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Detection of Brain Tumor for MRI using Hybrid Method Wavelet and Clustering Algorithm

Alyaa H. Ali, Kawther A. Khalaph, Ihssan S. Nema Published in Image Processing

International Journal of Applied Information Systems
Year of Publication: 2014
© 2013 by IJAIS Journal
10.5120/ijais14-451077
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  1. Alyaa H Ali, Kawther A Khalaph and Ihssan S Nema. Article: Detection of Brain Tumor for MRI using Hybrid Method Wavelet and Clustering Algorithm. International Journal of Applied Information Systems 6(7):9-14, January 2014. BibTeX

    @article{key:article,
    	author = "Alyaa H. Ali and Kawther A. Khalaph and Ihssan S. Nema",
    	title = "Article: Detection of Brain Tumor for MRI using Hybrid Method Wavelet and Clustering Algorithm",
    	journal = "International Journal of Applied Information Systems",
    	year = 2014,
    	volume = 6,
    	number = 7,
    	pages = "9-14",
    	month = "January",
    	note = "Published by Foundation of Computer Science, New York, USA"
    }
    

Abstract

Automatic segmentation of brain tumor using computer analysis aided diagnosis in clinical practice but it is still a challenging task, especially when there are lesions needing to be outlined. In the applications of image-based diagnosis and computer-aided lesion detection, image segmentation is an important procedure . Features extracted from image analysis in companion with image segmentation algorithms are used to provide region-based information for clinical evaluation procedures. Brain tumor diagnosis is easy by using these medical equipments. The physician needs the correct measurement of the tumor area for the further treatment, this need to extract the abnormal part from the 2D MRI scan accurately and measure the region of interest. The Human-Computer interaction is helpful for this procedure. In this search the wavelet transformation is used as well as the K-mean algorithm is used. the wavelet transformation is not sufficient to produce a good result for the brain tumor detection. so the K-mean clustering method with different classes gives best result.

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Keywords

Brain Tumor , Wavelet, K-mean clustering , hybrid method.