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Online learning for classification of Alzheimer disease based on cortical thickness and hippocampal shape analysis

Authors
Lee, G.-Y.Kim, J.Kim, J.H.Kim, K.Seong, J.-K.
Issue Date
2014
Publisher
Korean Society of Medical Informatics
Keywords
Alzheimer disease; Artificial intelligence; Classification; Delivery of health care; Mobile health units
Citation
Healthcare Informatics Research, v.20, no.1, pp.61 - 68
Indexed
SCOPUS
KCI
Journal Title
Healthcare Informatics Research
Volume
20
Number
1
Start Page
61
End Page
68
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/100784
DOI
10.4258/hir.2014.20.1.61
ISSN
2093-3681
Abstract
Objectives: Mobile healthcare applications are becoming a growing trend. Also, the prevalence of dementia in modern society is showing a steady growing trend. Among degenerative brain diseases that cause dementia, Alzheimer disease (AD) is the most common. The purpose of this study was to identify AD patients using magnetic resonance imaging in the mobile environment. Methods: We propose an incremental classification for mobile healthcare systems. Our classification method is based on incremental learning for AD diagnosis and AD prediction using the cortical thickness data and hippocampus shape. We constructed a classifier based on principal component analysis and linear discriminant analysis. We performed initial learning and mobile subject classification. Initial learning is the group learning part in our server. Our smartphone agent implements the mobile classification and shows various results. Results: With use of cortical thickness data analysis alone, the discrimination accuracy was 87.33% (sensitivity 96.49% and specificity 64.33%). When cortical thickness data and hippocampal shape were analyzed together, the achieved accuracy was 87.52% (sensitivity 96.79% and specificity 63.24%). Conclusions: In this paper, we presented a classification method based on online learning for AD diagnosis by employing both cortical thickness data and hippocampal shape analysis data. Our method was implemented on smartphone devices and discriminated AD patients for normal group. © 2014 The Korean Society of Medical Informatics.
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