Virtual organelle self-coding for fluorescence imaging via adversarial learning
Thanh Nguyen, Vy Bui, Anh Thai, Van Lam, Christopher B. Raub,, Lin-Ching Chang, and George Nehmetallah

TL;DR
This paper introduces VirFluoNet, a deep learning method using cGANs to virtually generate fluorescence images of cellular structures, reducing the need for physical staining and sample preparation in fluorescence microscopy.
Contribution
It develops a novel deep neural network approach for virtual fluorescence staining, enabling digital transformation of fluorescence images across different molecular labels in the same field-of-view.
Findings
cGAN effectively predicts fluorescence channels from phase contrast images.
Deep learning model successfully autofocuses fluorescence images.
Quantitative error index assesses prediction accuracy and biological interpretation.
Abstract
Fluorescence microscopy plays a vital role in understanding the subcellular structures of living cells. However, it requires considerable effort in sample preparation related to chemical fixation, staining, cost, and time. To reduce those factors, we present a virtual fluorescence staining method based on deep neural networks (VirFluoNet) to transform fluorescence images of molecular labels into other molecular fluorescence labels in the same field-of-view. To achieve this goal, we develop and train a conditional generative adversarial network (cGAN) to perform digital fluorescence imaging demonstrated on human osteosarcoma U2OS cell fluorescence images captured under Cell Painting staining protocol. A detailed comparative analysis is also conducted on the performance of the cGAN network between predicting fluorescence channels based on phase contrast or based on another fluorescence…
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