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BERT and BERTopic for screening clinical depression on open-ended text messages collected through a mobile application from older adults

Authors
 Chung, Moo-Kwon  ;  Lee, Sang Yup  ;  Shin, Taeksoo  ;  Park, Ji Young  ;  Hwang, Sangwon  ;  Kim, Min-Hyuk  ;  Lee, Jinhee  ;  Lee, Kyoung-Joung  ;  Lim, Hyo-Sang  ;  Urtnasan, Erdenebayar  ;  Jung, Yeonsu  ;  Kim, Dan-Kyung  ;  Shin, Eunji  ;  Lee, Jin-kyung 
Citation
 BMC PUBLIC HEALTH, Vol.25(1), 2025-06 
Article Number
 2161 
Journal Title
BMC PUBLIC HEALTH
ISSN
 1471-2458 
Issue Date
2025-06
Keywords
BERT ; Text Mining ; Topic Modeling ; Depression ; Older Adults
Abstract
BackgroundDespite the high suicide rate in South Korea, older adults are reluctant to see a psychiatrist. Recently, text mining has gained popularity to detect depression in social media posts, but older adults rarely use social media. However, more than 90% of them use smartphones. South Korea has also made a public effort to utilize a mobile application to manage chronic health problems. In these situations, this study explores the possibility of screening the risk of depression through textual data reporting major stressors collected from older adults via a mobile application.MethodsWe collected the data regarding stress and depressive symptoms through our mobile application. Pre-trained Bidirectional Encoder Representations from Transformers (BERT)-based Natural Language Processing (NLP) models were utilized, using Python and the Hugging Face Transformers. A total of 1,332 text messages collected from 230 participants were analyzed using BERT modeling to detect clinical depression, as screened by the PHQ-9. For Korean data, we used KcBERT and KLUE BERT. BERTopic and dynamic BERTopic were used to see what stress topics appeared among a high-risk group and how they changed.ResultsThe results demonstrate that KcBERT (precision = .89, recall = .86, F1 score = .87) was slightly better than KLUE BERT (precision = .81, recall = .78, F1 score = .79), although both performed well in identifying clinical depression. In BERTopic results, hierarchical clustering were re-grouped into four categories: financial problems, family-oriented stressful situations, physical and mental health problems, and work-related or acutely stressful situations. Dynamic BERTopic results show longitudinal changes. While event-related words such as family death or disease diagnosis were found more often for the cases when depression risk increased, words related to continued stressful situations appeared more often when the risk remained high.ConclusionThese results imply that collecting respondents' reports regarding stressful experiences can be useful to screen the risk of clinical depression. Including this function within a smartphone application publicly administered by community health care professionals can help monitor mental health in older adults. It can approach a hidden high-risk population suffering from depression in the community, providing enriched information about their risk factors.
Files in This Item:
s12889-025-23337-4.pdf Download
DOI
10.1186/s12889-025-23337-4
Appears in Collections:
3. College of Nursing (간호대학) > Others (기타) > 1. Journal Papers
Yonsei Authors
Lee, Jin-kyung(이진경)
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/208305
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