@article{MAKHILLRJAS201611109898, title = {Classificstion of Brain MRI Images Using Classifier Techniques Supported by Genetic and Fuzzy C-Means}, journal = {Research Journal of Applied Sciences}, volume = {11}, number = {10}, pages = {1137-1142}, year = {2016}, issn = {1815-932x}, doi = {rjasci.2016.1137.1142}, url = {https://makhillpublications.co/view-article.php?issn=1815-932x&doi=rjasci.2016.1137.1142}, author = {Noor Kadhum,Asraa Abdullah and}, keywords = {Classification,GLCM,K-nearest,fuzzy C-means,genetic algorithm,K-means,neural network}, abstract = {Computer techniques play important role in medical fields, especially in the classification and disease diagnoses. In this study, Brain MRI is classified using many techniques. Back propagation neural network, K-nearest and K-means used for classifying these images into normal and abnormal after clustering images using fuzzy C-means and minimizing the extracted features by GLCM using genetic algorithm. The system shows high efficiency through practical experiments that proves that the accuracy of system is reached to 100% through back propagation neural network.} }