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Research Name
Automated Detection of Alzheimer’s Disease Using EfficientNet-B3 Architecture with Transfer Learning
Session Place
Zarqa University
Date Of Publication
2024.12.10
Abstract
In order to bring forward expansion in both the accuracy and the processing speed of the detection of Alzheimer’s disease, an automated approach for Alzheimer’s disease diagnosis with passable EfficientNet-B3 neural network and transfer learning techniques is provided in this work. After direct fitness on a large number of annotated brain images, the model of EfficientNet-B3 is further trained, in an effort to obtain worse depicted quality connected with Alzheimer’s Disease. To hasten the process of training and to make the model fit for this specific task, transfer learning was employed. The results of these experiments prove the efficiency of our approach to the diagnostic Alzheimer’s disease compared to the most advanced and regular deep learning methods. Thus, the model may also withstand the test amidst diverse clinical populations by performing well in dementia classification with precision and recall