An Explainable AI Paradigm for Alzheimer’s Diagnosis Using Deep Transfer Learning
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Published:2024-02-05
Issue:3
Volume:14
Page:345
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ISSN:2075-4418
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Container-title:Diagnostics
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language:en
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Short-container-title:Diagnostics
Author:
Mahmud Tanjim1ORCID, Barua Koushick1, Habiba Sultana Umme2ORCID, Sharmen Nahed3ORCID, Hossain Mohammad Shahadat4ORCID, Andersson Karl5ORCID
Affiliation:
1. Department of Computer Science and Engineering, Rangamati Science and Technology University, Rangamati 4500, Bangladesh 2. Department of Computer Science and Engineering, Khulna University of Engineering & Technology, Khulna 9203, Bangladesh 3. Department of Obstetrics and Gynecology, Chattogram Maa-O-Shishu Hospital Medical College, Chittagong 4100, Bangladesh 4. Department of Computer Science and Engineering, University of Chittagong, Chittagong 4331, Bangladesh 5. Pervasive and Mobile Computing Laboratory, Luleå University of Technology, 97187 Luleå, Sweden
Abstract
Alzheimer’s disease (AD) is a progressive neurodegenerative disorder that affects millions of individuals worldwide, causing severe cognitive decline and memory impairment. The early and accurate diagnosis of AD is crucial for effective intervention and disease management. In recent years, deep learning techniques have shown promising results in medical image analysis, including AD diagnosis from neuroimaging data. However, the lack of interpretability in deep learning models hinders their adoption in clinical settings, where explainability is essential for gaining trust and acceptance from healthcare professionals. In this study, we propose an explainable AI (XAI)-based approach for the diagnosis of Alzheimer’s disease, leveraging the power of deep transfer learning and ensemble modeling. The proposed framework aims to enhance the interpretability of deep learning models by incorporating XAI techniques, allowing clinicians to understand the decision-making process and providing valuable insights into disease diagnosis. By leveraging popular pre-trained convolutional neural networks (CNNs) such as VGG16, VGG19, DenseNet169, and DenseNet201, we conducted extensive experiments to evaluate their individual performances on a comprehensive dataset. The proposed ensembles, Ensemble-1 (VGG16 and VGG19) and Ensemble-2 (DenseNet169 and DenseNet201), demonstrated superior accuracy, precision, recall, and F1 scores compared to individual models, reaching up to 95%. In order to enhance interpretability and transparency in Alzheimer’s diagnosis, we introduced a novel model achieving an impressive accuracy of 96%. This model incorporates explainable AI techniques, including saliency maps and grad-CAM (gradient-weighted class activation mapping). The integration of these techniques not only contributes to the model’s exceptional accuracy but also provides clinicians and researchers with visual insights into the neural regions influencing the diagnosis. Our findings showcase the potential of combining deep transfer learning with explainable AI in the realm of Alzheimer’s disease diagnosis, paving the way for more interpretable and clinically relevant AI models in healthcare.
Reference41 articles.
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