Knowledge‐based deep learning system for classifying Alzheimer's disease for multi‐task learning

Author:

Dhaygude Amol Dattatray1,Ameta Gaurav Kumar2,Khan Ihtiram Raza3,Singh Pavitar Parkash4,Maaliw Renato R.5ORCID,Lakshmaiya Natrayan6,Shabaz Mohammad7ORCID,Khan Muhammad Attique89,Hussein Hany S.1011,Alshazly Hammam12

Affiliation:

1. Department of Data Science University of Washington Seattle Washington USA

2. Department of Computer Science & Engineering Parul Institute of Technology Parul University Vadodara Gujarat India

3. Department of Computer Science Jamia Hamdard Delhi India

4. Department of Management Lovely Professional University Phagwara India

5. College of Engineering Southern Luzon State University Lucban Quezon Philippines

6. Department of Mechanical Engineering Saveetha School of Engineering SIMATS Chennai Tamil Nadu India

7. Model Institute of Engineering and Technology Jammu J&K India

8. Department of Computer Science HITEC University Taxila Pakistan

9. Department of Computer Science and Mathematics Lebanese American University Beirut Lebanon

10. Electrical Engineering Department College of Engineering King Khalid University Abha Saudi Arabia

11. Electrical Engineering Department Aswan University Aswan Egypt

12. Faculty of Computers and Information South Valley University Qena Egypt

Abstract

AbstractDeep learning has recently become a viable approach for classifying Alzheimer's disease (AD) in medical imaging. However, existing models struggle to efficiently extract features from medical images and may squander additional information resources for illness classification. To address these issues, a deep three‐dimensional convolutional neural network incorporating multi‐task learning and attention mechanisms is proposed. An upgraded primary C3D network is utilised to create rougher low‐level feature maps. It introduces a new convolution block that focuses on the structural aspects of the magnetic resonance imaging image and another block that extracts attention weights unique to certain pixel positions in the feature map and multiplies them with the feature map output. Then, several fully connected layers are used to achieve multi‐task learning, generating three outputs, including the primary classification task. The other two outputs employ backpropagation during training to improve the primary classification job. Experimental findings show that the authors’ proposed method outperforms current approaches for classifying AD, achieving enhanced classification accuracy and other indicators on the Alzheimer's disease Neuroimaging Initiative dataset. The authors demonstrate promise for future disease classification studies.

Publisher

Institution of Engineering and Technology (IET)

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