Microscopic Tumour Classification by Digital Mammography

In this paper, we investigate the classification of microscopic tumours using full digital mammography images. Firstly, to address the shortcomings of traditional image segmentation methods, two different deep learning methods are designed to achieve the segmentation of uterine fibroids. The deep la...

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Main Authors: Jingjing Yang, Huichao Li, Ning Shi, Qifan Zhang, Yanan Liu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Journal of Healthcare Engineering
Online Access:http://dx.doi.org/10.1155/2021/6635947
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spelling doaj-18212813e974434b875010927773ee0c2021-02-15T12:52:50ZengHindawi LimitedJournal of Healthcare Engineering2040-22952040-23092021-01-01202110.1155/2021/66359476635947Microscopic Tumour Classification by Digital MammographyJingjing Yang0Huichao Li1Ning Shi2Qifan Zhang3Yanan Liu4Affiliated Hospital of Hebei University, Baoding, Hebei 071000, ChinaAffiliated Hospital of Hebei University, Baoding, Hebei 071000, ChinaAffiliated Hospital of Hebei University, Baoding, Hebei 071000, ChinaAffiliated Hospital of Hebei University, Baoding, Hebei 071000, ChinaSchool of Medical Technology, Qiqihar Medical College, Heilongjiang, Qiqihar 161006, ChinaIn this paper, we investigate the classification of microscopic tumours using full digital mammography images. Firstly, to address the shortcomings of traditional image segmentation methods, two different deep learning methods are designed to achieve the segmentation of uterine fibroids. The deep lab model is used to optimize the lesion edge detailed information by using the void convolution algorithm and fully connected CRF, and the two semantic segmentation networks are compared to obtain the best results. The Mask RCNN case segmentation model is used to effectively extract features through the ResNet structure, combined with the RPN network to achieve effective use and fusion of features, and continuously optimize the network training to achieve a fine segmentation of the lesion area, and demonstrate the accuracy and feasibility of the two models in medical image segmentation. Histopathology was used to obtain ER, PR, HER scores, and Ki-67 percentage values for all patients. The Kaplan-Meier method was used for survival estimation, the Log-rank test was used for single-factor analysis, and Cox proportional risk regression was used for multifactor analysis. The prognostic value of each factor was calculated, as well as the factors affecting progression-free survival. This study was done to compare the imaging characteristics and diagnostic value of mammography and colour Doppler ultrasonography in nonspecific mastitis, improve the understanding of the imaging characteristics of nonspecific mastitis in these two examinations, improve the accuracy of the diagnosis of this type of disease, improve the ability of distinguishing it from breast cancer, and reduce the rate of misdiagnosis.http://dx.doi.org/10.1155/2021/6635947
collection DOAJ
language English
format Article
sources DOAJ
author Jingjing Yang
Huichao Li
Ning Shi
Qifan Zhang
Yanan Liu
spellingShingle Jingjing Yang
Huichao Li
Ning Shi
Qifan Zhang
Yanan Liu
Microscopic Tumour Classification by Digital Mammography
Journal of Healthcare Engineering
author_facet Jingjing Yang
Huichao Li
Ning Shi
Qifan Zhang
Yanan Liu
author_sort Jingjing Yang
title Microscopic Tumour Classification by Digital Mammography
title_short Microscopic Tumour Classification by Digital Mammography
title_full Microscopic Tumour Classification by Digital Mammography
title_fullStr Microscopic Tumour Classification by Digital Mammography
title_full_unstemmed Microscopic Tumour Classification by Digital Mammography
title_sort microscopic tumour classification by digital mammography
publisher Hindawi Limited
series Journal of Healthcare Engineering
issn 2040-2295
2040-2309
publishDate 2021-01-01
description In this paper, we investigate the classification of microscopic tumours using full digital mammography images. Firstly, to address the shortcomings of traditional image segmentation methods, two different deep learning methods are designed to achieve the segmentation of uterine fibroids. The deep lab model is used to optimize the lesion edge detailed information by using the void convolution algorithm and fully connected CRF, and the two semantic segmentation networks are compared to obtain the best results. The Mask RCNN case segmentation model is used to effectively extract features through the ResNet structure, combined with the RPN network to achieve effective use and fusion of features, and continuously optimize the network training to achieve a fine segmentation of the lesion area, and demonstrate the accuracy and feasibility of the two models in medical image segmentation. Histopathology was used to obtain ER, PR, HER scores, and Ki-67 percentage values for all patients. The Kaplan-Meier method was used for survival estimation, the Log-rank test was used for single-factor analysis, and Cox proportional risk regression was used for multifactor analysis. The prognostic value of each factor was calculated, as well as the factors affecting progression-free survival. This study was done to compare the imaging characteristics and diagnostic value of mammography and colour Doppler ultrasonography in nonspecific mastitis, improve the understanding of the imaging characteristics of nonspecific mastitis in these two examinations, improve the accuracy of the diagnosis of this type of disease, improve the ability of distinguishing it from breast cancer, and reduce the rate of misdiagnosis.
url http://dx.doi.org/10.1155/2021/6635947
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AT ningshi microscopictumourclassificationbydigitalmammography
AT qifanzhang microscopictumourclassificationbydigitalmammography
AT yananliu microscopictumourclassificationbydigitalmammography
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