Diagnosis of brain tumor using PNN neural networks
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Abstract:
Cells grow and then need a very neat method to create new cells that work properly to maintain the health of the body. When the ability to control the growth of the cells is lost, they are unconsidered and often divided without order. Exemplified cells form a tissue mass called the tumor. In fact, brain tumors are abnormal and uncontrolled cell proliferations. Segmentation methods are used in biomedical image processing and examines the methods used for better segmentation. Critical assessment of the current state of the automated and automated methods for categorizing anatomical medical pictures with emphasis on the benefits and disadvantages. In this project, we recognize brain tumors and classify tumor stages using database testing and training. Segmentation is used for testing purpose by FCM space. Neural networks are also used for its segmentation, which yields acceptable results in PNN neural networks.
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Journal title
volume 7 issue 25
pages 15- 23
publication date 2018-06-01
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