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Tackling stain variability using CycleGAN-based stain augmentation

BACKGROUND: Considerable inter- and intra-laboratory stain variability exists in pathology, representing a challenge in development and application of deep learning (DL) approaches. Since tackling all sources of stain variability with manual annotation is not feasible, we here investigated and compa...

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Autores principales: Bouteldja, Nassim, Hölscher, David L., Bülow, Roman D., Roberts, Ian S.D., Coppo, Rosanna, Boor, Peter
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577138/
https://www.ncbi.nlm.nih.gov/pubmed/36268102
http://dx.doi.org/10.1016/j.jpi.2022.100140
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author Bouteldja, Nassim
Hölscher, David L.
Bülow, Roman D.
Roberts, Ian S.D.
Coppo, Rosanna
Boor, Peter
author_facet Bouteldja, Nassim
Hölscher, David L.
Bülow, Roman D.
Roberts, Ian S.D.
Coppo, Rosanna
Boor, Peter
author_sort Bouteldja, Nassim
collection PubMed
description BACKGROUND: Considerable inter- and intra-laboratory stain variability exists in pathology, representing a challenge in development and application of deep learning (DL) approaches. Since tackling all sources of stain variability with manual annotation is not feasible, we here investigated and compared unsupervised DL approaches to reduce the consequences of stain variability in kidney pathology. METHODS: We aimed to improve the applicability of a pretrained DL segmentation model to 3 external multi-centric cohorts with large stain variability. In contrast to the traditional approach of training generative adversarial networks (GAN) for stain normalization, we here propose to tackle stain variability by data augmentation. We augment the training data of the pretrained model by the stain variability using CycleGANs and then retrain the model on the stain-augmented dataset. We compared the performance of i/ the unmodified pretrained segmentation model with ii/ CycleGAN-based stain normalization, iii/ a feature-preserving modification to ii/ for improved normalization, and iv/ the proposed stain-augmented model. RESULTS: The proposed stain-augmented model showed highest mean segmentation accuracy in all external cohorts and maintained comparable performance on the training cohort. However, the increase in performance was only marginal compared to the pretrained model. CycleGAN-based stain normalization suffered from encoded imperceptible information into the normalizations that confused the pretrained model and thus resulted in slightly worse performance. CONCLUSIONS: Our findings suggest that stain variability can be tackled more effectively by augmenting data by it than by following the commonly used approach of normalizing the stain. However, the applicability of this approach providing only a rather slight performance increase has to be weighted against an additional carbon footprint.
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spelling pubmed-95771382022-10-19 Tackling stain variability using CycleGAN-based stain augmentation Bouteldja, Nassim Hölscher, David L. Bülow, Roman D. Roberts, Ian S.D. Coppo, Rosanna Boor, Peter J Pathol Inform Original Research Article BACKGROUND: Considerable inter- and intra-laboratory stain variability exists in pathology, representing a challenge in development and application of deep learning (DL) approaches. Since tackling all sources of stain variability with manual annotation is not feasible, we here investigated and compared unsupervised DL approaches to reduce the consequences of stain variability in kidney pathology. METHODS: We aimed to improve the applicability of a pretrained DL segmentation model to 3 external multi-centric cohorts with large stain variability. In contrast to the traditional approach of training generative adversarial networks (GAN) for stain normalization, we here propose to tackle stain variability by data augmentation. We augment the training data of the pretrained model by the stain variability using CycleGANs and then retrain the model on the stain-augmented dataset. We compared the performance of i/ the unmodified pretrained segmentation model with ii/ CycleGAN-based stain normalization, iii/ a feature-preserving modification to ii/ for improved normalization, and iv/ the proposed stain-augmented model. RESULTS: The proposed stain-augmented model showed highest mean segmentation accuracy in all external cohorts and maintained comparable performance on the training cohort. However, the increase in performance was only marginal compared to the pretrained model. CycleGAN-based stain normalization suffered from encoded imperceptible information into the normalizations that confused the pretrained model and thus resulted in slightly worse performance. CONCLUSIONS: Our findings suggest that stain variability can be tackled more effectively by augmenting data by it than by following the commonly used approach of normalizing the stain. However, the applicability of this approach providing only a rather slight performance increase has to be weighted against an additional carbon footprint. Elsevier 2022-09-13 /pmc/articles/PMC9577138/ /pubmed/36268102 http://dx.doi.org/10.1016/j.jpi.2022.100140 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
Hölscher, David L.
Bülow, Roman D.
Roberts, Ian S.D.
Coppo, Rosanna
Boor, Peter
Tackling stain variability using CycleGAN-based stain augmentation
title Tackling stain variability using CycleGAN-based stain augmentation
title_full Tackling stain variability using CycleGAN-based stain augmentation
title_fullStr Tackling stain variability using CycleGAN-based stain augmentation
title_full_unstemmed Tackling stain variability using CycleGAN-based stain augmentation
title_short Tackling stain variability using CycleGAN-based stain augmentation
title_sort tackling stain variability using cyclegan-based stain augmentation
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577138/
https://www.ncbi.nlm.nih.gov/pubmed/36268102
http://dx.doi.org/10.1016/j.jpi.2022.100140
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