Comparison of Different Machine Learning Models in Breast Cancer
DOI:
https://doi.org/10.54097/hset.v8i.1238Keywords:
Machine Learning, Prediction Model, Breast cancer.Abstract
Breast Cancer is mainly found in women and is the main cause of increased mortality among women. Breast cancer diagnosis is time-consuming, and due to the low availability of the system, it is necessary to develop a system that can automatically diagnose breast cancer at an early stage. Various machine learning and Deep Learning Algorithms have been used to classify benign and malignant tumors. This paper focuses on the implementation of various models, such as Logistic regression, random forest and naive Bayes. Each algorithm has measured and compared the accuracy and obtained accuracy. This paper aims to compare the advantages and disadvantages of different regression models in breast cancer prediction. The method proposed in this paper can promote the integration of machine learning and medicine, and improve clinical diagnostic accuracy.
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References
Spratt J S, Spratt J A. (1985) What is breast cancer doing before we can detect it? [J]. Journal of Surgical Oncology, 30 (3): 156 - 160.
Nounou M, Elamrawy F, Helal N, et al. (2015) Breast Cancer: Conventional Diagnosis and Treatment Modalities and Recent Patents and Technologies [J]. Breast Cancer Basic & Clinical Research, 2015: 17 - 34.
International Agency for Research on Cancer. 4 February 2021. https://www.iarc.who.int/news-events/world-cancer-day-2021/ [2022-5-4].
Bhise S, Bepari S, Gadekar S, et al. (2021) Breast Cancer Detection using Machine Learning Techniques [J]. International Journal of Engineering and Technical Research, 10 (7): 98.
Khosravi K, Golkarian A, Tiefenbacher J P. (2022) Using Optimized Deep Learning to Predict Daily Streamflow: A Comparison to Common Machine Learning Algorithms [J]. Water Resources Management: An International Journal, Published for the European Water Resources Association (EWRA), 36.
Naji M A, Aarika S, Benlahmar E, et al. (2021) Machine Learning Algorithms for Breast Cancer Prediction and Diagnosis [C]. International Workshop on Edge IA-IoT for Smart Agriculture (SA2IOT).
MD Ganggayah, Taib N A, Har Y C, et al. (2019) Predicting factors for survival of breast cancer patients using machine learning techniques [J]. BMC Medical Informatics and Decision Making: 19 (1).
Karabatak M. (2015) A new classifier for breast cancer detection based on Nave Bayesian [J]. Measurement, 72.
Song, Q., Liu, X., Yang, L. (2015) The random forest classififier applied in droplet fifingerprint recognition [C]. In: 2015 12th International Conference on FSKD. pp.722 – 726.
Kumar A, Poonkodi M. (2019) Comparative Study of Different Machine Learning Models for Breast Cancer Diagnosis [J].
Sharma S, Aggarwal A, Choudhury T. (2018) Breast Cancer Detection Using Machine Learning Algorithms [C]. 2018 International Conference on Computational Techniques, Electronics and Mechanical Systems (CTEMS).
Rajaguru H, Sannasi C. (2019) Analysis of Decision Tree and K-Nearest Neighbor Algorithm in the Classification of Breast Cancer [J]. Asian Pacific Journal of Cancer Prevention, 20 (12): 3777 - 3781.
Prastyo P H. (2020) Predicting Breast Cancer: A Comparative Analysis of Machine Learning Algorithms [C]. Proceeding International Conference on Science and Technology.
Xing W, Bei Y. (2019) Medical Health Big Data Classification Based on KNN Classification Algorithm [J]. IEEE Access, 2019 (99): 1 - 1.
Mashudi N A, Rossli S A, Ahmad N, et al. (2021) Comparison on Some Machine Learning Techniques in Breast Cancer Classification [C]. 2020 IEEE-EMBS Conference on Biomedical Engineering and Sciences (IECBES).
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