SCAG-Net: Automated Brain Tumor Prediction from MRI Using Cuttlefish-Optimized Attention-Based Graph Networks
Vijay Govindarajan, Ashit Kumar Dutta, Amr Yousef, Mohd Anjum, Ali Elrashidi, Sana Shahab

TL;DR
SCAG-Net is a new system that improves brain tumor detection from MRI scans using an optimized attention-based graph network, achieving high accuracy and efficiency.
Contribution
Introduces SCAG-Net, a novel framework combining Swin-UNet with cuttlefish-optimized attention-based graph networks for improved brain tumor recognition.
Findings
SCAG-Net achieved a Dice coefficient of 0.989 and classification accuracy of 0.992 on brain tumor MRI data.
The system outperformed recent benchmark models by 1.0% to 1.8% with statistically significant results (p < 0.05).
The framework handles tumor variability and infiltrative gliomas effectively, offering a clinically deployable solution.
Abstract
Background/Objectives: The earlier, more accurate, and more consistent prediction of the brain tumor recognition process requires automated systems to minimize diagnostic delays and human error. The automated system provides a platform for handling large medical images, speeding up clinical decision-making. However, the existing system is facing difficulties due to the high variability in tumor location, size, and shape, which leads to segmentation complexity. In addition, glioma-related tumors infiltrate the brain tissues, making it challenging to identify the exact tumor region. Method: The above-identified research difficulties are overcome by applying the Swin-UNet with cuttlefish-optimized attention-based Graph Neural Networks (SCAG-Net), thereby improving overall brain tumor recognition accuracy. This integrated approach is utilized to address infiltrative gliomas, tumor…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Neural Network Applications · Cell Image Analysis Techniques
