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Advanced interpretable diagnosis of Alzheimer's disease using SECNN-RF framework with explainable AI
Faculty
Computer Science
Year:
2024
Type of Publication:
ZU Hosted
Pages:
Authors:
Mohammed Maher Abdel Hafiz Hassan
Staff Zu Site
Abstract In Staff Site
Journal:
Frontiers in Artificial Intellegence Frontiers
Volume:
Keywords :
Advanced interpretable diagnosis , Alzheimer's disease using
Abstract:
Early detection of Alzheimer’s disease (AD) is vital for eective treatment, as interventions are most successful in the disease’s early stages. Combining Magnetic Resonance Imaging (MRI) with artificial intelligence (AI) oers significant potential for enhancing AD diagnosis. However, traditional AI models often lack transparency in their decision-making processes. Explainable Artificial Intelligence (XAI) is an evolving field that aims to make AI decisions understandable to humans, providing transparency and insight into AI systems. This research introduces the Squeeze-and-Excitation Convolutional Neural Network with Random Forest (SECNN-RF) framework for early AD detection using MRI scans. The SECNN-RF integrates Squeeze-and-Excitation (SE) blocks into a Convolutional Neural Network (CNN) to focus on crucial features and uses Dropout layers to prevent overfitting. It then employs a Random Forest classifier to accurately categorize the extracted features. The SECNN-RF demonstrates high accuracy (99.89%) and oers an explainable analysis, enhancing the model’s interpretability. Further exploration of the SECNN framework involved substituting the Random Forest classifier with other machine learning algorithms like Decision Tree, XGBoost, Support Vector Machine, and Gradient Boosting. While all these classifiers improved model performance, Random Forest achieved the highest accuracy, followed closely by XGBoost, Gradient Boosting, Support Vector Machine, and Decision Tree which achieved lower accurac
Author Related Publications
Mohammed Maher Abdel Hafiz Hassan, "Hybrid Model Architectures for Enhancing Data Classification Performance in E-commerce Applications", Springer International Publishing, 2019
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Mohammed Maher Abdel Hafiz Hassan, "ENHANCING CLUSTERING-BASED CLASSIFICATION ALGORITHMS IN E-COMMERCE APPLICATIONS", JATIT & LLS, 2018
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Mohammed Maher Abdel Hafiz Hassan, "Advanced interpretable diagnosis of Alzheimer's disease using SECNN-RF framework with explainable AI", Frontiers Media SA, 2024
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Mohammed Maher Abdel Hafiz Hassan, "Navigating the Depths of Explainable AI (XAI): Methods, Applications, and Challenges in Neurological Diseases", FCI, 2023
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Department Related Publications
Abdelnaser Hessien Reyad Zaied , "A Technique for Cost Justified Software Usability Testing", Engineering Research Journal, Helwan University,, 2002
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Abdelnaser Hessien Reyad Zaied , "Assessing e-Readiness in the Arab Countries: Perceptions Towards ICT Environment in Public Organizations in the State of Kuwait", Electronic Journal of e-Government, 2007
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Abdelnaser Hessien Reyad Zaied , "Development of Driver Assistance Collision Avoidance Fuzzy System", Emirates Journal for Engineering Research, 2006
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Nabil Moustafa AbdelAziz, "An Integrated Neutrosophic and MOORA for Selecting Machine Tool", Zenodo, 2019
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Wafaa Tawfik Abdelmoniem, "تحليل البيانات الضخمة بالحوسبة المتوازية والموزعة", 2024
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