MACHINE LEARNING METHODS FOR BREAST CANCER CLASSIFICATION BY USING DATA SCIENCE TECHNIQUES
DOI:
https://doi.org/10.54613/ku.v11i11.969Keywords:
Machine learning, Breast cancer, Data science, data analysis, technique, machine, modelAbstract
This study explores the sensitivity analysis of various machine learning methods applied to the problem of breast cancer classification. By examining the robustness and performance of different algorithms, we aim to identify the most reliable techniques for accurate diagnosis. We assess the impact of key parameters and data variations on model outcomes to provide a comprehensive understanding of each method's strengths and limitations. Our findings offer valuable insights into the selection and optimization of machine learning models for breast cancer detection, ultimately contributing to improved diagnostic accuracy and patient care.
Foydalanilgan adabiyotlar:
Meliboev, A., Alikhanov, J., & Kim, W. (2022). Performance evaluation of deep learning based network intrusion detection system across multiple balanced and imbalanced datasets. Electronics, 11(4), 515.
Azizjon, M., Jumabek, A., & Kim, W. (2020, February). 1D CNN based network intrusion detection with normalization on imbalanced data. In 2020 international conference on artificial intelligence in information and communication (ICAIIC) (pp. 218-224). IEEE.
Armane, M., Oukid, S., & Ensari, T. (2018). Breast cancer classification using machine learning. *IEEE*, 1-4.
Fatima, N., Liu, L., Hong, S., & Ahmed, H. (2020). Prediction of breast cancer, comparative review of machine learning techniques, and their analysis. *IEEE Access*, 8, 150360-150376.
Khourdifi, Y., & Bahaj, M. (2018). Applying best machine learning algorithms for breast cancer prediction and classification. *IEEE*, 1-5.
Patrício, M., Pereira, J., Crisóstomo, J., Matafome, P., Gomes, M., Seiça, R., & Caramelo, F. (2018). Using Resistin, glucose, age and BMI to predict the presence of breast cancer. *BMC Cancer*, 1-8.
Yue, W., Wang, Z., Chen, H., Payne, A., & Liu, X. (2018). Machine learning with applications in breast cancer diagnosis and prognosis. *Designsb 2*, 13, 39.
Assiri, A. S., Nazir, S., & Velastin, S. A. (2020). Breast tumor classification using an ensemble machine learning method. *Journal of Imaging*, 6(39), 39.
Alghunaim, S., & Al-Baity, H. H. (2019). On the scalability of machine-learning algorithms for breast cancer prediction in big data context. *IEEE Access*, 91535-91546.
The Cancer Genome Atlas—Data Portal. (2018). Retrieved from https://portal.gdc.cancer.gov/.
Bharat, A., Pooja, N., & Reddy, R. A. (2018). Using machine learning algorithms for breast cancer risk prediction and diagnosis. *IEEE I4C*, 1-4.
Bayrak, E. A., Kırcı, P., & Ensari, T. (2019). Comparison of machine learning methods for breast cancer diagnosis. *IEEE EBBT*, 1-3.
Downloads
Published
Iqtiboslik olish
Issue
Section
License
Copyright (c) 2024 QO‘QON UNIVERSITETI XABARNOMASI
This work is licensed under a Creative Commons Attribution 4.0 International License.