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Improving unsupervised stain-to-stain translation using self-supervision and meta-learning

BACKGROUND: In digital pathology, many image analysis tasks are challenged by the need for large and time-consuming manual data annotations to cope with various sources of variability in the image domain. Unsupervised domain adaptation based on image-to-image translation is gaining importance in thi...

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Autores principales: Bouteldja, Nassim, Klinkhammer, Barbara M., Schlaich, Tarek, Boor, Peter, Merhof, Dorit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577059/
https://www.ncbi.nlm.nih.gov/pubmed/36268068
http://dx.doi.org/10.1016/j.jpi.2022.100107
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author Bouteldja, Nassim
Klinkhammer, Barbara M.
Schlaich, Tarek
Boor, Peter
Merhof, Dorit
author_facet Bouteldja, Nassim
Klinkhammer, Barbara M.
Schlaich, Tarek
Boor, Peter
Merhof, Dorit
author_sort Bouteldja, Nassim
collection PubMed
description BACKGROUND: In digital pathology, many image analysis tasks are challenged by the need for large and time-consuming manual data annotations to cope with various sources of variability in the image domain. Unsupervised domain adaptation based on image-to-image translation is gaining importance in this field by addressing variabilities without the manual overhead. Here, we tackle the variation of different histological stains by unsupervised stain-to-stain translation to enable a stain-independent applicability of a deep learning segmentation model. METHODS: We use CycleGANs for stain-to-stain translation in kidney histopathology, and propose two novel approaches to improve translational effectivity. First, we integrate a prior segmentation network into the CycleGAN for a self-supervised, application-oriented optimization of translation through semantic guidance, and second, we incorporate extra channels to the translation output to implicitly separate artificial meta-information otherwise encoded for tackling underdetermined reconstructions. RESULTS: The latter showed partially superior performances to the unmodified CycleGAN, but the former performed best in all stains providing instance-level Dice scores ranging between 78% and 92% for most kidney structures, such as glomeruli, tubules, and veins. However, CycleGANs showed only limited performance in the translation of other structures, e.g. arteries. Our study also found somewhat lower performance for all structures in all stains when compared to segmentation in the original stain. CONCLUSIONS: Our study suggests that with current unsupervised technologies, it seems unlikely to produce “generally” applicable simulated stains.
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spelling pubmed-95770592022-10-19 Improving unsupervised stain-to-stain translation using self-supervision and meta-learning Bouteldja, Nassim Klinkhammer, Barbara M. Schlaich, Tarek Boor, Peter Merhof, Dorit J Pathol Inform Original Research Article BACKGROUND: In digital pathology, many image analysis tasks are challenged by the need for large and time-consuming manual data annotations to cope with various sources of variability in the image domain. Unsupervised domain adaptation based on image-to-image translation is gaining importance in this field by addressing variabilities without the manual overhead. Here, we tackle the variation of different histological stains by unsupervised stain-to-stain translation to enable a stain-independent applicability of a deep learning segmentation model. METHODS: We use CycleGANs for stain-to-stain translation in kidney histopathology, and propose two novel approaches to improve translational effectivity. First, we integrate a prior segmentation network into the CycleGAN for a self-supervised, application-oriented optimization of translation through semantic guidance, and second, we incorporate extra channels to the translation output to implicitly separate artificial meta-information otherwise encoded for tackling underdetermined reconstructions. RESULTS: The latter showed partially superior performances to the unmodified CycleGAN, but the former performed best in all stains providing instance-level Dice scores ranging between 78% and 92% for most kidney structures, such as glomeruli, tubules, and veins. However, CycleGANs showed only limited performance in the translation of other structures, e.g. arteries. Our study also found somewhat lower performance for all structures in all stains when compared to segmentation in the original stain. CONCLUSIONS: Our study suggests that with current unsupervised technologies, it seems unlikely to produce “generally” applicable simulated stains. Elsevier 2022-06-20 /pmc/articles/PMC9577059/ /pubmed/36268068 http://dx.doi.org/10.1016/j.jpi.2022.100107 Text en © 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Research Article
Bouteldja, Nassim
Klinkhammer, Barbara M.
Schlaich, Tarek
Boor, Peter
Merhof, Dorit
Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title_full Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title_fullStr Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title_full_unstemmed Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title_short Improving unsupervised stain-to-stain translation using self-supervision and meta-learning
title_sort improving unsupervised stain-to-stain translation using self-supervision and meta-learning
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577059/
https://www.ncbi.nlm.nih.gov/pubmed/36268068
http://dx.doi.org/10.1016/j.jpi.2022.100107
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