• Title of article

    Proposing an Integrated Method based on Fuzzy Tuning and ICA Techniques to Identify the Most Influencing Features in Breast Cancer

  • Author/Authors

    Masoudiasl, Irvan Department of Healthcare Services Management - School of Health Management and Information Sciences - Iran University of Medical Sciences, Tehran , Vahdat, Shaghayeh Department of Health Services Administration - South Tehran Branch - Islamic Azad University, Tehran , Hessam, Somayeh Department of Health Services Administration - South Tehran Branch - Islamic Azad University, Tehran , Shamshirband, Shahaboddin Department for Management of Science and Technology Development - Ton Duc Thang University - Ho Chi Minh City, Vietnam , Alinejad-Rokny, Hamid School of Computer Science and Engineering - UNSW Australia - Sydney, Australia

  • Pages
    11
  • From page
    1
  • To page
    11
  • Abstract
    Background: Breast cancer is the most common cancer in women, which has not been completely cured yet. The traditional approaches have low accuracy for breast cancer detection. However, intelligent techniques have been recently used in medical research to distinguish infected individuals from healthy ones, accurately. Objectives: In this study,weaim to develop an ensemble machine learning (ML)methodto distinguish tumorsamples from healthy samples robustly. Methods:We used an Imperial Competitive Algorithm coupled with a Fuzzy System (ICA-Fuzzy-SR) to identify the most influencing features to recognize tumor samples. To evaluate the proposed method, we used the publicly available Wisconsin Breast Cancer Dataset (WBCD). Results: Benchmarking with the current existing leading methods indicates that our proposed method achieves 95.45% prediction accuracy, which is 3% better than those reported in previous studies. Conclusions: Such results achieve while our model is significantly faster than previously proposed models to solve this problem.
  • Keywords
    Algorithms , Benchmarking , Breast Neoplasms , Fuzzy Tuning , ICA Feature Selection , Machine Learning , Sparse Representation , Wisconsin
  • Journal title
    Iranian Red Crescent Medical Journal
  • Serial Year
    2019
  • Record number

    2499595