer drugs on targets such as the tumor microenvironment. Additionally, its unique ability to enable live cell imaging without the need for cell fixation promises to broaden the horizons of pharmaceutical and biological research. Our study pioneers a powerful approach to high-throughput angiogenesis analysis, marking a significant advancement in MPS.

Citing Articles

Integrating Vascular Phenotypic and Proteomic Analysis in an Open Microfluidic Platform.

Jung S, Cheong S, Lee Y, Lee J, Lee J, Kwon M ACS Nano. 2024; 18(36):24909-24928.

PMID: 39208278 PMC: 11394367. DOI: 10.1021/acsnano.4c05537.