Automated breast profile segmentation for ROI detection using digital mammograms

Mammography is currently the most effective imaging modality used by radiologists for the screening of breast cancer. Finding an accurate, robust and efficient breast profile segmentation technique still remains a challenging problem in digital mammography. Extraction of the breast profile region an...

Full description

Saved in:
Bibliographic Details
Main Authors: Nagi J., Abdul Kareem S., Nagi F., Khaleel Ahmed S.
Other Authors: 25825455100
Format: Conference Paper
Published: 2023
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Tenaga Nasional
id my.uniten.dspace-29616
record_format dspace
spelling my.uniten.dspace-296162024-04-18T09:25:28Z Automated breast profile segmentation for ROI detection using digital mammograms Nagi J. Abdul Kareem S. Nagi F. Khaleel Ahmed S. 25825455100 9337499000 56272534200 25926812900 Breast cancer Mammogram segmentation Pectoral muscle Region of interest Seeded region growing Algorithms Biomedical engineering Diseases Image segmentation Muscle X ray screens Breast Cancer Mammogram segmentation Pectoral muscle Region of interest Seeded region growing Mammography Mammography is currently the most effective imaging modality used by radiologists for the screening of breast cancer. Finding an accurate, robust and efficient breast profile segmentation technique still remains a challenging problem in digital mammography. Extraction of the breast profile region and the pectoral muscle is an essential pre-processing step in the process of computer-aided detection. Primarily it allows the search for abnormalities to be limited to the region of the breast tissue without undue influence from the background of the mammogram. The presence of pectoral muscle in mammograms biases detection procedures, which recommends removing the pectoral muscle during mammogram pre-processing. In this paper we explore an automated technique for mammogram segmentation. The proposed algorithm uses morphological preprocessing and seeded region growing (SRG) algorithm in order to: (1) remove digitization noises, (2) suppress radiopaque artifacts, (3) separate background region from the breast profile region, and (4) remove the pectoral muscle, for accentuating the breast profile region. To demonstrate the capability of our proposed approach, digital mammograms from two separate sources are tested using Ground Truth (GT) images for evaluation of performance characteristics. Experimental results obtained indicate that the breast regions extracted accurately correspond to the respective GT images. � 2010 IEEE. Final 2023-12-28T07:17:45Z 2023-12-28T07:17:45Z 2010 Conference Paper 10.1109/IECBES.2010.5742205 2-s2.0-79955421172 https://www.scopus.com/inward/record.uri?eid=2-s2.0-79955421172&doi=10.1109%2fIECBES.2010.5742205&partnerID=40&md5=9640d267ac8d1883fcc9f0dc7d18bfb4 https://irepository.uniten.edu.my/handle/123456789/29616 5742205 87 92 Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Breast cancer
Mammogram segmentation
Pectoral muscle
Region of interest
Seeded region growing
Algorithms
Biomedical engineering
Diseases
Image segmentation
Muscle
X ray screens
Breast Cancer
Mammogram segmentation
Pectoral muscle
Region of interest
Seeded region growing
Mammography
spellingShingle Breast cancer
Mammogram segmentation
Pectoral muscle
Region of interest
Seeded region growing
Algorithms
Biomedical engineering
Diseases
Image segmentation
Muscle
X ray screens
Breast Cancer
Mammogram segmentation
Pectoral muscle
Region of interest
Seeded region growing
Mammography
Nagi J.
Abdul Kareem S.
Nagi F.
Khaleel Ahmed S.
Automated breast profile segmentation for ROI detection using digital mammograms
description Mammography is currently the most effective imaging modality used by radiologists for the screening of breast cancer. Finding an accurate, robust and efficient breast profile segmentation technique still remains a challenging problem in digital mammography. Extraction of the breast profile region and the pectoral muscle is an essential pre-processing step in the process of computer-aided detection. Primarily it allows the search for abnormalities to be limited to the region of the breast tissue without undue influence from the background of the mammogram. The presence of pectoral muscle in mammograms biases detection procedures, which recommends removing the pectoral muscle during mammogram pre-processing. In this paper we explore an automated technique for mammogram segmentation. The proposed algorithm uses morphological preprocessing and seeded region growing (SRG) algorithm in order to: (1) remove digitization noises, (2) suppress radiopaque artifacts, (3) separate background region from the breast profile region, and (4) remove the pectoral muscle, for accentuating the breast profile region. To demonstrate the capability of our proposed approach, digital mammograms from two separate sources are tested using Ground Truth (GT) images for evaluation of performance characteristics. Experimental results obtained indicate that the breast regions extracted accurately correspond to the respective GT images. � 2010 IEEE.
author2 25825455100
author_facet 25825455100
Nagi J.
Abdul Kareem S.
Nagi F.
Khaleel Ahmed S.
format Conference Paper
author Nagi J.
Abdul Kareem S.
Nagi F.
Khaleel Ahmed S.
author_sort Nagi J.
title Automated breast profile segmentation for ROI detection using digital mammograms
title_short Automated breast profile segmentation for ROI detection using digital mammograms
title_full Automated breast profile segmentation for ROI detection using digital mammograms
title_fullStr Automated breast profile segmentation for ROI detection using digital mammograms
title_full_unstemmed Automated breast profile segmentation for ROI detection using digital mammograms
title_sort automated breast profile segmentation for roi detection using digital mammograms
publishDate 2023
_version_ 1806425610750263296