End-to-End Deep Learning Architectures Using 3D Neuroimaging Biomarkers for Early Alzheimer's Diagnosis

被引:10
作者
Agarwal, Deevyankar [1 ]
Berbis, Manuel Alvaro [2 ]
Martin-Noguerol, Teodoro [3 ]
Luna, Antonio [3 ]
Garcia, Sara Carmen Parrado [4 ]
De La Torre-Diez, Isabel [1 ]
机构
[1] Univ Valladolid, Dept Signal Theory & Commun & Telemat Engn, Paseo Belen 15, Valladolid 47011, Spain
[2] Hosp San Juan Dios, HT Med, Avda Brillante 106, Cordoba 14012, Spain
[3] HT Med, Radiol Dept, MRI Unit, Jaen 23007, Spain
[4] Univ Clin Hosp Valladolid, Radiodiag Serv, SACYL, Av Ramon Y Cajal 3, Valladolid 47003, Spain
关键词
Alzheimer's disease; CNN; deep learning; end-to-end learning; MCI; MRI; neuroimaging; CONVOLUTION NEURAL-NETWORK; AD PREDICTION; GRAY-MATTER; DISEASE; CLASSIFICATION; IMAGES; MRI; MCI; ENSEMBLE;
D O I
10.3390/math10152575
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
This study uses magnetic resonance imaging (MRI) data to propose end-to-end learning implementing volumetric convolutional neural network (CNN) models for two binary classification tasks: Alzheimer's disease (AD) vs. cognitively normal (CN) and stable mild cognitive impairment (sMCI) vs. AD. The baseline MP-RAGE T1 MR images of 245 AD patients and 229 with sMCI were obtained from the ADNI dataset, whereas 245 T1 MR images of CN people were obtained from the IXI dataset. All of the images were preprocessed in four steps: N4 bias field correction, denoising, brain extraction, and registration. End-to-end-learning-based deep CNNs were used to discern between different phases of AD. Eight CNN-based architectures were implemented and assessed. The DenseNet264 excelled in both types of classification, with 82.5% accuracy and 87.63% AUC for training and 81.03% accuracy for testing relating to the sMCI vs. AD and 100% accuracy and 100% AUC for training and 99.56% accuracy for testing relating to the AD vs. CN. Deep learning approaches based on CNN and end-to-end learning offer a strong tool for examining minute but complex properties in MR images which could aid in the early detection and prediction of Alzheimer's disease in clinical settings.
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页数:28
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