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Browsing by Author "DOUDOU, Mohamed Elhadi"

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    Attention-Powered U-Net for Kidney Tumor Segmentation
    (université Ghardaia, 2025) DOUDOU, Mohamed Elhadi; ABISMAIL, Bayoub; OULAD NAOUI, SLIMANE Supervisor
    Kidney cancer is a major health concern, with rising rates of diagnosis and mortal- ity. Each year, thousands of people are diagnosed, and many lose their lives due to late detection. Traditional diagnostic methods, while valuable, often fall short in accuracy, leading to challenges in treatment planning and patient outcomes. While computed tomography (CT) imaging is the gold standard for diagnosis, manual tumor segmentation is time-consuming, prone to variability, and highly dependent on radiologists’ expertise. Deep learning-based methods, particularly U-Net, have shown a great promise in automating segmentation tasks. However, existing models often struggle with ambiguous tumor boundaries, class imbalances, and misclassi- fication of benign cysts. In this study, we implemented a U-Net Attention model architecture, which integrates attention mechanisms into a U Net framework to en- hance feature extraction, tumor localization, and segmentation accuracy of kidney tumor segmentation from CT images. In the experiment, we follow a different ap- proach in the pre-processing pipeline of our dataset. Our approach proves a powerful way to segment kidney and tumor, leading to more accurate kidney disease diagno- sis and treatment planning. We utilize the KiTS19 dataset for contrast-enhanced CT images using semantic segmentation. Our model achieves a mean Dice score of 0.85% and 0.70% for kidney and kidney tumors, respectively. It showcases the potential to improve clinical kidney method decision-making.

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