Title of article :
Cancer Feature Selection and Classification Using a Binary Quantum-Behaved Particle Swarm Optimization and Support Vector Machine
Author/Authors :
Xi, Maolong Department of Control Technology - Wuxi Institute of Technology - Wuxi - Jiangsu, China , Sun, Jun Department of Computer Science - Jiangnan University - Wuxi - Jiangsu, China , Liu, Li Affiliated Hospital of Jiangnan University - Wuxi - Jiangsu, China , Fan, Fangyun Department of Computer Science - Jiangnan University - Wuxi - Jiangsu, China , Wu, Xiaojun Department of Computer Science - Jiangnan University - Wuxi - Jiangsu, China
Abstract :
This paper focuses on the feature gene selection for cancer classification, which employs an optimization algorithm to select a subset
of the genes. We propose a binary quantum-behaved particle swarm optimization (BQPSO) for cancer feature gene selection,
coupling support vector machine (SVM) for cancer classification. First, the proposed BQPSO algorithm is described, which is
a discretized version of original QPSO for binary 0-1 optimization problems. Then, we present the principle and procedure for
cancer feature gene selection and cancer classification based on BQPSO and SVM with leave-one-out cross validation (LOOCV).
Finally, the BQPSO coupling SVM (BQPSO/SVM), binary PSO coupling SVM (BPSO/SVM), and genetic algorithm coupling SVM
(GA/SVM) are tested for feature gene selection and cancer classification on five microarray data sets, namely, Leukemia, Prostate,
Colon, Lung, and Lymphoma. The experimental results show that BQPSO/SVM has significant advantages in accuracy, robustness,
and the number of feature genes selected compared with the other two algorithms.
Keywords :
Optimization , Quantum-Behaved , Classification , BQPSO
Journal title :
Computational and Mathematical Methods in Medicine