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Journal ArticleOpen Access

Robust clinical applicable CNN and U-Net based algorithm for MRI classification and segmentation for brain tumor

Author Affiliations
Jahangirnagar University, King Khalid University, UNSW Sydney, Charles Sturt University, ...
Published InExpert Systems with Applications
Year2023
Citations242

Abstract

Early diagnosis of brain tumors is critical for enhancing patient prognosis and treatment options, while accurate classification and segmentation of brain tumors are vital for developing personalized treatment strategies. Despite the widespread use of Magnetic Resonance Imaging (MRI) for brain examination and advances in AI-based detection methods, building an accurate and efficient model for detecting and categorizing tumors from MRI images remains a challenge. To address this problem, we proposed a deep Convolutional Neural Network (CNN)-based architecture for automatic brain image classification into four classes and a U-Net-based segmentation model. Using six benchmarked datasets, we tested the classification model and trained the segmentation model, enabling side-by-side comparison of the impact of segmentation on tumor classification in brain MRI images. We…
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