TY - GEN
T1 - Additive survival least square support vector machines
T2 - 13th IMT-GT International Conference on Mathematics, Statistics and their Applications, ICMSA 2017
AU - Khotimah, Chusnul
AU - Purnami, Santi Wulan
AU - Prastyo, Dedy Dwi
AU - Chosuvivatwong, Virasakdi
AU - Sriplung, Hutcha
N1 - Publisher Copyright:
© 2017 Author(s).
PY - 2017/11/22
Y1 - 2017/11/22
N2 - Support Vector Machines (SVMs) has been widely applied for prediction in many fields. Recently, SVM is also developed for survival analysis. In this study, Additive Survival Least Square SVM (A-SURLSSVM) approach is used to analyze cervical cancer dataset and its performance is compared with the Cox model as a benchmark. The comparison is evaluated based on the prognostic index produced: concordance index (c-index), log rank, and hazard ratio. The higher prognostic index represents the better performance of the corresponding methods. This work also applied feature selection to choose important features using backward elimination technique based on the c-index criterion. The cervical cancer dataset consists of 172 patients. The empirical results show that nine out of the twelve features: age at marriage, age of first getting menstruation, age, parity, type of treatment, history of family planning, stadium, long-time of menstruation, and anemia status are selected as relevant features that affect the survival time of cervical cancer patients. In addition, the performance of the proposed method is evaluated through a simulation study with the different number of features and censoring percentages. Two out of three performance measures (c-index and hazard ratio) obtained from A-SURLSSVM consistently yield better results than the ones obtained from Cox model when it is applied on both simulated and cervical cancer data. Moreover, the simulation study showed that A-SURLSSVM performs better when the percentage of censoring data is small.
AB - Support Vector Machines (SVMs) has been widely applied for prediction in many fields. Recently, SVM is also developed for survival analysis. In this study, Additive Survival Least Square SVM (A-SURLSSVM) approach is used to analyze cervical cancer dataset and its performance is compared with the Cox model as a benchmark. The comparison is evaluated based on the prognostic index produced: concordance index (c-index), log rank, and hazard ratio. The higher prognostic index represents the better performance of the corresponding methods. This work also applied feature selection to choose important features using backward elimination technique based on the c-index criterion. The cervical cancer dataset consists of 172 patients. The empirical results show that nine out of the twelve features: age at marriage, age of first getting menstruation, age, parity, type of treatment, history of family planning, stadium, long-time of menstruation, and anemia status are selected as relevant features that affect the survival time of cervical cancer patients. In addition, the performance of the proposed method is evaluated through a simulation study with the different number of features and censoring percentages. Two out of three performance measures (c-index and hazard ratio) obtained from A-SURLSSVM consistently yield better results than the ones obtained from Cox model when it is applied on both simulated and cervical cancer data. Moreover, the simulation study showed that A-SURLSSVM performs better when the percentage of censoring data is small.
UR - http://www.scopus.com/inward/record.url?scp=85036619428&partnerID=8YFLogxK
U2 - 10.1063/1.5012243
DO - 10.1063/1.5012243
M3 - Conference contribution
AN - SCOPUS:85036619428
T3 - AIP Conference Proceedings
BT - Proceedings of the 13th IMT-GT International Conference on Mathematics, Statistics and their Applications, ICMSA 2017
A2 - Ibrahim, Haslinda
A2 - Aziz, Nazrina
A2 - Nawawi, Mohd Kamal Mohd
A2 - Rohni, Azizah Mohd
A2 - Zulkepli, Jafri
PB - American Institute of Physics Inc.
Y2 - 4 December 2017 through 7 December 2017
ER -