Research Article

Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach

Volume: 5 Number: 1 June 30, 2020
EN

Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach

Abstract

Aim: In this study, it is aimed to classify breast cancer and identify related factors by applying deep learning method on open access to breast cancer dataset. Materials and Methods: In this study, 11 variables related to open access to breast cancer dataset of 569 patients shared by the University of Wisconsin were used. The deep learning model for classifying breast cancer was established by a 10-fold cross-validation method. The performance of the model was evaluated with accuracy, sensitivity, specificity, positive/negative predictive values, F-score, and area under the curve (AUC). Factors associated with breast cancer were estimated from the deep learning model. Results: Accuracy, specificity, AUC, sensitivity, positive predictive value, negative predictive value, and F-score values obtained from the model were 94.91%, 91.47%, 0.988, 96.90%, 95.42%, 95.14%, and 96.03%, respectively. In this study, when the effects of the variables in the dataset on breast cancer were evaluated, the three most important variables were obtained as area mean, concave points mean and symmetry mean, respectively. Conclusion: The findings of this study showed that the deep learning model provided successful predictions for the classification of breast cancer. Also, unlike similar studies examining the same dataset, the importance values of cancer-related factors were estimated with the help of the model. In the following studies, breast cancer classification performances can give more successful predictions thanks to different deep learning architectures and ensemble learning approaches.

Keywords

References

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Details

Primary Language

English

Subjects

Electrical Engineering

Journal Section

Research Article

Publication Date

June 30, 2020

Submission Date

June 24, 2020

Acceptance Date

June 27, 2020

Published in Issue

Year 2020 Volume: 5 Number: 1

APA
Güldoğan, E., Tunç, Z., & Çolak, C. (2020). Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach. The Journal of Cognitive Systems, 5(1), 10-14. https://izlik.org/JA86MJ29SK
AMA
1.Güldoğan E, Tunç Z, Çolak C. Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach. JCS. 2020;5(1):10-14. https://izlik.org/JA86MJ29SK
Chicago
Güldoğan, Emek, Zeynep Tunç, and Cemil Çolak. 2020. “Classification of Breast Cancer and Determination of Related Factors With Deep Learning Approach”. The Journal of Cognitive Systems 5 (1): 10-14. https://izlik.org/JA86MJ29SK.
EndNote
Güldoğan E, Tunç Z, Çolak C (June 1, 2020) Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach. The Journal of Cognitive Systems 5 1 10–14.
IEEE
[1]E. Güldoğan, Z. Tunç, and C. Çolak, “Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach”, JCS, vol. 5, no. 1, pp. 10–14, June 2020, [Online]. Available: https://izlik.org/JA86MJ29SK
ISNAD
Güldoğan, Emek - Tunç, Zeynep - Çolak, Cemil. “Classification of Breast Cancer and Determination of Related Factors With Deep Learning Approach”. The Journal of Cognitive Systems 5/1 (June 1, 2020): 10-14. https://izlik.org/JA86MJ29SK.
JAMA
1.Güldoğan E, Tunç Z, Çolak C. Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach. JCS. 2020;5:10–14.
MLA
Güldoğan, Emek, et al. “Classification of Breast Cancer and Determination of Related Factors With Deep Learning Approach”. The Journal of Cognitive Systems, vol. 5, no. 1, June 2020, pp. 10-14, https://izlik.org/JA86MJ29SK.
Vancouver
1.Emek Güldoğan, Zeynep Tunç, Cemil Çolak. Classification of Breast Cancer and Determination of Related Factors with Deep Learning Approach. JCS [Internet]. 2020 Jun. 1;5(1):10-4. Available from: https://izlik.org/JA86MJ29SK