Enhanced breast mass mammography classification approach based on pre-processing and hybridization of transfer learning models.

Journal: Journal of cancer research and clinical oncology
Published Date:

Abstract

BACKGROUND AND OBJECTIVE: The second most prevalent cause of death among women is now breast cancer, surpassing heart disease. Mammography images must accurately identify breast masses to diagnose early breast cancer, which can significantly increase the patient's survival percentage. Although, due to the diversity of breast masses and the complexity of their microenvironment, it is still a significant issue. Hence, an issue that researchers need to continue searching into is how to establish a reliable breast mass detection approach in an effective factor application to increase patient survival. Even though several machine and deep learning-based approaches were proposed to address these issues, pre-processing strategies and network architectures were insufficient for breast mass detection in mammogram scans, which directly influences the accuracy of the proposed models.

Authors

  • Saida Sarra Boudouh
    LIM Laboratory, University of Laghouat Amar Telidji, Laghouat, Algeria. s.boudouh@lagh-univ.dz.
  • Mustapha Bouakkaz
    LIM Laboratory, University of Laghouat Amar Telidji, Laghouat, Algeria.