Authors
Ehsan Hosseini-Asl, Robert Keynton, Ayman El-Baz
Publication date
2016/9/25
Conference
2016 IEEE international conference on image processing (ICIP)
Pages
126-130
Publisher
IEEE
Description
Early diagnosis, playing an important role in preventing progress and treating the Alzheimer's disease (AD), is based on classification of features extracted from brain images. The features have to accurately capture main AD-related variations of anatomical brain structures, such as, e.g., ventricles size, hippocampus shape, cortical thickness, and brain volume. This paper proposed to predict the AD with a deep 3D convolutional neural network (3D-CNN), which can learn generic features capturing AD biomarkers and adapt to different domain datasets. The 3D-CNN is built upon a 3D convolutional autoencoder, which is pre-trained to capture anatomical shape variations in structural brain MRI scans. Fully connected upper layers of the 3D-CNN are then fine-tuned for each task-specific AD classification. Experiments on the CADDementia MRI dataset with no skull-stripping preprocessing have shown our 3D-CNN …
Total citations
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Scholar articles
E Hosseini-Asl, R Keynton, A El-Baz - 2016 IEEE international conference on image …, 2016