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Identification of Geriatric Depression and Anxiety Using Activity Tracking Data and Minimal Geriatric Assessment Scales

Title
Identification of Geriatric Depression and Anxiety Using Activity Tracking Data and Minimal Geriatric Assessment Scales
Authors
Lee T.-R.Kim G.-H.Choi M.-T.
Ewha Authors
김건하
SCOPUS Author ID
김건하scopus
Issue Date
2022
Journal Title
Applied Sciences (Switzerland)
ISSN
2076-3417JCR Link
Citation
Applied Sciences (Switzerland) vol. 12, no. 5
Keywords
24-h activity rhythmsActivity trackerAnxietyBinary relevanceDepressionGeriatric mood disordersMulti-label classificationSleep patterns
Publisher
MDPI
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
The identification of geriatric depression and anxiety is important because such conditions are the most common comorbid mood problems that occur in older adults. The goal of this study was to build a machine learning framework that identifies geriatric mood disorders of depression and anxiety using low-cost activity trackers and minimal geriatric assessment scales. We collected activity tracking data from 352 mild cognitive impairment patients, from 60 to 90 in age, by having them wear activity trackers on their wrist for more than a month. We then extracted the features of 24-h activity rhythms and sleep patterns from the time-series activity tracking data. To increase the accuracy, we designed a novel method to incorporate additional features from questionnaire-based assessments of the geriatric depression scale and geriatric anxiety inventory into the activity tracking features. In the multi-label classification, we applied the binary relevance method to develop two single-label classifiers for depression and anxiety. The best hyper-parameters of classification algorithms for each label were selected by comparing the classification performance. We finally selected the combination of classifiers for depression and anxiety with the lowest Hamming loss as a multi-label classifier. This study successfully demonstrated the possibility of identifying geriatric depression and anxiety using low-cost activity trackers and minimal geriatric assessment scales for use in the real fields. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
DOI
10.3390/app12052488
Appears in Collections:
연구기관 > 뇌융합과학연구원 > Journal papers
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