Classification of Brain Tumor Grades by MRI Images using Artificial Neural Network
Subject Areas : Journal of Computer & RoboticsMelika Aboutalebi 1 , Rezvan Abbasi 2
1 - Department of Electrical engineering,Biomedical engineering and computer, Faculty of Engineering , Qazvin Branch,Islamic Azad University, Qazvin ,Iran
2 - Department of Electrical engineering, Biomedical engineering and computer, Faculty of Computer and Information Technology Engineering, Qazvin Branch, Islamic Azad University, Qazvin, Iran
Keywords:
Abstract :
[1] A. S. Kurani, D. H. Xu, J. Furst, D. S. Raicu, Cooccurrence matrices for volumetric data. 7th IASTED
International Conference on Computer Graphics and Imaging, Kauai, vol.27, no.25, 2004.
[2] S. Chaplot, L. M. Patnaik, N. R. Jagannathan,Classification of magnetic resonance brain images using
wavelets as input to support vector machine and neural network. Biomedical signal processing and control,
vol.1, pp.86-92, 2006.
[3] K. Arthi and A. Tamilarasi, A Hybrid Fuzzy Model in Prediction of ADHD using Artificial Neural Networks.
Journal of Neural Systems Theory and Applications,vol.1, no.1, pp. 209-215, 2011.
[4] S. N. Deepa, B. Aruna Devi, Artificial Neural Networks design for Classification of Brain Tumour. International Conference on Computer Communication and Informatics, Coimbatore, INDIA, pp. 1-6, 2012.
[5] N. Varuna Shree, T. N. R. Kumar, Identification and classification of brain tumor MRI images with feature
extraction using DWT and probabilistic neural network. Brain informatics, vol.5, no.1, pp. 23-30,
2018.
[6] N. B. Bahadure, A. K. Ray, H. P. Thethi, Comparative approach of MRI-based brain tumor segmentation and
classification using genetic algorithm. Journal of digital imaging, vol.31, no.4, pp. 477-489, 2018.
[7] T. Pandiselvi, R. Maheswaran, Efficient Framework for Identifying, Locating, Detecting and Classifying MRI
Brain Tumor in MRI Images. Journal of medical systems, vol.43, no.7, pp. 189, 2019.
[8] M. Jafari, Sh. Kasaei, Automatic Brain Tissue Detection in MRI Images Using Seeded Region Growing
Segmentation and Neural Network Classification.Australian Journal of Basic and Applied Sciences,vol.5, no.8, pp. 1066-1079, 2011.
[9] A. Demirhan, I. Güler, Combining stationary wavelet transform and self-organizing maps for brain MR image segmentation. Engineering Applications of Artificial Intelligence, vol.24, no.2, pp. 358-367, 2011.
[10] M.C. Clark, L.O. Hall, D.B. Goldgof, R. Velthuizen,F.R. Murtagh, M.S. Silbiger, Automatic Tumor
Segmentation Using Knowledge-Based Techniques.IEEE Transactions On Medical Imaging, vol.17, no.2,
pp. 187-201, 1998.
[11] E. S. A. El-Dahshan, T. Hosny, A. B. M. Salem,Hybrid intelligent techniques for MRI brain images
classification. Digital Signal Processing, vol.20, no.2,pp. 433-441, 2010.
[12] A. E. Lashkari, A Neural Network based Method for Brain Abnormality Detection in MR Images Using
Gabor Wavelets. International Journal of Computer Applications, vol.4, no.7, 2010.
[13] M. S. Kalas, An artificial neural network for detection of biological early brain cancer. International Journal of Computer Applications, vol.1, no.6, pp. 17-23,2010.
[14] X. Xuan, Q. Liao, Statistical structure analysis in MRI brain tumor segmentation. In Fourth International
Conference on Image and Graphics (ICIG 2007),Sichuan, China, pp. 421-426, 2007.
[15] D. J. hemanthl, D. Selvathi, J. Anitha, Effective Fuzzy Clustering Algorithm for Abnormal MR Brain Image
Segmentation. IEEE International Advance Computing Conference, Patiala, India, pp. 609-614,2009.
[16] P. Mohanaiah, P. Sathyanarayana, L. GuruKumar,Image texture feature extraction using GLCM
approach. International journal of scientific and research publications, vol.3, no.5. pp. 1, 2013.
[17] K. D. Kharat, P. P. Kulkarni, M. B. Nagori, Brain tumor classification using neural network based
methods. International Journal of Computer Science and Informatics, vol.1, no.4, pp. 2231-5292, 2012.
[18] Sh. Shadro, R. Ma'aref Dost, M. Yaghoobi, H. R.Pourreza, Splitting images using multifractal estimation,
entropy and fuzzy clustering. First Joint Congress on Fuzzy and Intelligent Systems, Mashhad, Iran, 2007.