TY - GEN
T1 - Breast cancer recurrence prediction using machine learning
AU - Chakradeo, Kaustubh
AU - Vyawahare, Sanyog
AU - Pawar, Pranav
PY - 2019
Y1 - 2019
N2 - The most common cancer among women is breast cancer. Around 12% of women are affected by it all over the world. Recurrent breast cancer is a term used for breast cancer which returns even after a successful treatment. This research aims to use Machine learning to detect and predict the recurrence of breast cancer; and compare all the models by using different metrics like accuracy, precision, etc. The models built can help predict the recurrence of breast cancer effectively. All the models are built using the Wisconsin Prognostic Breast Cancer Dataset(WPBC). The models built are Multiple Linear Regression, Support Vector Machine, which was build by using RBF Kernel and Leave-One-Out(K-fold Cross-Validation) and Decision Tree using metrics like Gini Index, Entropy and Information Gain. Support Vector Machine and K-fold Cross-Validation gave the best results for recurrence and non-recurrence predictions
AB - The most common cancer among women is breast cancer. Around 12% of women are affected by it all over the world. Recurrent breast cancer is a term used for breast cancer which returns even after a successful treatment. This research aims to use Machine learning to detect and predict the recurrence of breast cancer; and compare all the models by using different metrics like accuracy, precision, etc. The models built can help predict the recurrence of breast cancer effectively. All the models are built using the Wisconsin Prognostic Breast Cancer Dataset(WPBC). The models built are Multiple Linear Regression, Support Vector Machine, which was build by using RBF Kernel and Leave-One-Out(K-fold Cross-Validation) and Decision Tree using metrics like Gini Index, Entropy and Information Gain. Support Vector Machine and K-fold Cross-Validation gave the best results for recurrence and non-recurrence predictions
U2 - 10.1109/CICT48419.2019.9066248
DO - 10.1109/CICT48419.2019.9066248
M3 - Article in proceedings
BT - 2019 IEEE Conference on Information and Communication Technology
ER -