DeepContrast: Deep Tissue Contrast Enhancement using Synthetic Data Degradations and OOD Model Predictions
Nuno Pimp\~ao Martins, Yannis Kalaidzidis, Marino Zerial, Florian Jug

TL;DR
DeepContrast introduces a novel deep learning method that uses synthetic degradations and out-of-distribution predictions to enhance contrast in microscopy images without requiring ground truth data.
Contribution
The paper proposes a new approach that models tissue degradations synthetically to train neural networks for contrast enhancement without needing clean ground truth images.
Findings
Networks trained on synthetic degradations can improve real microscopy images.
Iterative predictions enhance contrast but may remove image details.
Balance needed between contrast and detail retention.
Abstract
Microscopy images are crucial for life science research, allowing detailed inspection and characterization of cellular and tissue-level structures and functions. However, microscopy data are unavoidably affected by image degradations, such as noise, blur, or others. Many such degradations also contribute to a loss of image contrast, which becomes especially pronounced in deeper regions of thick samples. Today, best performing methods to increase the quality of images are based on Deep Learning approaches, which typically require ground truth (GT) data during training. Our inability to counteract blurring and contrast loss when imaging deep into samples prevents the acquisition of such clean GT data. The fact that the forward process of blurring and contrast loss deep into tissue can be modeled, allowed us to propose a new method that can circumvent the problem of unobtainable GT data.…
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Taxonomy
TopicsCell Image Analysis Techniques · AI in cancer detection · Molecular Biology Techniques and Applications
