Machine Learning Approach for Identifying Dementia from MRI Images
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32797
Machine Learning Approach for Identifying Dementia from MRI Images

Authors: S. K. Aruna, S. Chitra

Abstract:

This research paper presents a framework for classifying Magnetic Resonance Imaging (MRI) images for Dementia. Dementia, an age-related cognitive decline is indicated by degeneration of cortical and sub-cortical structures. Characterizing morphological changes helps understand disease development and contributes to early prediction and prevention of the disease. Modelling, that captures the brain’s structural variability and which is valid in disease classification and interpretation is very challenging. Features are extracted using Gabor filter with 0, 30, 60, 90 orientations and Gray Level Co-occurrence Matrix (GLCM). It is proposed to normalize and fuse the features. Independent Component Analysis (ICA) selects features. Support Vector Machine (SVM) classifier with different kernels is evaluated, for efficiency to classify dementia. This study evaluates the presented framework using MRI images from OASIS dataset for identifying dementia. Results showed that the proposed feature fusion classifier achieves higher classification accuracy.

Keywords: Magnetic resonance imaging, dementia, Gabor filter, gray level co-occurrence matrix, support vector machine.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1124465

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 2058

References:


[1] Geva, T. (2006). Magnetic resonance imaging: historical perspective. Journal of Cardiovascular Magnetic Resonance, 8(4), 573-580.
[2] Aguayo JB, Blackband SJ, Schoeniger J, Mattingly MA, Hintermann M. Nuclear magnetic resonance imaging of a single cell. Nature 1986; 322:190–1.
[3] Gozansky EK, Ezell EL, Budelmann BU, Quast MJ. Magnetic resonance histology: in situ single cell imaging of receptor cells in an invertebrate (Lolliguncula brevis, Cephalopoda) sense organ. Magn Reson Imaging 2003; 21:1019–22.
[4] T Kesavamurthy, S SubhaRani, “Pattern Classification using imaging techniques for Infarct and Hemorrhage Identification in the Human Brain” Calicut Medical Journal 2006;4(3).
[5] http://www.braintumor.org/TumorTypes
[6] http://www.bio-edicine.org/Biology
[7] D. Selvathi, R.S. Ram Prak ash, Dr.S.Thamarai Selvi, “Performance Evaluation of Kernel Based Techniques for Brain MRI Data Classification” International Conference on Computational Intelligence and Multimedia Applications 200
[8] Smitha, P., Shaji, L., and Mini, D. M. (2011). A review of medical image classification techniques. International Journal of Computer Applications®(IJCA): Communication and Instrumentation, 34-38.
[9] A. Kassner, R.E. Thornhill, “Texture Analysis: A Review of Neurologic MR Imaging Applications”, A Journal of NeuroRadiology 31:809, May 2010.
[10] K.V. Ramana, Raghu. B. Korrapati, “Neural Network Based Classification and Diagnosis of Brain Hemorrhages”, International Journal of Artificial Intelligence and Expert Systems (IJAE), Volume (1): Issue (2) 2009.
[11] Chen, Y., & Pham, T. D. (2013). Development of a brain MRI-based hidden Markov model for dementia recognition. BioMedical Engineering OnLine, 12(Suppl 1), S2.
[12] Serag, A., Wenzel, F., Thiele, F. O., & Young, S. (2008). Optimal feature extraction for the classification of medical images. Philips Research.
[13] Fronto temporal lobar degeneration (FTLD). Alzheimer's. Australia. 2005, Vol. Help Sheet 1.14.
[14] Yang, W., Xia, H., Xia, B., Lui, L. M., & Huang, X. (2010, August). ICA-based feature extraction and automatic classification of AD-related MRI data. In Natural Computation (ICNC), 2010 Sixth International Conference on (Vol. 3, pp. 1261-1265). IEEE.
[15] Chen, Y., & Pham, T. D. (2013, April). Analysis of MRI-based cortical surface structure complexity in dementia by sample entropy. In Computational Intelligence in Bioinformatics and Computational Biology (CIBCB), 2013 IEEE Symposium on (pp. 189-192). IEEE.
