Prediction of Breast Tumor Malignancy Using Neural Network and Whale Optimization Algorithms (WOA)

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Article Type:
Research/Original Article (دارای رتبه معتبر)
Abstract:
Introduction

Breast cancer is the most prevalent cause of cancer mortality among women. Early diagnosis of breast cancer gives patients greater survival time. The present study aims to provide an algorithm for more accurate prediction and more effective decision-making in the treatment of patients with breast cancer.

Methods

The present study was applied, descriptive-analytical, based on the use of computerized methods. We obtained 699 independent records containing nine clinical variables from the UCI machine learning. The EM algorithm was used to analyze the data before normalizing them. Following that, a combination of neural network model based on multilayer perceptron structure with the Whale Optimization Algorithm (WOA) was used to predict the breast tumor malignancy.

Results

After preprocessing the disease data set and reducing data dimensions, the accuracy of the proposed algorithm for training and testing data was 99.6% and 99%, respectively. The prediction accuracy of the proposed model was 99.4%, which would be a satisfying result compared to different methods of machine learning in other studies.

Conclusion

Considering the importance of early diagnosis of breast cancer, the results of this study may have highly useful implications for health care providers and planners so as to achieve the early diagnosis of the disease.

Language:
Persian
Published:
Iranian Journal of Breast Diseases, Volume:12 Issue: 3, 2019
Pages:
26 to 35
https://www.magiran.com/p2046147