A Novel Deep Learning Architecture Optimization for Multiclass Classification of Alzheimer’s Disease Level     
Yazarlar (2)
Doç. Dr. Mahir KAYA Tokat Gaziosmanpaşa Üniversitesi, Türkiye
Doç. Dr. Yasemin ÇETİN KAYA Tokat Gaziosmanpaşa Üniversitesi, Türkiye
Makale Türü Açık Erişim Özgün Makale
Makale Alt Türü SSCI, AHCI, SCI, SCI-Exp dergilerinde yayınlanan tam makale
Dergi Adı IEEE Access
Dergi ISSN 2169-3536 Wos Dergi Scopus Dergi
Dergi Tarandığı Indeksler SCI-Expanded
Dergi Grubu Q2
Makale Dili İngilizce
Basım Tarihi 03-2024
Cilt No 12
Sayfalar 46562 / 46581
DOI Numarası 10.1109/ACCESS.2024.3382947
Makale Linki https://doi.org/10.1109/ACCESS.2024.3382947
Özet
Alzheimer’s disease is a neurodegenerative disorder prevalent in older adults, and early diagnosis is crucial for effective treatment. A deep learning model can automatically classify Alzheimer’s disease from magnetic resonance imaging to aid clinicians in diagnosis. Convolutional Neural Networks (CNNs) are commonly used for disease detection in medical images, but their performance is limited due to inadequate labeled data, high inter-class similarity, and overfitting problems. Key hyperparameters influencing CNN performance include the number of convolution layers and filters assigned to each convolution layer. About other hyperparameters, numerous combinations exist. Since CNN models take a long time to train, it is quite costly to try all combinations to find the optimal model. Existing studies have optimized only a few hyperparameters, such as learning rate, batch size, and optimizer in custom and …
Anahtar Kelimeler
Alzheimer's disease | Convolutional neural networks | Training | Magnetic resonance imaging | Feature extraction | Computer architecture | Deep learning | Optimization methods | Hyperparameter optimization | convolutional neural network | Alzheimer | optimization | hyperparameter