• DocumentCode
    741444
  • Title

    A Robust Deep Model for Improved Classification of AD/MCI Patients

  • Author

    Feng Li ; Loc Tran ; Kim-Han Thung ; Shuiwang Ji ; Dinggang Shen ; Jiang Li

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Old Dominion Univ., Norfolk, VA, USA
  • Volume
    19
  • Issue
    5
  • fYear
    2015
  • Firstpage
    1610
  • Lastpage
    1616
  • Abstract
    Accurate classification of Alzheimer´s disease (AD) and its prodromal stage, mild cognitive impairment (MCI), plays a critical role in possibly preventing progression of memory impairment and improving quality of life for AD patients. Among many research tasks, it is of a particular interest to identify noninvasive imaging biomarkers for AD diagnosis. In this paper, we present a robust deep learning system to identify different progression stages of AD patients based on MRI and PET scans. We utilized the dropout technique to improve classical deep learning by preventing its weight coadaptation, which is a typical cause of overfitting in deep learning. In addition, we incorporated stability selection, an adaptive learning factor, and a multitask learning strategy into the deep learning framework. We applied the proposed method to the ADNI dataset, and conducted experiments for AD and MCI conversion diagnosis. Experimental results showed that the dropout technique is very effective in AD diagnosis, improving the classification accuracies by 5.9% on average as compared to the classical deep learning methods.
  • Keywords
    biomedical MRI; cognition; diseases; learning (artificial intelligence); medical computing; neurophysiology; positron emission tomography; AD conversion diagnosis; AD diagnosis; AD patients; ADNI dataset; Alzheimer´s disease; MCI conversion diagnosis; MCI patients; MRI; PET scans; adaptive learning factor; classical deep learning method; classification accuracy; deep learning framework; dropout technique; improved classification; memory impairment; mild cognitive impairment; multitask learning strategy; noninvasive imaging biomarkers; prodromal stage; progression stages; quality of life; robust deep learning system; stability selection; weight coadaptation; Computational modeling; Feature extraction; Magnetic resonance imaging; Positron emission tomography; Principal component analysis; Support vector machines; Training; Alzheimer’s Disease; Alzheimer´s disease (AD); Deep Learning; Early Diagnosis; MRI; PET; deep learning; early diagnosis; magnetic resonance imaging (MRI); positron emission tomography (PET);
  • fLanguage
    English
  • Journal_Title
    Biomedical and Health Informatics, IEEE Journal of
  • Publisher
    ieee
  • ISSN
    2168-2194
  • Type

    jour

  • DOI
    10.1109/JBHI.2015.2429556
  • Filename
    7101222