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Quantification of histopathological findings using a novel image analysis platform

Digital pathology, including image analysis and automatic diagnosis of pathological tissue, has been developed remarkably. HALO is an image analysis platform specialized for the study of pathological tissues, which enables tissue segmentation by using artificial intelligence. In this study, we used...

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Autores principales: Horai, Yasushi, Mizukawa, Mao, Nishina, Hironobu, Nishikawa, Satomi, Ono, Yuko, Takemoto, Kana, Baba, Nobuyuki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Japanese Society of Toxicologic Pathology 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6831494/
https://www.ncbi.nlm.nih.gov/pubmed/31719761
http://dx.doi.org/10.1293/tox.2019-0022
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author Horai, Yasushi
Mizukawa, Mao
Nishina, Hironobu
Nishikawa, Satomi
Ono, Yuko
Takemoto, Kana
Baba, Nobuyuki
author_facet Horai, Yasushi
Mizukawa, Mao
Nishina, Hironobu
Nishikawa, Satomi
Ono, Yuko
Takemoto, Kana
Baba, Nobuyuki
author_sort Horai, Yasushi
collection PubMed
description Digital pathology, including image analysis and automatic diagnosis of pathological tissue, has been developed remarkably. HALO is an image analysis platform specialized for the study of pathological tissues, which enables tissue segmentation by using artificial intelligence. In this study, we used HALO to quantify various histopathological changes and findings that were difficult to analyze using conventional image processing software. Using the tissue classifier module, the morphological features of degeneration/necrosis of the hepatocytes and muscle fibers, bile duct in the liver, basophilic tubules and hyaline casts in the kidney, cortex in the thymus, and red pulp, white pulp, and marginal zone in the spleen were learned and separated, and areas of interest were quantified. Furthermore, using the cytonuclear module and vacuole module in combination with the tissue classifier module, the number of erythroblasts in the red pulp of the spleen and each area of acinar cells in the parotid gland were quantified. The results of quantitative analysis were correlated with the histopathological grades evaluated by pathologists. By using artificial intelligence and other functions of HALO, we recognized morphological features, analyzed histopathological changes, and quantified the histopathological grades of various findings. The analysis of histopathological changes using HALO is expected to support pathology evaluations.
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spelling pubmed-68314942019-11-12 Quantification of histopathological findings using a novel image analysis platform Horai, Yasushi Mizukawa, Mao Nishina, Hironobu Nishikawa, Satomi Ono, Yuko Takemoto, Kana Baba, Nobuyuki J Toxicol Pathol Technical Report Digital pathology, including image analysis and automatic diagnosis of pathological tissue, has been developed remarkably. HALO is an image analysis platform specialized for the study of pathological tissues, which enables tissue segmentation by using artificial intelligence. In this study, we used HALO to quantify various histopathological changes and findings that were difficult to analyze using conventional image processing software. Using the tissue classifier module, the morphological features of degeneration/necrosis of the hepatocytes and muscle fibers, bile duct in the liver, basophilic tubules and hyaline casts in the kidney, cortex in the thymus, and red pulp, white pulp, and marginal zone in the spleen were learned and separated, and areas of interest were quantified. Furthermore, using the cytonuclear module and vacuole module in combination with the tissue classifier module, the number of erythroblasts in the red pulp of the spleen and each area of acinar cells in the parotid gland were quantified. The results of quantitative analysis were correlated with the histopathological grades evaluated by pathologists. By using artificial intelligence and other functions of HALO, we recognized morphological features, analyzed histopathological changes, and quantified the histopathological grades of various findings. The analysis of histopathological changes using HALO is expected to support pathology evaluations. Japanese Society of Toxicologic Pathology 2019-08-11 2019-10 /pmc/articles/PMC6831494/ /pubmed/31719761 http://dx.doi.org/10.1293/tox.2019-0022 Text en ©2019 The Japanese Society of Toxicologic Pathology This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial No Derivatives (by-nc-nd) License. (CC-BY-NC-ND 4.0: https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Technical Report
Horai, Yasushi
Mizukawa, Mao
Nishina, Hironobu
Nishikawa, Satomi
Ono, Yuko
Takemoto, Kana
Baba, Nobuyuki
Quantification of histopathological findings using a novel image analysis platform
title Quantification of histopathological findings using a novel image analysis platform
title_full Quantification of histopathological findings using a novel image analysis platform
title_fullStr Quantification of histopathological findings using a novel image analysis platform
title_full_unstemmed Quantification of histopathological findings using a novel image analysis platform
title_short Quantification of histopathological findings using a novel image analysis platform
title_sort quantification of histopathological findings using a novel image analysis platform
topic Technical Report
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6831494/
https://www.ncbi.nlm.nih.gov/pubmed/31719761
http://dx.doi.org/10.1293/tox.2019-0022
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