A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images

Quantitative analysis of immunohistochemically stained breast cancer specimens by cell counting is important for prognosis and treatment planning. This paper presents a robust, accurate, and novel method to label immunopositive and immunonegative cells automatically. During preprocessing, we develop...

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Main Authors: Lu Chen, Ji Bao, Qiang Huang, Huaiqiang Sun
Format: Article
Language:English
Published: Termedia Publishing House 2019-12-01
Series:Polish Journal of Pathology
Subjects:
Online Access:https://www.termedia.pl/A-robust-and-automated-cell-counting-method-in-quantification-of-digital-breast-cancer-immunohistochemistry-images,55,38845,1,1.html
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spelling doaj-caa0ac765c2544bf97a252021cbffea12020-11-25T03:37:03ZengTermedia Publishing HousePolish Journal of Pathology1233-96872084-98692019-12-0170316217310.5114/pjp.2019.9039238845A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry imagesLu ChenJi BaoQiang HuangHuaiqiang SunQuantitative analysis of immunohistochemically stained breast cancer specimens by cell counting is important for prognosis and treatment planning. This paper presents a robust, accurate, and novel method to label immunopositive and immunonegative cells automatically. During preprocessing, we developed an adaptive method to correct the colour aberration caused by imaging conditions. Next, a pixel-level segmentation was performed on preprocessed images using a support vector machine with a radial basis function kernel in HSV colour space. The segmentation result was processed by mathematical morphology operations to correct error-segmented regions and extract the marker for each cell. Validation studies showed that the automated cell-counting method had divergences varying from –5.05% to 3.99% compared with manual counting by a pathologist, indicating considerable agreement of the present automated cell counting method with manual counting. Thus, this method can free pathologists from laborious work and can potentially improve the accuracy and the reproducibility of diagnosis.https://www.termedia.pl/A-robust-and-automated-cell-counting-method-in-quantification-of-digital-breast-cancer-immunohistochemistry-images,55,38845,1,1.htmlbreast cancer cell counting immunohistochemistry support vector machine (svm) mathematical morphology
collection DOAJ
language English
format Article
sources DOAJ
author Lu Chen
Ji Bao
Qiang Huang
Huaiqiang Sun
spellingShingle Lu Chen
Ji Bao
Qiang Huang
Huaiqiang Sun
A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
Polish Journal of Pathology
breast cancer
cell counting
immunohistochemistry
support vector machine (svm)
mathematical morphology
author_facet Lu Chen
Ji Bao
Qiang Huang
Huaiqiang Sun
author_sort Lu Chen
title A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
title_short A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
title_full A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
title_fullStr A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
title_full_unstemmed A robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
title_sort robust and automated cell counting method in quantification of digital breast cancer immunohistochemistry images
publisher Termedia Publishing House
series Polish Journal of Pathology
issn 1233-9687
2084-9869
publishDate 2019-12-01
description Quantitative analysis of immunohistochemically stained breast cancer specimens by cell counting is important for prognosis and treatment planning. This paper presents a robust, accurate, and novel method to label immunopositive and immunonegative cells automatically. During preprocessing, we developed an adaptive method to correct the colour aberration caused by imaging conditions. Next, a pixel-level segmentation was performed on preprocessed images using a support vector machine with a radial basis function kernel in HSV colour space. The segmentation result was processed by mathematical morphology operations to correct error-segmented regions and extract the marker for each cell. Validation studies showed that the automated cell-counting method had divergences varying from –5.05% to 3.99% compared with manual counting by a pathologist, indicating considerable agreement of the present automated cell counting method with manual counting. Thus, this method can free pathologists from laborious work and can potentially improve the accuracy and the reproducibility of diagnosis.
topic breast cancer
cell counting
immunohistochemistry
support vector machine (svm)
mathematical morphology
url https://www.termedia.pl/A-robust-and-automated-cell-counting-method-in-quantification-of-digital-breast-cancer-immunohistochemistry-images,55,38845,1,1.html
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