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Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast

We studied whether a computer‐assisted system using a combination of data collection by image analysis and analysis by neural networks can differentiate benign and malignant breast lesions. Forty‐six intraductal lesions of the breast were studied by pathologists and by the computer‐assisted system....

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Detalles Bibliográficos
Autores principales: Fukushima, Noriyoshi, Shinbata, Hiroyuki, Hasebe, Takahiro, Yokose, Tomoyuki, Sato, Atsushi, Mukai, Kiyoshi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Blackwell Publishing Ltd 1997
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5921382/
https://www.ncbi.nlm.nih.gov/pubmed/9140118
http://dx.doi.org/10.1111/j.1349-7006.1997.tb00384.x
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author Fukushima, Noriyoshi
Shinbata, Hiroyuki
Hasebe, Takahiro
Yokose, Tomoyuki
Sato, Atsushi
Mukai, Kiyoshi
author_facet Fukushima, Noriyoshi
Shinbata, Hiroyuki
Hasebe, Takahiro
Yokose, Tomoyuki
Sato, Atsushi
Mukai, Kiyoshi
author_sort Fukushima, Noriyoshi
collection PubMed
description We studied whether a computer‐assisted system using a combination of data collection by image analysis and analysis by neural networks can differentiate benign and malignant breast lesions. Forty‐six intraductal lesions of the breast were studied by pathologists and by the computer‐assisted system. Histological evaluation was performed independently by three pathologists, and the lesions were classified into pathologically malignant (n= 12), undetermined (n= 13), and benign (n=21). Computerized nuclear image analysis was performed using the CAS200 (Cell Analysis Systems, Elmhurst, IL) system to obtain data on nuclear morphometric and textural features. A neural network was constructed using the morphometric and texture data obtained from teaching cases of malignant and benign lesions. Then data for unknown cases were classified by the constructed neural network into neural network‐malignant (n= 11), ‐undetermined (n= 5), and ‐benign (n = 30). The agreement rate between the diagnosis by pathologists and judgement by the computer‐assisted system was 75%, excluding pathologically undetermined lesions. There were four false‐negative but no false‐positive results. False‐negative cases had nuclei that were quite different from those of the teaching cases. The agreement rate obtained using either morphometric data or texture data only was lower than that using a combination of both. Selection of appropriate teaching data and incorporation of both morphometric and textural parameters seemed important for obtaining more accurate results. The present data suggest that development of a computer‐assisted histopathological diagnosis system for practical use may be possible.
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spelling pubmed-59213822018-05-11 Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast Fukushima, Noriyoshi Shinbata, Hiroyuki Hasebe, Takahiro Yokose, Tomoyuki Sato, Atsushi Mukai, Kiyoshi Jpn J Cancer Res Article We studied whether a computer‐assisted system using a combination of data collection by image analysis and analysis by neural networks can differentiate benign and malignant breast lesions. Forty‐six intraductal lesions of the breast were studied by pathologists and by the computer‐assisted system. Histological evaluation was performed independently by three pathologists, and the lesions were classified into pathologically malignant (n= 12), undetermined (n= 13), and benign (n=21). Computerized nuclear image analysis was performed using the CAS200 (Cell Analysis Systems, Elmhurst, IL) system to obtain data on nuclear morphometric and textural features. A neural network was constructed using the morphometric and texture data obtained from teaching cases of malignant and benign lesions. Then data for unknown cases were classified by the constructed neural network into neural network‐malignant (n= 11), ‐undetermined (n= 5), and ‐benign (n = 30). The agreement rate between the diagnosis by pathologists and judgement by the computer‐assisted system was 75%, excluding pathologically undetermined lesions. There were four false‐negative but no false‐positive results. False‐negative cases had nuclei that were quite different from those of the teaching cases. The agreement rate obtained using either morphometric data or texture data only was lower than that using a combination of both. Selection of appropriate teaching data and incorporation of both morphometric and textural parameters seemed important for obtaining more accurate results. The present data suggest that development of a computer‐assisted histopathological diagnosis system for practical use may be possible. Blackwell Publishing Ltd 1997-03 /pmc/articles/PMC5921382/ /pubmed/9140118 http://dx.doi.org/10.1111/j.1349-7006.1997.tb00384.x Text en
spellingShingle Article
Fukushima, Noriyoshi
Shinbata, Hiroyuki
Hasebe, Takahiro
Yokose, Tomoyuki
Sato, Atsushi
Mukai, Kiyoshi
Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title_full Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title_fullStr Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title_full_unstemmed Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title_short Application of Image Analysis and Neural Networks to the Pathology Diagnosis of Intraductal Proliferative Lesions of the Breast
title_sort application of image analysis and neural networks to the pathology diagnosis of intraductal proliferative lesions of the breast
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5921382/
https://www.ncbi.nlm.nih.gov/pubmed/9140118
http://dx.doi.org/10.1111/j.1349-7006.1997.tb00384.x
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