Title :
Multimodal Neuroimaging Feature Learning for Multiclass Diagnosis of Alzheimer's Disease
Author :
Siqi Liu ; Sidong Liu ; Weidong Cai ; Hangyu Che ; Pujol, Sonia ; Kikinis, Ron ; Dagan Feng ; Fulham, Michael J.
Author_Institution :
Biomed. & Multimedia Inf. Technol. Res. Group, Univ. of Sydney, Sydney, NSW, Australia
Abstract :
The accurate diagnosis of Alzheimer´s disease (AD) is essential for patient care and will be increasingly important as disease modifying agents become available, early in the course of the disease. Although studies have applied machine learning methods for the computer-aided diagnosis of AD, a bottleneck in the diagnostic performance was shown in previous methods, due to the lacking of efficient strategies for representing neuroimaging biomarkers. In this study, we designed a novel diagnostic framework with deep learning architecture to aid the diagnosis of AD. This framework uses a zero-masking strategy for data fusion to extract complementary information from multiple data modalities. Compared to the previous state-of-the-art workflows, our method is capable of fusing multimodal neuroimaging features in one setting and has the potential to require less labeled data. A performance gain was achieved in both binary classification and multiclass classification of AD. The advantages and limitations of the proposed framework are discussed.
Keywords :
biomedical MRI; diseases; learning (artificial intelligence); neurophysiology; patient care; patient diagnosis; positron emission tomography; sensor fusion; Alzheimer disease binary classification; Alzheimer disease computer-aided diagnosis; Alzheimer disease multiclass classification; Alzheimer disease multiclass diagnosis; data fusion; machine learning method; multimodal neuroimaging feature learning; neuroimaging biomarker; patient care; zero-masking strategy; Biomarkers; Diseases; Feature extraction; Neuroimaging; Neurons; Positron emission tomography; Training; Alzheimer’s Disease; Alzheimer´s disease (AD); Classification; Deep Learning; MRI; Neuroimaging; PET; classification; deep Learning; neuroimaging; positron emission tomography (PET);
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2014.2372011