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StainCUT: Stain Normalization with Contrastive Learning

In recent years, numerous deep-learning approaches have been developed for the analysis of histopathology Whole Slide Images (WSI). A recurrent issue is the lack of generalization ability of a model that has been trained with images of one laboratory and then used to analyze images of a different la...

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Autores principales: Gutiérrez Pérez, José Carlos, Otero Baguer, Daniel, Maass, Peter
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9317097/
https://www.ncbi.nlm.nih.gov/pubmed/35877646
http://dx.doi.org/10.3390/jimaging8070202
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author Gutiérrez Pérez, José Carlos
Otero Baguer, Daniel
Maass, Peter
author_facet Gutiérrez Pérez, José Carlos
Otero Baguer, Daniel
Maass, Peter
author_sort Gutiérrez Pérez, José Carlos
collection PubMed
description In recent years, numerous deep-learning approaches have been developed for the analysis of histopathology Whole Slide Images (WSI). A recurrent issue is the lack of generalization ability of a model that has been trained with images of one laboratory and then used to analyze images of a different laboratory. This occurs mainly due to the use of different scanners, laboratory procedures, and staining variations. This can produce strong color differences, which change not only the characteristics of the image, such as the contrast, brightness, and saturation, but also create more complex style variations. In this paper, we present a deep-learning solution based on contrastive learning to transfer from one staining style to another: StainCUT. This method eliminates the need to choose a reference frame and does not need paired images with different staining to learn the mapping between the stain distributions. Additionally, it does not rely on the CycleGAN approach, which makes the method efficient in terms of memory consumption and running time. We evaluate the model using two datasets that consist of the same specimens digitized with two different scanners. We also apply it as a preprocessing step for the semantic segmentation of metastases in lymph nodes. The model was trained on data from one of the laboratories and evaluated on data from another. The results validate the hypothesis that stain normalization indeed improves the performance of the model. Finally, we also investigate and compare the application of the stain normalization step during the training of the model and at inference.
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spelling pubmed-93170972022-07-27 StainCUT: Stain Normalization with Contrastive Learning Gutiérrez Pérez, José Carlos Otero Baguer, Daniel Maass, Peter J Imaging Article In recent years, numerous deep-learning approaches have been developed for the analysis of histopathology Whole Slide Images (WSI). A recurrent issue is the lack of generalization ability of a model that has been trained with images of one laboratory and then used to analyze images of a different laboratory. This occurs mainly due to the use of different scanners, laboratory procedures, and staining variations. This can produce strong color differences, which change not only the characteristics of the image, such as the contrast, brightness, and saturation, but also create more complex style variations. In this paper, we present a deep-learning solution based on contrastive learning to transfer from one staining style to another: StainCUT. This method eliminates the need to choose a reference frame and does not need paired images with different staining to learn the mapping between the stain distributions. Additionally, it does not rely on the CycleGAN approach, which makes the method efficient in terms of memory consumption and running time. We evaluate the model using two datasets that consist of the same specimens digitized with two different scanners. We also apply it as a preprocessing step for the semantic segmentation of metastases in lymph nodes. The model was trained on data from one of the laboratories and evaluated on data from another. The results validate the hypothesis that stain normalization indeed improves the performance of the model. Finally, we also investigate and compare the application of the stain normalization step during the training of the model and at inference. MDPI 2022-07-20 /pmc/articles/PMC9317097/ /pubmed/35877646 http://dx.doi.org/10.3390/jimaging8070202 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Gutiérrez Pérez, José Carlos
Otero Baguer, Daniel
Maass, Peter
StainCUT: Stain Normalization with Contrastive Learning
title StainCUT: Stain Normalization with Contrastive Learning
title_full StainCUT: Stain Normalization with Contrastive Learning
title_fullStr StainCUT: Stain Normalization with Contrastive Learning
title_full_unstemmed StainCUT: Stain Normalization with Contrastive Learning
title_short StainCUT: Stain Normalization with Contrastive Learning
title_sort staincut: stain normalization with contrastive learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9317097/
https://www.ncbi.nlm.nih.gov/pubmed/35877646
http://dx.doi.org/10.3390/jimaging8070202
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