Title of article :
Classification of lung nodules in CT images using conditional generative adversarial - convolutional neural network
Author/Authors :
Mohd Isham, Nur Nabila Department of Electrical - Electronic and Systems Engineering - Faculty of Engineering and Built Environment - Universiti Kebangsaan, Malaysia , Salasiah Mokri, Siti Department of Electrical - Electronic and Systems Engineering - Faculty of Engineering and Built Environment - Universiti Kebangsaan, Malaysia , Aizuddin Abd Rahni, Ashrani Department of Electrical - Electronic and Systems Engineering - Faculty of Engineering and Built Environment - Universiti Kebangsaan, Malaysia , Fatihah Ali, Nurul Department of Electrical - Electronic and Systems Engineering - Faculty of Engineering and Built Environment - Universiti Kebangsaan, Malaysia
Abstract :
Based on Global Cancer 2015 statistics, the lung cancer of all types constitutes 27% of overall
cancers while 19.5% of cancer deaths are due to lung cancer. In lieu of this, an effective lung
cancer screening test using Computed Tomography (CT) scan is crucial to detect cancer at the early
stage. The interpretation of the CT images requires an advanced CAD system of high accuracy
for instance, in classifying the lung nodules. Recently, Deep Learning method that is Convolution
Neural Network (CNN) shows an outstanding success in lung nodules classification. However, the
training of CNN requires a great number of images. Such a requirement is an issue in the case of
medical images. Generative adversarial network (GAN) has been introduced to generate new image
datasets for CNN training. Thus, the main objective of this study is to compare the performance of
CNN architectures with and without the implementation of GAN for lung nodules classication in
CT images. Here, the study used Conditional GAN (cGAN) to generate benign nodules images. The
classication accuracy of the combined cGAN-CNN architecture was compared among CNN pre-
training networks namely GoogleNet, ShuffleNet, DenseNet, and MobileNet based on classication
accuracy, specicity, sensitivity, and AUC-ROC values. The experiment was tested on LIDC-IDRI
database. The results showed cGAN-CNN architecture improves the overall classification accuracy as
compared to CNN alone with the cGAN-ShuffleNet architecture performed the best, achieving 98.38%
accuracy, 98.13% specicity, 100% sensitivity and AUC-ROC at 99.90%. Overall, the classification
performance of CNN can be improved by integrating GAN architecture to mitigate the constraint of
having a large medical image dataset, in this case, CT lung nodules images.
Keywords :
Convolution neural network , Generative adversarial network , Lung nodules , Computed yomography
Journal title :
International Journal of Nonlinear Analysis and Applications