Research Article

The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis

Volume: 13 Number: 2 June 7, 2021
TR EN

The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis

Abstract

Objective: The aim of this study is to identify cancer earlier in life using machine learning methods. Methods: For this purpose, the Wisconsin Diagnostic Breast Cancer dataset was classified using Naive Bayes, decision trees, artificial neural networks algorithms and comparison of these machine learning methods was made. KNIME Analytics Platform was used for applications. Before the classification process, the dataset was preprocessed. After the pre-processing stage, three different classifier methods were applied to the dataset. Accuracy, sensitivity, specificity and confusion matrices were used to measure the success of the methods. Results: The results show that Naive Bayes and artificial neural network methods classify tumors with 96.5% accuracy. The success of the decision tree method in classification was 92.6%. Conclusion: The machine learning algorithms can be used successfully in breast cancer diagnosis to determine whether the tumors are malign or benign.

Keywords

References

  1. https://gco.iarc.fr/today/data/factsheets/cancers/20-Breast-fact-sheet.pdf. Erişim Tarihi: 11.01.2021.
  2. https://gco.iarc.fr/today/data/factsheets/populations/792-turkey-fact-sheets.pdf. Erişim Tarihi: 11.01.2021.
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  6. Agarap, A. F. M. (2018). On breast cancer detection. Proceedings of the 2nd International Conference on Machine Learning and Soft Computing.
  7. Rodrigues, B. L. (2015). Analysis of the Wisconsin Breast Cancer dataset and machine learning for breast cancer detection. In: Proceedings of XI Workshop de Visão Computational, 15–19.
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Details

Primary Language

English

Subjects

Health Care Administration

Journal Section

Research Article

Publication Date

June 7, 2021

Submission Date

April 9, 2021

Acceptance Date

June 2, 2021

Published in Issue

Year 2021 Volume: 13 Number: 2

APA
Ateş, İ., & Bilgin, T. T. (2021). The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis. Konuralp Medical Journal, 13(2), 347-356. https://doi.org/10.18521/ktd.912462
AMA
1.Ateş İ, Bilgin TT. The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis. Konuralp Medical Journal. 2021;13(2):347-356. doi:10.18521/ktd.912462
Chicago
Ateş, İbrahim, and Turgay Tugay Bilgin. 2021. “The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis”. Konuralp Medical Journal 13 (2): 347-56. https://doi.org/10.18521/ktd.912462.
EndNote
Ateş İ, Bilgin TT (June 1, 2021) The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis. Konuralp Medical Journal 13 2 347–356.
IEEE
[1]İ. Ateş and T. T. Bilgin, “The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis”, Konuralp Medical Journal, vol. 13, no. 2, pp. 347–356, June 2021, doi: 10.18521/ktd.912462.
ISNAD
Ateş, İbrahim - Bilgin, Turgay Tugay. “The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis”. Konuralp Medical Journal 13/2 (June 1, 2021): 347-356. https://doi.org/10.18521/ktd.912462.
JAMA
1.Ateş İ, Bilgin TT. The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis. Konuralp Medical Journal. 2021;13:347–356.
MLA
Ateş, İbrahim, and Turgay Tugay Bilgin. “The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis”. Konuralp Medical Journal, vol. 13, no. 2, June 2021, pp. 347-56, doi:10.18521/ktd.912462.
Vancouver
1.İbrahim Ateş, Turgay Tugay Bilgin. The Investigation of the Success of Different Machine Learning Methods in Breast Cancer Diagnosis. Konuralp Medical Journal. 2021 Jun. 1;13(2):347-56. doi:10.18521/ktd.912462

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