• DocumentCode
    84510
  • Title

    Domain Transfer Learning for MCI Conversion Prediction

  • Author

    Bo Cheng ; Mingxia Liu ; Daoqiang Zhang ; Munsell, Brent C. ; Dinggang Shen

  • Author_Institution
    Nanjing Univ. of Aeronaut. & Astronaut., Nanjing, China
  • Volume
    62
  • Issue
    7
  • fYear
    2015
  • fDate
    Jul-15
  • Firstpage
    1805
  • Lastpage
    1817
  • Abstract
    Machine learning methods have successfully been used to predict the conversion of mild cognitive impairment (MCI) to Alzheimer´s disease (AD), by classifying MCI converters (MCI-C) from MCI nonconverters (MCI-NC). However, most existing methods construct classifiers using data from one particular target domain (e.g., MCI), and ignore data in other related domains (e.g., AD and normal control (NC)) that may provide valuable information to improve MCI conversion prediction performance. To address is limitation, we develop a novel domain transfer learning method for MCI conversion prediction, which can use data from both the target domain (i.e., MCI) and auxiliary domains (i.e., AD and NC). Specifically, the proposed method consists of three key components: 1) a domain transfer feature selection component that selects the most informative feature-subset from both target domain and auxiliary domains from different imaging modalities; 2) a domain transfer sample selection component that selects the most informative sample-subset from the same target and auxiliary domains from different data modalities; and 3) a domain transfer support vector machine classification component that fuses the selected features and samples to separate MCI-C and MCI-NC patients. We evaluate our method on 202 subjects from the Alzheimer´s Disease Neuroimaging Initiative (ADNI) that have MRI, FDG-PET, and CSF data. The experimental results show the proposed method can classify MCI-C patients from MCI-NC patients with an accuracy of 79.4%, with the aid of additional domain knowledge learned from AD and NC.
  • Keywords
    biomedical MRI; cognition; diseases; feature selection; learning (artificial intelligence); medical image processing; neurophysiology; positron emission tomography; support vector machines; ADNI; Alzheimer´s Disease Neuroimaging Initiative; CSF data; FDG-PET; MCI conversion prediction performance; MCI converters; MCI nonconverters; MCI-C patients; MCI-NC patients; MRI; auxiliary domain; classifier; data modalities; domain transfer feature selection component; domain transfer learning method; domain transfer sample selection component; domain transfer support vector machine classification component; imaging modalities; informative feature-subset; informative sample-subset; machine learning methods; mild cognitive impairment; target domain; Alzheimer´s disease; Educational institutions; Kernel; Magnetic resonance imaging; Positron emission tomography; Support vector machines; Alzheimer´s Disease; Alzheimer´s disease (AD); Domain Transfer Learning; Feature Selection; Mild Cognitive Impairment Converters; Sample Selection; domain transfer learning; feature selection; mild cognitive impairment converters (MCI-C); sample selection;
  • fLanguage
    English
  • Journal_Title
    Biomedical Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9294
  • Type

    jour

  • DOI
    10.1109/TBME.2015.2404809
  • Filename
    7052357