Breast cancer nuclei segmentation and classification based on a deep learning approach

One of the most popular methods in the diagnosis of breast cancer is fine-needle biopsy without aspiration. Cell nuclei are the most important elements of cancer diagnostics based on cytological images. Therefore, the first step of successful classification of cytological images is effective automat...

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Main Authors: Kowal Marek, Skobel Marcin, Gramacki Artur, Korbicz Józef
Format: Article
Language:English
Published: Sciendo 2021-03-01
Series:International Journal of Applied Mathematics and Computer Science
Subjects:
Online Access:https://doi.org/10.34768/amcs-2021-0007
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spelling doaj-2888787d3eea4c71a7be2af26e0599112021-09-06T19:41:54ZengSciendoInternational Journal of Applied Mathematics and Computer Science2083-84922021-03-013118510610.34768/amcs-2021-0007Breast cancer nuclei segmentation and classification based on a deep learning approachKowal Marek0Skobel Marcin1Gramacki Artur2Korbicz Józef3Institute of Control and Computation Engineering, University of Zielona Góra, ul. Szafrana 2, 65-516Zielona Góra, PolandInstitute of Control and Computation Engineering, University of Zielona Góra, ul. Szafrana 2, 65-516Zielona Góra, PolandInstitute of Control and Computation Engineering, University of Zielona Góra, ul. Szafrana 2, 65-516Zielona Góra, PolandInstitute of Control and Computation Engineering, University of Zielona Góra, ul. Szafrana 2, 65-516Zielona Góra, PolandOne of the most popular methods in the diagnosis of breast cancer is fine-needle biopsy without aspiration. Cell nuclei are the most important elements of cancer diagnostics based on cytological images. Therefore, the first step of successful classification of cytological images is effective automatic segmentation of cell nuclei. The aims of our study include (a) development of segmentation methods of cell nuclei based on deep learning techniques, (b) extraction of some morpho-metric, colorimetric and textural features of individual segmented nuclei, (c) based on the extracted features, construction of effective classifiers for detecting malignant or benign cases. The segmentation methods used in this paper are based on (a) fully convolutional neural networks and (b) the marker-controlled watershed algorithm. For the classification task, seven various classification methods are used. Cell nuclei segmentation achieves 90% accuracy for benign and 86% for malignant nuclei according to the F-score. The maximum accuracy of the classification reached 80.2% to 92.4%, depending on the type (malignant or benign) of cell nuclei. The classification of tumors based on cytological images is an extremely challenging task. However, the obtained results are promising, and it is possible to state that automatic diagnostic methods are competitive to manual ones.https://doi.org/10.34768/amcs-2021-0007breast cancernuclei segmentationclassificationimage processing
collection DOAJ
language English
format Article
sources DOAJ
author Kowal Marek
Skobel Marcin
Gramacki Artur
Korbicz Józef
spellingShingle Kowal Marek
Skobel Marcin
Gramacki Artur
Korbicz Józef
Breast cancer nuclei segmentation and classification based on a deep learning approach
International Journal of Applied Mathematics and Computer Science
breast cancer
nuclei segmentation
classification
image processing
author_facet Kowal Marek
Skobel Marcin
Gramacki Artur
Korbicz Józef
author_sort Kowal Marek
title Breast cancer nuclei segmentation and classification based on a deep learning approach
title_short Breast cancer nuclei segmentation and classification based on a deep learning approach
title_full Breast cancer nuclei segmentation and classification based on a deep learning approach
title_fullStr Breast cancer nuclei segmentation and classification based on a deep learning approach
title_full_unstemmed Breast cancer nuclei segmentation and classification based on a deep learning approach
title_sort breast cancer nuclei segmentation and classification based on a deep learning approach
publisher Sciendo
series International Journal of Applied Mathematics and Computer Science
issn 2083-8492
publishDate 2021-03-01
description One of the most popular methods in the diagnosis of breast cancer is fine-needle biopsy without aspiration. Cell nuclei are the most important elements of cancer diagnostics based on cytological images. Therefore, the first step of successful classification of cytological images is effective automatic segmentation of cell nuclei. The aims of our study include (a) development of segmentation methods of cell nuclei based on deep learning techniques, (b) extraction of some morpho-metric, colorimetric and textural features of individual segmented nuclei, (c) based on the extracted features, construction of effective classifiers for detecting malignant or benign cases. The segmentation methods used in this paper are based on (a) fully convolutional neural networks and (b) the marker-controlled watershed algorithm. For the classification task, seven various classification methods are used. Cell nuclei segmentation achieves 90% accuracy for benign and 86% for malignant nuclei according to the F-score. The maximum accuracy of the classification reached 80.2% to 92.4%, depending on the type (malignant or benign) of cell nuclei. The classification of tumors based on cytological images is an extremely challenging task. However, the obtained results are promising, and it is possible to state that automatic diagnostic methods are competitive to manual ones.
topic breast cancer
nuclei segmentation
classification
image processing
url https://doi.org/10.34768/amcs-2021-0007
work_keys_str_mv AT kowalmarek breastcancernucleisegmentationandclassificationbasedonadeeplearningapproach
AT skobelmarcin breastcancernucleisegmentationandclassificationbasedonadeeplearningapproach
AT gramackiartur breastcancernucleisegmentationandclassificationbasedonadeeplearningapproach
AT korbiczjozef breastcancernucleisegmentationandclassificationbasedonadeeplearningapproach
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