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Performance Analysis of Deep Belief Neural Network for Brain Tumor Classification
Author(s) -
Sreenivas Eeshwaroju,
Novi Harman Connected Services,
Praveena Jakula
Publication year - 2020
Publication title -
journal of computational science and intelligent technologies
Language(s) - English
Resource type - Journals
ISSN - 2582-9041
DOI - 10.53409/mnaa.jcsit20201305
Subject(s) - brain tumor , computer science , magnetic resonance imaging , artificial intelligence , deep learning , artificial neural network , neuroimaging , pattern recognition (psychology) , medicine , radiology , psychology , pathology , neuroscience
The brain tumors are by far the most severe and violent disease, contributing to the highest degree of a very low life expectancy. Therefore, recovery preparation is a crucial step in improving patient quality of life. In general , different imaging techniques such as computed tomography ( CT), magnetic resonance imaging ( MRI) and ultrasound imaging have been used to examine the tumor in the brain, lung , liver, breast , prostate ... etc. MRI images are especially used in this research to diagnose tumor within the brain with classification results. The massive amount of data produced by the MRI scan, therefore, destroys the manual classification of tumor vs. non-tumor in a given period. However for a limited number of images, it is presented with some constraint that is precise quantitative measurements. Consequently, a trustworthy and automated classification scheme is important for preventing human death rates. The automatic classification of brain tumors is a very challenging task in broad spatial and structural heterogeneity of the surrounding brain tumor area. Automatic brain tumor identification is suggested in this research by the use of the classification with Deep Belief Network (DBN). Experimental results show that the DBN archive rate with low complexity seems to be 97 % accurate compared to all other state of the art methods.

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