البريد الالكتروني

[email protected]

رقم الهاتف

6163

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ولاء لؤي علي الفلوجي

بحوث سكوبس — ولاء لؤي علي الفلوجي

جراحة القلب والصدر والأوعية الدموية • جراحة القلب والصدر والأوعية الدموية

1 إجمالي البحوث
0 إجمالي الاستشهادات
2026 أحدث نشر
1 أنواع المنشورات
عرض 1 بحث
2026
1 بحث
Hasan A.M.; Alfalluji W.L.; Hamdawi M.A.; Jalab H.A.; Ibrahim R.W.; Meziane F.
Journal of Medical Engineering and Technology
Article English ISSN: 03091902
College of Medicine, Al-Nahrain University, Baghdad, Iraq; College of Medicine, Al-Mustaqbal University, Babil, Iraq; Information and Communication Technology Research Group, Scientific Research Center, Al-Ayen University, Thi-Qar, Iraq; Data Science Research Centre, School of Computing, University of Derby, Derby, United Kingdom
Prostate cancer is among the most diagnosed malignancies in men worldwide and a leading cause of cancer-related mortality. Early and accurate diagnosis is critical to improve patient outcomes and reduce the risks of overtreatment or missed detection. Conventional diagnostic approaches, including prostate-specific antigen (PSA) testing, digital rectal examination (DRE), and histopathological analysis, often suffer from limited sensitivity and specificity, leading to false positive or delayed diagnosis. Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) has recently emerged as an effective modality for prostate cancer detection, providing complementary anatomical and functional information. This study proposes a novel hybrid diagnostic framework that integrates Generalized Quantum Gamma Polynomial (GQGP) features, kinetic signal intensity features, and deep learning-based representations. GQGP features capture subtle intensity variations and quantum-inspired statistical characteristics, while kinetic features quantify contrast-enhancement dynamics to discriminate malignant from benign tissues. These handcrafted descriptors are fused with high-level features extracted using convolutional neural networks (CNNs) to construct a comprehensive feature representation. Experimental evaluation on publicly available prostate imaging datasets demonstrates that the proposed fusion framework significantly outperforms single-feature and traditional methods, achieving a classification accuracy of 97.32%. The results highlight the effectiveness of combining mathematical modeling, radiomics, and artificial intelligence for improved prostate cancer diagnosis. © 2026 Informa UK Limited, trading as Taylor & Francis Group.
الكلمات المفتاحية: DCE-MRI deep learning GQGP kinetic Prostate cancer