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Multi-Organ Gland Segmentation Using Deep Learning

Clinical morphological analysis of histopathology samples is an effective method in cancer diagnosis. Computational pathology methods can be employed to automate this analysis, providing improved objectivity and scalability. More specifically, computational techniques can be used in segmenting gland...

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Autores principales: Binder, Thomas, Tantaoui, El Mehdi, Pati, Pushpak, Catena, Raúl, Set-Aghayan, Ago, Gabrani, Maria
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6690405/
https://www.ncbi.nlm.nih.gov/pubmed/31428614
http://dx.doi.org/10.3389/fmed.2019.00173
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author Binder, Thomas
Tantaoui, El Mehdi
Pati, Pushpak
Catena, Raúl
Set-Aghayan, Ago
Gabrani, Maria
author_facet Binder, Thomas
Tantaoui, El Mehdi
Pati, Pushpak
Catena, Raúl
Set-Aghayan, Ago
Gabrani, Maria
author_sort Binder, Thomas
collection PubMed
description Clinical morphological analysis of histopathology samples is an effective method in cancer diagnosis. Computational pathology methods can be employed to automate this analysis, providing improved objectivity and scalability. More specifically, computational techniques can be used in segmenting glands, which is an essential factor in cancer diagnosis. Automatic delineation of glands is a challenging task considering a large variability in glandular morphology across tissues and pathological subtypes. A deep learning based gland segmentation method can be developed to address the above task, but it requires a large number of accurate gland annotations from several tissue slides. Such a large dataset need to be generated manually by experienced pathologists, which is laborious, time-consuming, expensive, and suffers from the subjectivity of the annotator. So far, deep learning techniques have produced promising results on a few organ-specific gland segmentation tasks, however, the demand for organ-specific gland annotations hinder the extensibility of these techniques to other organs. This work investigates the idea of cross-domain (-organ type) approximation that aims at reducing the need for organ-specific annotations. Unlike parenchyma, the stromal component of tissues, that lies between the glands, is more consistent across several organs. It is hypothesized that an automatic method, that can precisely segment the stroma, would pave the way for a cross-organ gland segmentation. Two proposed Dense-U-Nets are trained on H&E strained colon adenocarcinoma samples focusing on the gland and stroma segmentation. The trained networks are evaluated on two independent datasets, they are, a H&E stained colon adenocarcinoma dataset and a H&E stained breast invasive cancer dataset. The trained network targeting the stroma segmentation performs similar to the network targeting the gland segmentation on the colon dataset. Whereas, the former approach performs significantly better compared to the latter approach on the breast dataset, showcasing the higher generalization capacity of the stroma segmentation approach. The networks are evaluated using Dice coefficient and Hausdorff distance computed between the ground truth gland masks and the predicted gland masks. The conducted experiments validate the efficacy of the proposed stoma segmentation approach toward multi-organ gland segmentation.
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spelling pubmed-66904052019-08-19 Multi-Organ Gland Segmentation Using Deep Learning Binder, Thomas Tantaoui, El Mehdi Pati, Pushpak Catena, Raúl Set-Aghayan, Ago Gabrani, Maria Front Med (Lausanne) Medicine Clinical morphological analysis of histopathology samples is an effective method in cancer diagnosis. Computational pathology methods can be employed to automate this analysis, providing improved objectivity and scalability. More specifically, computational techniques can be used in segmenting glands, which is an essential factor in cancer diagnosis. Automatic delineation of glands is a challenging task considering a large variability in glandular morphology across tissues and pathological subtypes. A deep learning based gland segmentation method can be developed to address the above task, but it requires a large number of accurate gland annotations from several tissue slides. Such a large dataset need to be generated manually by experienced pathologists, which is laborious, time-consuming, expensive, and suffers from the subjectivity of the annotator. So far, deep learning techniques have produced promising results on a few organ-specific gland segmentation tasks, however, the demand for organ-specific gland annotations hinder the extensibility of these techniques to other organs. This work investigates the idea of cross-domain (-organ type) approximation that aims at reducing the need for organ-specific annotations. Unlike parenchyma, the stromal component of tissues, that lies between the glands, is more consistent across several organs. It is hypothesized that an automatic method, that can precisely segment the stroma, would pave the way for a cross-organ gland segmentation. Two proposed Dense-U-Nets are trained on H&E strained colon adenocarcinoma samples focusing on the gland and stroma segmentation. The trained networks are evaluated on two independent datasets, they are, a H&E stained colon adenocarcinoma dataset and a H&E stained breast invasive cancer dataset. The trained network targeting the stroma segmentation performs similar to the network targeting the gland segmentation on the colon dataset. Whereas, the former approach performs significantly better compared to the latter approach on the breast dataset, showcasing the higher generalization capacity of the stroma segmentation approach. The networks are evaluated using Dice coefficient and Hausdorff distance computed between the ground truth gland masks and the predicted gland masks. The conducted experiments validate the efficacy of the proposed stoma segmentation approach toward multi-organ gland segmentation. Frontiers Media S.A. 2019-08-05 /pmc/articles/PMC6690405/ /pubmed/31428614 http://dx.doi.org/10.3389/fmed.2019.00173 Text en Copyright © 2019 Binder, Tantaoui, Pati, Catena, Set-Aghayan and Gabrani. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Medicine
Binder, Thomas
Tantaoui, El Mehdi
Pati, Pushpak
Catena, Raúl
Set-Aghayan, Ago
Gabrani, Maria
Multi-Organ Gland Segmentation Using Deep Learning
title Multi-Organ Gland Segmentation Using Deep Learning
title_full Multi-Organ Gland Segmentation Using Deep Learning
title_fullStr Multi-Organ Gland Segmentation Using Deep Learning
title_full_unstemmed Multi-Organ Gland Segmentation Using Deep Learning
title_short Multi-Organ Gland Segmentation Using Deep Learning
title_sort multi-organ gland segmentation using deep learning
topic Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6690405/
https://www.ncbi.nlm.nih.gov/pubmed/31428614
http://dx.doi.org/10.3389/fmed.2019.00173
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