Title of article :
Lung Cancer Classification Employing Proposed Real Coded Genetic Algorithm Based Radial Basis Function Neural Network Classifier
Author/Authors :
Jasmine Selvakumari Jeya, I Department of Computer Science and Engineering - Hindusthan College of Engineering and Technology - Coimbatore - Tamil Nadu, India , Deepa, S. N Department of Electrical and Electronics Engineering - Anna University - Regional Campus - Coimbatore - Tamil Nadu, India
Abstract :
A proposed real coded genetic algorithm based radial basis function neural network classifier is employed to perform effective
classification of healthy and cancer affected lung images. Real Coded Genetic Algorithm (RCGA) is proposed to overcome the
Hamming Cliff problem encountered with the Binary Coded Genetic Algorithm (BCGA). Radial Basis Function Neural Network
(RBFNN) classifier is chosen as a classifier model because of its Gaussian Kernel function and its effective learning process to avoid
local and global minima problem and enable faster convergence. This paper specifically focused on tuning the weights and bias
of RBFNN classifier employing the proposed RCGA. The operators used in RCGA enable the algorithm flow to compute weights
and bias value so that minimum Mean Square Error (MSE) is obtained. With both the lung healthy and cancer images from Lung
Image Database Consortium (LIDC) database and Real time database, it is noted that the proposed RCGA based RBFNN classifier
has performed effective classification of the healthy lung tissues and that of the cancer affected lung nodules. The classification
accuracy computed using the proposed approach is noted to be higher in comparison with that of the classifiers proposed earlier
in the literatures.
Keywords :
Classification , Algorithm , RBFNN , LIDC
Journal title :
Computational and Mathematical Methods in Medicine