Individualized Diagnosis of Preclinical Alzheimer's Disease using Deep Neural Networks
- Authors
- Park, Jinhee; Jang, Sehyeon; Gwak, Jeonghwan; Kim, Byeong C.; Lee, Jang Jae; Choi, Kyu Yeong; Lee, Kun Ho; Jun, Sung Chan; Jang, Gil-Jin; Ahn, Sangtae
- Issue Date
- Dec-2022
- Publisher
- Pergamon Press Ltd.
- Keywords
- Preclinical Alzheimer?s Disease; Electroencephalography; Deep Neural Networks
- Citation
- Expert Systems with Applications, v.210
- Journal Title
- Expert Systems with Applications
- Volume
- 210
- URI
- http://scholarworks.bwise.kr/kbri/handle/2023.sw.kbri/924
- DOI
- 10.1016/j.eswa.2022.118511
- ISSN
- 0957-4174
- Abstract
- The early diagnosis of Alzheimer's Disease (AD) plays a central role in the treatment of AD. Particularly, identifying the preclinical AD (pAD) stage could be crucial for timely treatment in the elderly. However, screening participants with pAD requires a series of psychological and neurological examinations. Thus, an efficient diagnostic tool is needed. Here, we recruited 91 elderly participants and collected 1 minute of resting-state electroencephalography data to classify participants as normal aging or diagnosed with pAD. We used deep neural networks (Deep ConvNet, EEGNet, EEG-TCNet, and cascade CRNN) in the within-and cross-subject paradigms for classification and found individual variations of classification accuracy in the cross-subject paradigm. Further, we proposed an individualized diagnostic strategy to identify neurophysiological similarities across participants and the proposed approach considering individual characteristics improved the diagnostic performance by approximately 20%. Our findings suggest that considering individual characteristics would be a breakthrough in diagnosing AD using deep neural networks.
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