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Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists

Numerous cancer histopathology specimens have been collected and digitized over the past few decades. A comprehensive evaluation of the distribution of various cells in tumor tissue sections can provide valuable information for understanding cancer. Deep learning is suitable for achieving these goal...

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Autores principales: Komura, Daisuke, Onoyama, Takumi, Shinbo, Koki, Odaka, Hiroto, Hayakawa, Minako, Ochi, Mieko, Herdiantoputri, Ranny Rahaningrum, Endo, Haruya, Katoh, Hiroto, Ikeda, Tohru, Ushiku, Tetsuo, Ishikawa, Shumpei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9982301/
https://www.ncbi.nlm.nih.gov/pubmed/36873900
http://dx.doi.org/10.1016/j.patter.2023.100688
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author Komura, Daisuke
Onoyama, Takumi
Shinbo, Koki
Odaka, Hiroto
Hayakawa, Minako
Ochi, Mieko
Herdiantoputri, Ranny Rahaningrum
Endo, Haruya
Katoh, Hiroto
Ikeda, Tohru
Ushiku, Tetsuo
Ishikawa, Shumpei
author_facet Komura, Daisuke
Onoyama, Takumi
Shinbo, Koki
Odaka, Hiroto
Hayakawa, Minako
Ochi, Mieko
Herdiantoputri, Ranny Rahaningrum
Endo, Haruya
Katoh, Hiroto
Ikeda, Tohru
Ushiku, Tetsuo
Ishikawa, Shumpei
author_sort Komura, Daisuke
collection PubMed
description Numerous cancer histopathology specimens have been collected and digitized over the past few decades. A comprehensive evaluation of the distribution of various cells in tumor tissue sections can provide valuable information for understanding cancer. Deep learning is suitable for achieving these goals; however, the collection of extensive, unbiased training data is hindered, thus limiting the production of accurate segmentation models. This study presents SegPath—the largest annotation dataset (>10 times larger than publicly available annotations)—for the segmentation of hematoxylin and eosin (H&E)-stained sections for eight major cell types in cancer tissue. The SegPath generating pipeline used H&E-stained sections that were destained and subsequently immunofluorescence-stained with carefully selected antibodies. We found that SegPath is comparable with, or outperforms, pathologist annotations. Moreover, annotations by pathologists are biased toward typical morphologies. However, the model trained on SegPath can overcome this limitation. Our results provide foundational datasets for machine-learning research in histopathology.
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spelling pubmed-99823012023-03-04 Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists Komura, Daisuke Onoyama, Takumi Shinbo, Koki Odaka, Hiroto Hayakawa, Minako Ochi, Mieko Herdiantoputri, Ranny Rahaningrum Endo, Haruya Katoh, Hiroto Ikeda, Tohru Ushiku, Tetsuo Ishikawa, Shumpei Patterns (N Y) Descriptor Numerous cancer histopathology specimens have been collected and digitized over the past few decades. A comprehensive evaluation of the distribution of various cells in tumor tissue sections can provide valuable information for understanding cancer. Deep learning is suitable for achieving these goals; however, the collection of extensive, unbiased training data is hindered, thus limiting the production of accurate segmentation models. This study presents SegPath—the largest annotation dataset (>10 times larger than publicly available annotations)—for the segmentation of hematoxylin and eosin (H&E)-stained sections for eight major cell types in cancer tissue. The SegPath generating pipeline used H&E-stained sections that were destained and subsequently immunofluorescence-stained with carefully selected antibodies. We found that SegPath is comparable with, or outperforms, pathologist annotations. Moreover, annotations by pathologists are biased toward typical morphologies. However, the model trained on SegPath can overcome this limitation. Our results provide foundational datasets for machine-learning research in histopathology. Elsevier 2023-02-10 /pmc/articles/PMC9982301/ /pubmed/36873900 http://dx.doi.org/10.1016/j.patter.2023.100688 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Descriptor
Komura, Daisuke
Onoyama, Takumi
Shinbo, Koki
Odaka, Hiroto
Hayakawa, Minako
Ochi, Mieko
Herdiantoputri, Ranny Rahaningrum
Endo, Haruya
Katoh, Hiroto
Ikeda, Tohru
Ushiku, Tetsuo
Ishikawa, Shumpei
Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title_full Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title_fullStr Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title_full_unstemmed Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title_short Restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
title_sort restaining-based annotation for cancer histology segmentation to overcome annotation-related limitations among pathologists
topic Descriptor
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9982301/
https://www.ncbi.nlm.nih.gov/pubmed/36873900
http://dx.doi.org/10.1016/j.patter.2023.100688
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