ResSGA-Net: A deep learning approach for enhanced brain tumor detection and accurate classification in healthcare imaging systems
Yucheng Guan, Ahmad Alshammari, Yu Wang, Jahan Zeb Gul, Azhar Imran

TL;DR
ResSGA-Net is a deep learning model that improves brain tumor detection and classification using MRI images, achieving high accuracy and strong generalization.
Contribution
The novel ResSGA-Net framework combines ResNet50, dual attention mechanisms, and a Swin Transformer for enhanced brain tumor classification.
Findings
ResSGA-Net achieved over 98% accuracy on a four-class brain tumor dataset.
The model showed strong generalization with 93.18% accuracy on a different dataset.
Statistical tests confirmed the improvements are significant and not due to chance.
Abstract
Accurate and reliable brain tumor classification from magnetic resonance imaging (MRI) is a critical component of computer-aided diagnosis systems, directly impacting clinical decision-making and patient outcomes. This study presents ResSGA-Net, a hybrid deep learning framework that integrates a ResNet50 backbone with dual attention mechanisms (global and gated) and a Swin Transformer to capture both fine-grained local features and long-range contextual dependencies effectively. A fusion strategy is employed to unify convolutional, attention-refined, and transformer-enhanced representations into a robust feature space for multi-class classification. The proposed model is evaluated on two publicly available benchmark datasets, including a four-class and a three-class brain tumor classification task, using stratified cross-validation. Extensive quantitative analysis demonstrates that…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Neural Network Applications · Medical Imaging and Analysis
