Brain Tumor Detection and Classification with Deep Learning Based CNN Method

Release :
2025-07-30
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English
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Authors:

Hakan Kör, Rabia Mazman

Abstract:

Brain tumor occurs when cells formed as a result of self-renewal of cells in the human body growmore than normal and become a mass. Brain tumor constitutes one of the factors that endanger human life.By early diagnosis with the right methods and techniques, lives can be saved by preventing brain tumors thatendanger human life. In today’s technology, Magnetic Resonance imaging (MRI) is used to detect brain tumors.Early diagnosis plays an important role in brain tumor. In this study, Convolution neural network (CNN) is usedfor brain tumor detection and classification with deep learning, a sub-branch of machine learning. When theCNN model was compared with other deep learning models for brain tumor prediction, it was found that theCNN model had a higher accuracy rate than other models, with 98.24%.
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