Latent feature representation with stacked auto-encoder for AD/MCI diagnosis
- Authors
- Suk, Heung-Il; Lee, Seong-Whan; Shen, Dinggang
- Issue Date
- 3월-2015
- Publisher
- SPRINGER HEIDELBERG
- Keywords
- Alzheimer' s disease (AD); Mild cognitive impairment (MCI); Multi-modal classification; Deep learning; Latent feature representation
- Citation
- BRAIN STRUCTURE & FUNCTION, v.220, no.2, pp.841 - 859
- Indexed
- SCIE
SCOPUS
- Journal Title
- BRAIN STRUCTURE & FUNCTION
- Volume
- 220
- Number
- 2
- Start Page
- 841
- End Page
- 859
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/94296
- DOI
- 10.1007/s00429-013-0687-3
- ISSN
- 1863-2653
- Abstract
- Recently, there have been great interests for computer-aided diagnosis of Alzheimer's disease (AD) and its prodromal stage, mild cognitive impairment (MCI). Unlike the previous methods that considered simple low-level features such as gray matter tissue volumes from MRI, and mean signal intensities from PET, in this paper, we propose a deep learning-based latent feature representation with a stacked auto-encoder (SAE). We believe that there exist latent non-linear complicated patterns inherent in the low-level features such as relations among features. Combining the latent information with the original features helps build a robust model in AD/MCI classification, with high diagnostic accuracy. Furthermore, thanks to the unsupervised characteristic of the pre-training in deep learning, we can benefit from the target-unrelated samples to initialize parameters of SAE, thus finding optimal parameters in fine-tuning with the target-related samples, and further enhancing the classification performances across four binary classification problems: AD vs. healthy normal control (HC), MCI vs. HC, AD vs. MCI, and MCI converter (MCI-C) vs. MCI non-converter (MCI-NC). In our experiments on ADNI dataset, we validated the effectiveness of the proposed method, showing the accuracies of 98.8, 90.7, 83.7, and 83.3 % for AD/HC, MCI/HC, AD/MCI, and MCI-C/MCI-NC classification, respectively. We believe that deep learning can shed new light on the neuroimaging data analysis, and our work presented the applicability of this method to brain disease diagnosis.
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Collections - Graduate School > Department of Artificial Intelligence > 1. Journal Articles
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