TY - GEN
T1 - Cervical cancer survival prediction using hybrid of SMOTE, CART and smooth support vector machine
AU - Purnami, S. W.
AU - Khasanah, P. M.
AU - Sumartini, S. H.
AU - Chosuvivatwong, V.
AU - Sriplung, H.
N1 - Publisher Copyright:
© 2016 AIP Publishing LLC.
PY - 2016/4/6
Y1 - 2016/4/6
N2 - According to the WHO, every two minutes there is one patient who died from cervical cancer. The high mortality rate is due to the lack of awareness of women for early detection. There are several factors that supposedly influence the survival of cervical cancer patients, including age, anemia status, stage, type of treatment, complications and secondary disease. This study wants to classify/predict cervical cancer survival based on those factors. Various classifications methods: classification and regression tree (CART), smooth support vector machine (SSVM), three order spline SSVM (TSSVM) were used. Since the data of cervical cancer are imbalanced, synthetic minority oversampling technique (SMOTE) is used for handling imbalanced dataset. Performances of these methods are evaluated using accuracy, sensitivity and specificity. Results of this study show that balancing data using SMOTE as preprocessing can improve performance of classification. The SMOTE-SSVM method provided better result than SMOTE-TSSVM and SMOTE-CART.
AB - According to the WHO, every two minutes there is one patient who died from cervical cancer. The high mortality rate is due to the lack of awareness of women for early detection. There are several factors that supposedly influence the survival of cervical cancer patients, including age, anemia status, stage, type of treatment, complications and secondary disease. This study wants to classify/predict cervical cancer survival based on those factors. Various classifications methods: classification and regression tree (CART), smooth support vector machine (SSVM), three order spline SSVM (TSSVM) were used. Since the data of cervical cancer are imbalanced, synthetic minority oversampling technique (SMOTE) is used for handling imbalanced dataset. Performances of these methods are evaluated using accuracy, sensitivity and specificity. Results of this study show that balancing data using SMOTE as preprocessing can improve performance of classification. The SMOTE-SSVM method provided better result than SMOTE-TSSVM and SMOTE-CART.
UR - http://www.scopus.com/inward/record.url?scp=84984541332&partnerID=8YFLogxK
U2 - 10.1063/1.4945075
DO - 10.1063/1.4945075
M3 - Conference contribution
AN - SCOPUS:84984541332
T3 - AIP Conference Proceedings
BT - Symposium on Biomathematics, SYMOMATH 2015
A2 - Apri, Mochamad
A2 - Takeuchi, Yasuhiro
PB - American Institute of Physics Inc.
T2 - Symposium on Biomathematics, SYMOMATH 2015
Y2 - 4 November 2015 through 6 November 2015
ER -