Review Articles

Deep Learning for Segmentation and Classification in Mammograms for Breast Cancer Detection: A Systematic Literature Review

  • Raymond Sutjiadi, MS ,
  • Siti Sendari, PhD ,
  • Heru Wahyu Herwanto, PhD ,
  • Yosi Kristian, PhD
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  • aDepartment of Electrical Engineering and Informatics, Faculty of Engineering, Universitas Negeri Malang, Malang, East Java, Indonesia
    bDepartment of Informatics, Faculty of Information Technology, Institut Informatika Indonesia Surabaya, Surabaya, East Java, Indonesia
    cDepartment of Informatics, Faculty of Science and Technology, Institut Sains dan Teknologi Terpadu Surabaya, Surabaya, East Java, Indonesia
Department of Electrical Engineering and Informatics, Faculty of Engineering, Universitas Negeri Malang, Malang, East Java, Indonesia e-mail: siti.sendari.ft@um.ac.id

Received date: 2023-11-05

  Revised date: 2024-01-20

  Accepted date: 2024-02-17

  Online published: 2024-10-16

Abstract

Integrating machine learning into medical diagnostics has revolutionized the field, particularly enhancing Computer-aided Diagnosis (CAD) systems. These systems assist healthcare professionals by leveraging medical data and machine learning algorithms for more accurate diagnosis and treatment plans. Mammography, an X-ray-based imaging technique, is pivotal in early breast cancer detection, enabling the differentiation between benign and malignant lesions. Recent studies have focused on developing deep learning-enabled mammography CAD systems, which have shown promising results in detecting, segmenting, and classifying anomalies in mammogram images. This comprehensive review presents an innovative system architecture for breast cancer detection, segmentation, and classification using deep learning within mammography CAD systems. It also explores publicly available mammogram datasets and the critical parameters for assessing deep learning system performance. The literature review is meticulously conducted using the PRISMA methodology to evaluate and synthesise novel research findings in this domain. This survey highlights the technological advancements and underlines the potential of deep learning in transforming mammographic analysis for breast cancer detection.

Cite this article

Raymond Sutjiadi, MS , Siti Sendari, PhD , Heru Wahyu Herwanto, PhD , Yosi Kristian, PhD . Deep Learning for Segmentation and Classification in Mammograms for Breast Cancer Detection: A Systematic Literature Review[J]. ADVANCED ULTRASOUND IN DIAGNOSIS AND THERAPY, 2024 , 8(3) : 94 -105 . DOI: 10.37015/AUDT.2024.230051

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