Breast Cancer Prediction Based on K-Means and SOM Hybrid Algorithm

Author:

Lin Haoquan,Ji Zhenzhou

Abstract

Abstract Breast cancer is one of the most serious diseases that threaten women’s health, affecting about 12.5% of women worldwide. Early detection of breast cancer is critical to saving lives. Therefore, If the physical examination indicators related to the human body can be extracted and the breast cancer can be analyzed through machine learning, which will play a key role in predicting and preventing breast cancer. As the high complexity and low precision of SOM neural network algorithm and shortcomings of K-means clustering algorithm needs to determine the number of clustering advanced and randomly select initial clustering centers, a hybrid algorithm combining K-means and SOM neural network is proposed in this study. The results show that the hybrid algorithm can accurately cluster the data sets, and compared with K means model and SOM neural network model, the performance of the hybrid algorithm model is better in clustering accuracy and computing speed.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference9 articles.

1. Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries;Bray,2018

2. Breast Cancer Survival Prediction using Artificial Neural Network;Venkatesan,2009

3. Breast Cancer Prediction Using Data Mining Method;Wang,2015

4. Breast cancer risk prediction using data mining classification techniques;Kehinde;Transactions on Networks and Communications,2015

5. A k-means algorithm based on optimized initial center points;Wang;Pattern Recognition and Artificial Intelligence,2009

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