[16] Herrera, L. J., Rojas, I., Pomares, H., Guillén, A., Valenzuela, O., & Banos, O. (2013, September). Classification of MRI Images for Alzheimer's Disease Detection. InSocial Computing (SocialCom), 2013 International Conference on (pp. 846-851). IEEE.
[17] Jaramillo, D., Rojas, I., Valenzuela, O., Garcia, I., & Prieto, A. (2012, June). Advanced systems in medical decision-making using intelligent computing. Application to magnetic resonance imaging. In Neural Networks (IJCNN), The 2012 International Joint Conference on (pp. 1-8). IEEE.
[18] Zhang, J., Yan, B., Huang, X., Yang, P., & Huang, C. (2008, October). The diagnosis of Alzheimer's disease based on voxel-based morphometry and support vector machine. In Natural Computation, 2008. ICNC'08. Fourth International Conference on (Vol. 2, pp. 197-201). IEEE.
[19] Lee, J. D., Su, S. C., Huang, C. H., Xu, W. C., & Wei, Y. Y. (2009, December). Using Volume Features and Shape Features for Alzheimer's Disease Diagnosis. In Innovative Computing, Information and Control (ICICIC), 2009 Fourth International Conference on (pp. 437-440). IEEE.
[20] Varol, E., Gaonkar, B., Erus, G., Schultz, R., & Davatzikos, C. (2012, May). Feature ranking based nested support vector machine ensemble for medical image classification. In Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on (pp. 146-149). IEEE.
[21] Górriz, J. M., Ramírez, J., Lassl, A., Salas-Gonzalez, D., Lang, E. W., Puntonet, C. G., ... & Gómez-Río, M. (2008, October). Automatic computer aided diagnosis tool using component-based SVM. In Nuclear Science Symposium Conference Record, 2008. NSS'08. IEEE (pp. 4392-4395). IEEE.
[22] Huang, L., Pan, Z., & Lu, H. (2013, August). Automated Diagnosis of Alzheimer's Disease with Degenerate SVM-Based Adaboost. In Intelligent Human-Machine Systems and Cybernetics (IHMSC), 2013 5th International Conference on (Vol. 2, pp. 298-301). IEEE.
[23] Bin Tufail, A., Abidi, A., Siddiqui, A. M., & Younis, M. S. (2012, November). Multiclass classification of initial stages of Alzheimer's disease using structural MRI phase images. In Control System, Computing and Engineering (ICCSCE), 2012 IEEE International Conference on (pp. 317-321). IEEE.
[24] Tosun, D., Weiner, M. W., Schuff, N., Rosen, H., & Miller, B. L. (2010, August). Joint Independent Component Analysis of Brain Perfusion and Structural Magnetic Resonance Images in Dementia. In Pattern Recognition (ICPR), 2010 20th International Conference on (pp. 2720-2723). IEEE.
[25] Mahanand, B. S., Suresh, S., Sundararajan, N., & Aswatha Kumar, M. (2012). Identification of brain regions responsible for Alzheimer’s disease using a Self-adaptive Resource Allocation Network. Neural Networks, 32, 313-322.
[26] Chyzhyk, D., & Savio, A. (2010). Feature extraction from structural MRI images based on VBM: data from OASIS database. Technical Report GIC-UPV-EHU-RR-2010-10-14, Grupo de Inteligencia Computacional UPV/EHU.
[27] Derpanis, K. G. (2007). Gabor filter. York University, April, 23
[28] Mohanty, A. K., Beberta, S., & Lenka, S. K. (2011). Classifying Benign and Malignant Mass using GLCM and GLRLM based Texture Features from Mammogram. International Journal of Engineering Research and Applications,1, 687-693.
[29] Ekenel, H. K., & Sankur, B. (2004). Feature selection in the independent component subspace for face recognition. Pattern Recognition Letters, 25(12), 1377-1388.
[30] Suykens, J. A., & Vandewalle, J. (1999). Least squares support vector machine classifiers. Neural processing letters, 9(3), 293-300.
[31] Vapnik, V. N. (1999). An overview of statistical learning theory. Neural Networks, IEEE Transactions on, 10(5), 988-999.
[32] Oyang, Y. J., Hwang, S. C., Ou, Y. Y., Chen, C. Y., & Chen, Z. W. (2005). Data classification with radial basis function networks based on a novel kernel density estimation algorithm. Neural Networks, IEEE Transactions on, 16(1), 225-236.
[33] Nagpal, R., Nagpal, P., & Kaur, S. (2010). Hybrid technique for human face emotion detection. International Journal of Advanced Computer Science and Applications, 1(6).
[34] Kurban, T., & Beşdok, E. (2009). A comparison of RBF neural network training algorithms for inertial sensor based terrain classification. Sensors, 9(8), 6312-6329.