Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare

Breast cancer is a highly prevalent disease in females that may lead to mortality in severe cases. The mortality can be subsided if breast cancer is diagnosed at an early stage. The focus of this study is to detect breast malignancy through computer-aided diagnosis (CADx). In the first phase of this...

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Main Authors: Tariq Sadad, Ayyaz Hussain, Asim Munir, Muhammad Habib, Sajid Ali Khan, Shariq Hussain, Shunkun Yang, Mohammed Alawairdhi
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/6/1900
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spelling doaj-e79200faa68847bbb11d49dc01acfaed2020-11-25T02:57:39ZengMDPI AGApplied Sciences2076-34172020-03-01106190010.3390/app10061900app10061900Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for HealthcareTariq Sadad0Ayyaz Hussain1Asim Munir2Muhammad Habib3Sajid Ali Khan4Shariq Hussain5Shunkun Yang6Mohammed Alawairdhi7Department of Computer Science, University of Central Punjab, Sargodha Campus 40100, PakistanDepartment of Computer Sciences, Quaid-i-Azam University, Islamabad 44000, PakistanDepartment of Computer Science, International Islamic University, Islamabad 44000, PakistanDepartment of Software Engineering, Foundation University Islamabad, Islamabad 44000, PakistanDepartment of Software Engineering, Foundation University Islamabad, Islamabad 44000, PakistanDepartment of Software Engineering, Foundation University Islamabad, Islamabad 44000, PakistanSchool of Reliability and Systems Engineering, Beihang University, Beijing 100191, ChinaCollege of Computing and Informatics, Saudi Electronic University, Riyadh 11673, Saudi ArabiaBreast cancer is a highly prevalent disease in females that may lead to mortality in severe cases. The mortality can be subsided if breast cancer is diagnosed at an early stage. The focus of this study is to detect breast malignancy through computer-aided diagnosis (CADx). In the first phase of this work, Hilbert transform is employed to reconstruct B-mode images from the raw data followed by the marker-controlled watershed transformation to segment the lesion. The methods based only on texture analysis are quite sensitive to speckle noise and other artifacts. Therefore, a hybrid feature set is developed after the extraction of shape-based and texture features from the breast lesion. Decision tree, k-nearest neighbor (KNN), and ensemble decision tree model via random under-sampling with Boost (RUSBoost) are utilized to segregate the cancerous lesions from the benign ones. The proposed technique is tested on OASBUD (Open Access Series of Breast Ultrasonic Data) and breast ultrasound (BUS) images collected at Baheya Hospital Egypt (BHE). The OASBUD dataset contains raw ultrasound data obtained from 100 patients containing 52 malignant and 48 benign lesions. The dataset collected at BHE contains 210 malignant and 437 benign images. The proposed system achieved promising accuracy of 97% with confidence interval (CI) of 91.48% to 99.38% for OASBUD and 96.6% accuracy with CI of 94.90% to 97.86% for the BHE dataset using ensemble method.https://www.mdpi.com/2076-3417/10/6/1900breast ultrasound (bus)breast cancer (bc)computer-aided diagnosis (cadx)lesion
collection DOAJ
language English
format Article
sources DOAJ
author Tariq Sadad
Ayyaz Hussain
Asim Munir
Muhammad Habib
Sajid Ali Khan
Shariq Hussain
Shunkun Yang
Mohammed Alawairdhi
spellingShingle Tariq Sadad
Ayyaz Hussain
Asim Munir
Muhammad Habib
Sajid Ali Khan
Shariq Hussain
Shunkun Yang
Mohammed Alawairdhi
Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
Applied Sciences
breast ultrasound (bus)
breast cancer (bc)
computer-aided diagnosis (cadx)
lesion
author_facet Tariq Sadad
Ayyaz Hussain
Asim Munir
Muhammad Habib
Sajid Ali Khan
Shariq Hussain
Shunkun Yang
Mohammed Alawairdhi
author_sort Tariq Sadad
title Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
title_short Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
title_full Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
title_fullStr Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
title_full_unstemmed Identification of Breast Malignancy by Marker-Controlled Watershed Transformation and Hybrid Feature Set for Healthcare
title_sort identification of breast malignancy by marker-controlled watershed transformation and hybrid feature set for healthcare
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-03-01
description Breast cancer is a highly prevalent disease in females that may lead to mortality in severe cases. The mortality can be subsided if breast cancer is diagnosed at an early stage. The focus of this study is to detect breast malignancy through computer-aided diagnosis (CADx). In the first phase of this work, Hilbert transform is employed to reconstruct B-mode images from the raw data followed by the marker-controlled watershed transformation to segment the lesion. The methods based only on texture analysis are quite sensitive to speckle noise and other artifacts. Therefore, a hybrid feature set is developed after the extraction of shape-based and texture features from the breast lesion. Decision tree, k-nearest neighbor (KNN), and ensemble decision tree model via random under-sampling with Boost (RUSBoost) are utilized to segregate the cancerous lesions from the benign ones. The proposed technique is tested on OASBUD (Open Access Series of Breast Ultrasonic Data) and breast ultrasound (BUS) images collected at Baheya Hospital Egypt (BHE). The OASBUD dataset contains raw ultrasound data obtained from 100 patients containing 52 malignant and 48 benign lesions. The dataset collected at BHE contains 210 malignant and 437 benign images. The proposed system achieved promising accuracy of 97% with confidence interval (CI) of 91.48% to 99.38% for OASBUD and 96.6% accuracy with CI of 94.90% to 97.86% for the BHE dataset using ensemble method.
topic breast ultrasound (bus)
breast cancer (bc)
computer-aided diagnosis (cadx)
lesion
url https://www.mdpi.com/2076-3417/10/6/1900
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