A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study

Abstract This study aims to identify depressive risks in elderly individuals with subjective cognitive decline (SCD) and develop a predictive model using machine learning algorithms to enable timely interventions.Data from the 2015 and 2018 waves of the China Health and Retirement Longitudinal Study...

Full description

Saved in:
Bibliographic Details
Main Authors: Jing Xu, Wenjin Zhang, Wenli Liu
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-10645-3
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849344930061746176
author Jing Xu
Wenjin Zhang
Wenli Liu
author_facet Jing Xu
Wenjin Zhang
Wenli Liu
author_sort Jing Xu
collection DOAJ
description Abstract This study aims to identify depressive risks in elderly individuals with subjective cognitive decline (SCD) and develop a predictive model using machine learning algorithms to enable timely interventions.Data from the 2015 and 2018 waves of the China Health and Retirement Longitudinal Study (CHARLS) were used, including 1,921 elderly individuals. Depression was assessed with the CESD-10 scale. Three machine learning models—Gradient Boosting, Random Forest, and Boosted XGBoost—were used to predict depression risk over three years, incorporating 10 demographic, 5 health, 13 chronic disease, 3 lifestyle, and 2 physical function factors. Lasso feature selection identified 10 key variables for model training. Model performance was evaluated using ROC curves, AUC, sensitivity, specificity, accuracy, calibration, and decision curve analysis. Among all evaluated models, Boosted XGBoost demonstrated the highest predictive accuracy in the test set (AUC = 0.893), outperforming both Gradient Boosting (AUC = 0.887) and Random Forest (AUC = 0.861). However, Random Forest (RF) achieved superior sensitivity. Consequently, we performed feature importance analysis using both Boosted XGBoost and RF models. The results identified five significant predictors of depression in older adults with subjective cognitive decline (SCD): educational attainment, digestive health status, arthritis diagnosis, sleep duration, and residential location.The machine learning model developed in our study demonstrates strong predictive performance for depression risk among older adults with subjective cognitive decline (SCD), enabling early identification of high-risk individuals. These findings provide a scientific foundation for understanding depression progression mechanisms and developing personalized intervention strategies.
format Article
id doaj-art-02da217cae984de6bf9e411afefa2ecf
institution Kabale University
issn 2045-2322
language English
publishDate 2025-07-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-02da217cae984de6bf9e411afefa2ecf2025-08-20T03:42:31ZengNature PortfolioScientific Reports2045-23222025-07-0115111110.1038/s41598-025-10645-3A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal studyJing Xu0Wenjin Zhang1Wenli Liu2School of Nursing, Shandong Xiandai UniversityDepartment of Urology, Shanxi Bethune Hospital, Third Hospital of Shanxi Medical University, Shanxi Academy of Medical Sciences, Tongji Shanxi HospitalLinfen central hospitalAbstract This study aims to identify depressive risks in elderly individuals with subjective cognitive decline (SCD) and develop a predictive model using machine learning algorithms to enable timely interventions.Data from the 2015 and 2018 waves of the China Health and Retirement Longitudinal Study (CHARLS) were used, including 1,921 elderly individuals. Depression was assessed with the CESD-10 scale. Three machine learning models—Gradient Boosting, Random Forest, and Boosted XGBoost—were used to predict depression risk over three years, incorporating 10 demographic, 5 health, 13 chronic disease, 3 lifestyle, and 2 physical function factors. Lasso feature selection identified 10 key variables for model training. Model performance was evaluated using ROC curves, AUC, sensitivity, specificity, accuracy, calibration, and decision curve analysis. Among all evaluated models, Boosted XGBoost demonstrated the highest predictive accuracy in the test set (AUC = 0.893), outperforming both Gradient Boosting (AUC = 0.887) and Random Forest (AUC = 0.861). However, Random Forest (RF) achieved superior sensitivity. Consequently, we performed feature importance analysis using both Boosted XGBoost and RF models. The results identified five significant predictors of depression in older adults with subjective cognitive decline (SCD): educational attainment, digestive health status, arthritis diagnosis, sleep duration, and residential location.The machine learning model developed in our study demonstrates strong predictive performance for depression risk among older adults with subjective cognitive decline (SCD), enabling early identification of high-risk individuals. These findings provide a scientific foundation for understanding depression progression mechanisms and developing personalized intervention strategies.https://doi.org/10.1038/s41598-025-10645-3Subjective cognitive declineDepressive symptomsMachine learning (ML)Prediction model, China
spellingShingle Jing Xu
Wenjin Zhang
Wenli Liu
A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
Scientific Reports
Subjective cognitive decline
Depressive symptoms
Machine learning (ML)
Prediction model, China
title A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
title_full A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
title_fullStr A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
title_full_unstemmed A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
title_short A machine learning-based approach to predict depression in Chinese older adults with subjective cognitive decline: a longitudinal study
title_sort machine learning based approach to predict depression in chinese older adults with subjective cognitive decline a longitudinal study
topic Subjective cognitive decline
Depressive symptoms
Machine learning (ML)
Prediction model, China
url https://doi.org/10.1038/s41598-025-10645-3
work_keys_str_mv AT jingxu amachinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy
AT wenjinzhang amachinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy
AT wenliliu amachinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy
AT jingxu machinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy
AT wenjinzhang machinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy
AT wenliliu machinelearningbasedapproachtopredictdepressioninchineseolderadultswithsubjectivecognitivedeclinealongitudinalstudy