Using machine learning to predict depression among middle-aged and elderly population in China and conducting empirical analysis

To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Participants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scal...

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Published inPloS one Vol. 20; no. 3; p. e0319232
Main Authors Wang, Zhe, Jia, Ni
Format Journal Article
LanguageEnglish
Published United States Public Library of Science 18.03.2025
Public Library of Science (PLoS)
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ISSN1932-6203
1932-6203
DOI10.1371/journal.pone.0319232

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Abstract To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Participants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors. The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models. The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
AbstractList To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models. The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
Objective To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Methods Participants aged [greater than or equal to] 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors. Results The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models. Conclusion The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
Objective To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Methods Participants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors. Results The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models. Conclusion The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China.OBJECTIVETo develop a predictive model for evaluating depression among middle-aged and elderly individuals in China.Participants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors.METHODSParticipants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors.The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models.RESULTSThe stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models.The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.CONCLUSIONThe stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
ObjectiveTo develop a predictive model for evaluating depression among middle-aged and elderly individuals in China.MethodsParticipants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors.ResultsThe stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models.ConclusionThe stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Participants aged ≥ 45 from the 2020 China Health and Retirement Survey (CHARLS) cross-sectional study were enrolled. Depressive mood was defined as a score of 10 or higher on the CESD-10 scale, which has a maximum score of 30. A predictive model was developed using five selected machine learning algorithms. The model was trained and validated on the 2020 database cohort and externally validated through a questionnaire survey of middle-aged and elderly individuals in Shaanxi Province, China, following the same criteria. SHapley Additive Interpretation (SHAP) was employed to assess the importance of predictive factors. The stacked ensemble model demonstrated an AUC of 0.8021 in the test set of the training cohort for predicting depressive symptoms; the corresponding AUC in the external validation cohort was 0.7448, outperforming all base models. The stacked ensemble approach serves as an effective tool for identifying depression in a large population of middle-aged and elderly individuals in China. For depression prediction, factors such as life satisfaction, self-reported health, pain, sleep duration, and cognitive function are identified as highly significant predictive factors.
Audience Academic
Author Wang, Zhe
Jia, Ni
AuthorAffiliation 1 Department of Public Health, Shaanxi University of Chinese Medicine, Xianyang, Shaanxi, China
University of Roehampton - Digby Stuart College, UNITED KINGDOM OF GREAT BRITAIN AND NORTHERN IRELAND
2 First Clinical Medical College, Shaanxi University of Chinese Medicine, Xianyang, Shaanxi, China
AuthorAffiliation_xml – name: University of Roehampton - Digby Stuart College, UNITED KINGDOM OF GREAT BRITAIN AND NORTHERN IRELAND
– name: 2 First Clinical Medical College, Shaanxi University of Chinese Medicine, Xianyang, Shaanxi, China
– name: 1 Department of Public Health, Shaanxi University of Chinese Medicine, Xianyang, Shaanxi, China
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  orcidid: 0009-0006-0974-5078
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BackLink https://www.ncbi.nlm.nih.gov/pubmed/40100860$$D View this record in MEDLINE/PubMed
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Snippet To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Participants aged ≥ 45 from the 2020 China Health...
Objective To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Methods Participants aged [greater than...
To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. The stacked ensemble model demonstrated an AUC of...
ObjectiveTo develop a predictive model for evaluating depression among middle-aged and elderly individuals in China.MethodsParticipants aged ≥ 45 from the 2020...
To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China.OBJECTIVETo develop a predictive model for...
Objective To develop a predictive model for evaluating depression among middle-aged and elderly individuals in China. Methods Participants aged ≥ 45 from the...
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SubjectTerms Aged
Algorithms
China - epidemiology
Chronic illnesses
Cognitive ability
Computer and Information Sciences
Cross-Sectional Studies
Data collection
Data mining
Datasets
Depression - diagnosis
Depression - epidemiology
Disease
Emotions
Empirical analysis
Ethics
Female
Humans
Insomnia
Learning algorithms
Life satisfaction
Loneliness
Longitudinal studies
Machine Learning
Male
Medicine and Health Sciences
Mental depression
Mental health
Middle age
Middle Aged
Older people
People and Places
Physical Sciences
Polls & surveys
Prediction models
Psychological aspects
Questionnaires
Research and Analysis Methods
Surveys
Surveys and Questionnaires
Values
Variables
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Title Using machine learning to predict depression among middle-aged and elderly population in China and conducting empirical analysis
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Volume 20
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