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基于中国长寿纵向研究的基于机器学习的中国老年人孤独风险评估模型的开发:一项横断面研究。

Development of a machine learning-based risk assessment model for loneliness among elderly Chinese: a cross-sectional study based on Chinese longitudinal healthy longevity survey.

机构信息

Jinzhou Medical University, School of Nursing, Jinzhou City, Liaoning Province, 121001, China.

The First Affiliated Hospital of Jinzhou Medical University, Jinzhou City, Liaoning Province, 121001, China.

出版信息

BMC Geriatr. 2024 Nov 14;24(1):939. doi: 10.1186/s12877-024-05443-x.

Abstract

BACKGROUND

Loneliness is prevalent among the elderly and has intensified due to global aging trends. It adversely affects both mental and physical health. Traditional scales for measuring loneliness may yield biased results due to varying definitions. The advancements in machine learning offer new opportunities for improving the measurement and assessment of loneliness through the development of risk assessment models.

METHODS

Data from the 2018 Chinese Longitudinal Healthy Longevity Survey, involving about 16,000 participants aged ≥ 65 years, were used. The study examined the relationships between loneliness and factors such as functional limitations, living conditions, environmental influences, age-related health issues, and health behaviors. Using R 4.4.1, seven assessment models were developed: logistic regression, ridge regression, support vector machines, K-nearest neighbors, decision trees, random forests, and multi-layer perceptron. Models were evaluated based on ROC curves, accuracy, precision, recall, F1 scores, and AUC.

RESULTS

Loneliness prevalence among elderly Chinese was 23.4%. Analysis identified 15 evaluative factors and evaluated seven models. Multi-layer perceptron stands out for its strong nonlinear mapping capability and adaptability to complex data, making it one of the most effective models for assessing loneliness risk.

CONCLUSION

The study found a 23.4% prevalence of loneliness among elderly individuals in China. SHAP values indicated that marital status has the strongest evaluative value across all forecasting periods. Specifically, elderly individuals who are never married, widowed, divorced, or separated are more likely to experience loneliness compared to their married counterparts.

摘要

背景

孤独在老年人中很普遍,并且由于全球老龄化趋势而加剧。它对身心健康都有不良影响。传统的孤独量表可能由于定义的不同而产生有偏差的结果。机器学习的进步为通过开发风险评估模型来改善孤独感的测量和评估提供了新的机会。

方法

使用了来自 2018 年中国长寿纵向研究的数据,涉及约 16000 名年龄在 65 岁及以上的参与者。研究考察了孤独感与功能限制、生活条件、环境影响、与年龄相关的健康问题和健康行为等因素之间的关系。使用 R 4.4.1 开发了七种评估模型:逻辑回归、岭回归、支持向量机、K-最近邻、决策树、随机森林和多层感知器。模型基于 ROC 曲线、准确性、精度、召回率、F1 分数和 AUC 进行评估。

结果

中国老年人孤独感的患病率为 23.4%。分析确定了 15 个评价因素,并评估了七种模型。多层感知器因其强大的非线性映射能力和对复杂数据的适应性而脱颖而出,是评估孤独风险的最有效模型之一。

结论

本研究发现中国老年人孤独感的患病率为 23.4%。SHAP 值表明,在所有预测期内,婚姻状况具有最强的评估价值。具体来说,从未结婚、丧偶、离婚或分居的老年人比已婚同龄人更有可能经历孤独感。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e5db/11562678/2a2874533d7c/12877_2024_5443_Fig1_HTML.jpg

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