Breast tumor localization and segmentation using machine learning techniques: Overview of datasets, findings, and methods.

Journal: Computers in biology and medicine
Published Date:

Abstract

The Global Cancer Statistics 2020 reported breast cancer (BC) as the most common diagnosis of cancer type. Therefore, early detection of such type of cancer would reduce the risk of death from it. Breast imaging techniques are one of the most frequently used techniques to detect the position of cancerous cells or suspicious lesions. Computer-aided diagnosis (CAD) is a particular generation of computer systems that assist experts in detecting medical image abnormalities. In the last decades, CAD has applied deep learning (DL) and machine learning approaches to perform complex medical tasks in the computer vision area and improve the ability to make decisions for doctors and radiologists. The most popular and widely used technique of image processing in CAD systems is segmentation which consists of extracting the region of interest (ROI) through various techniques. This research provides a detailed description of the main categories of segmentation procedures which are classified into three classes: supervised, unsupervised, and DL. The main aim of this work is to provide an overview of each of these techniques and discuss their pros and cons. This will help researchers better understand these techniques and assist them in choosing the appropriate method for a given use case.

Authors

  • Ramin Ranjbarzadeh
    Department of Telecommunications Engineering, Faculty of Engineering, University of Guilan, Rasht, Iran.
  • Shadi Dorosti
    Department of Industrial Engineering, Urmia University of Technology, Urmia, Iran. Electronic address: Shadi.dorosti@gmail.com.
  • Saeid Jafarzadeh Ghoushchi
    Department of Industrial Engineering, Urmia University of Technology (UUT), Urmia, Iran.
  • Annalina Caputo
    School of Computing, Faculty of Engineering and Computing, Dublin City University, Ireland. Electronic address: annalina.caputo@dcu.ie.
  • Erfan Babaee Tirkolaee
    Department of Industrial Engineering, Istinye University, Istanbul, Turkey. Electronic address: erfan.babaee@istinye.edu.tr.
  • Sadia Samar Ali
    Department of Industrial Engineering, Faculty of Engineering, King Abdulaziz University, Jeddah, Saudi Arabia. Electronic address: ssaali@kau.edu.sa.
  • Zahra Arshadi
    Faculty of Electronics, Telecommunications and Physics Engineering, Polytechnic University, Turin, Italy. Electronic address: Zahra.arshadi@gmail.com.
  • Malika Bendechache
    School of Computing, Faculty of Engineering and Computing, Dublin City University, Ireland.