探索影响中老年人抑郁症状的关键因素:基于机器学习的方法

IF 3.5 3区 医学 Q2 GERIATRICS & GERONTOLOGY Archives of gerontology and geriatrics Pub Date : 2024-10-02 DOI:10.1016/j.archger.2024.105647
Thu Tran , Yi Zhen Tan , Sapphire Lin , Fang Zhao , Yee Sien Ng , Dong Ma , Jeonggil Ko , Rajesh Balan
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引用次数: 0

摘要

目的:本文旨在利用机器学习技术研究影响中老年人抑郁症状的关键因素,包括人口统计学、社会经济学、身体健康、生活方式、日常活动和孤独感。通过分析确定抑郁症状最重要的预测因素,研究结果可对早期抑郁症的检测和干预产生重要影响:在横断面研究中,我们共招募了 976 名志愿者,重点关注 50 岁及以上的人群。每位参与者都被要求提供他们的人口、社会经济信息,并接受多项身体健康检查。此外,他们还被要求回答评估其精神健康状况的问卷。此外,还要求参与者从报名次日起连续 14 天记录活动日志。他们可以选择使用提供的移动应用程序或纸张来记录自己的活动:我们对多个机器学习模型进行了评估,以找到表现最好的模型。随后,我们进行了事后分析,从选定的模型中提取变量的重要性,以深入了解影响抑郁的因素:我们选择了逻辑回归模型,因为该模型的AUC为0.807 ± 0.038,准确度为0.798 ± 0.048,特异度为0.795 ± 0.061,灵敏度为0.819 ± 0.097,NPV为0.972 ± 0.013,PPV为0.359 ± 0.064。在该模型中发现的影响最大的预测因素包括孤独感、健康指标(即体弱、视力、功能性活动能力)、用于活动的时间(即待在家里、做运动和拜访朋友)以及感知到的收入充足性:这些研究结果可用于识别抑郁症高危人群,并根据影响因素确定干预措施的优先次序。除孤独感、身体健康状况指标和收入充足程度外,用于日常活动的时间也是中老年人抑郁风险的一个重要指标。
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Exploring key factors influencing depressive symptoms among middle-aged and elderly adult population: A machine learning-based method

Objective

This paper aims to investigate the key factors, including demographics, socioeconomics, physical well-being, lifestyle, daily activities and loneliness that can impact depressive symptoms in the middle-aged and elderly population using machine learning techniques. By identifying the most important predictors of depressive symptoms through the analysis, the findings can have important implications for early depression detection and intervention.

Participants

For our cross-sectional study, we recruited a total of 976 volunteers, with a specific focus on individuals aged 50 and above. Each participant was requested to provide their demographic, socioeconomic information and undergo several physical health tests. Additionally, they were asked to respond to questionnaires that assessed their mental well-being. Furthermore, participants were requested to maintain an activity log for a continuous 14-day period, starting from the day after they signed up. They had the option to use either a provided mobile application or paper to record their activities.

Methods

We evaluated multiple machine learning models to find the best-performing one. Subsequently, we conducted post-hoc analysis to extract the variable significance from the selected model to gain deeper insights into the factors influencing depression.

Results

Logistic Regression was chosen as it exhibited superior performance across other models, with AUC of 0.807 ± 0.038, accuracy of 0.798 ± 0.048, specificity of 0.795 ± 0.061, sensitivity of 0.819 ± 0.097, NPV of 0.972 ± 0.013 and PPV of 0.359 ± 0.064. The top influential predictors identified in the model included loneliness, health indicator (i.e. frailty, eyesight, functional mobility), time spent on activities (i.e. staying home, doing exercises and visiting friends) and perceived income adequacy.

Conclusion

These findings have the potential to identify individuals at risk of depression and prioritize interventions based on the influential factors. The amount of time dedicated to daily activities emerges as a significant indicator of depression risk among middle-aged and elderly individuals, along with loneliness, physical health indicators and perceived income adequacy.
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来源期刊
CiteScore
7.30
自引率
5.00%
发文量
198
审稿时长
16 days
期刊介绍: Archives of Gerontology and Geriatrics provides a medium for the publication of papers from the fields of experimental gerontology and clinical and social geriatrics. The principal aim of the journal is to facilitate the exchange of information between specialists in these three fields of gerontological research. Experimental papers dealing with the basic mechanisms of aging at molecular, cellular, tissue or organ levels will be published. Clinical papers will be accepted if they provide sufficiently new information or are of fundamental importance for the knowledge of human aging. Purely descriptive clinical papers will be accepted only if the results permit further interpretation. Papers dealing with anti-aging pharmacological preparations in humans are welcome. Papers on the social aspects of geriatrics will be accepted if they are of general interest regarding the epidemiology of aging and the efficiency and working methods of the social organizations for the health care of the elderly.
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