泰国北部老年人虚弱分类的机器学习模型:模型开发和验证研究。

IF 5 Q1 GERIATRICS & GERONTOLOGY
JMIR Aging Pub Date : 2025-04-02 DOI:10.2196/62942
Natthanaphop Isaradech, Wachiranun Sirikul, Nida Buawangpong, Penprapa Siviroj, Amornphat Kitro
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引用次数: 0

摘要

背景:虚弱被定义为一种临床状态,当暴露于急性应激源时,由于年龄相关的个体身体功能下降,导致发病率和死亡率增加,从而导致脆弱性增加。早期识别和管理可以使身体虚弱的人重新变得强壮。然而,尽管在全球和亚洲有大量使用机器学习进行虚弱评估的证据,但我们发现泰国没有将机器学习(ML)工具与虚弱筛查和监测研究相结合。目的:我们提出了一种早期诊断泰国社区居住老年人虚弱的方法,使用从个人特征和人体测量数据生成的ML模型。方法:使用2016年至2017年南邦2692名泰国社区老年人的数据集进行模型开发和内部验证。从2021年开始,用清迈社区居住的老年人数据集对导出的模型进行了外部验证。本研究实现的机器学习算法包括k近邻算法、随机森林机器学习算法、多层感知器人工神经网络、逻辑回归模型、梯度增强分类器和线性支持向量机分类器。结果:Logistic回归结果显示,在内部验证数据集中,受试者工作特征曲线下的平均面积为0.81 (95% CI为0.75-0.86),在外部验证数据集中,受试者工作特征曲线下的平均面积为0.75 (95% CI为0.71-0.78)。该模型也被很好地校准到外部验证数据集的预期概率。结论:我们的研究结果表明,我们的模型有潜力作为一种筛选工具,在泰国社区居住的老年人中使用简单、可获取的人口统计学和可解释的临床变量来识别需要早期干预以变得身体强壮的虚弱个体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models for Frailty Classification of Older Adults in Northern Thailand: Model Development and Validation Study.

Background: Frailty is defined as a clinical state of increased vulnerability due to the age-associated decline of an individual's physical function resulting in increased morbidity and mortality when exposed to acute stressors. Early identification and management can reverse individuals with frailty to being robust once more. However, we found no integration of machine learning (ML) tools and frailty screening and surveillance studies in Thailand despite the abundance of evidence of frailty assessment using ML globally and in Asia.

Objective: We propose an approach for early diagnosis of frailty in community-dwelling older individuals in Thailand using an ML model generated from individual characteristics and anthropometric data.

Methods: Datasets including 2692 community-dwelling Thai older adults in Lampang from 2016 and 2017 were used for model development and internal validation. The derived models were externally validated with a dataset of community-dwelling older adults in Chiang Mai from 2021. The ML algorithms implemented in this study include the k-nearest neighbors algorithm, random forest ML algorithms, multilayer perceptron artificial neural network, logistic regression models, gradient boosting classifier, and linear support vector machine classifier.

Results: Logistic regression showed the best overall discrimination performance with a mean area under the receiver operating characteristic curve of 0.81 (95% CI 0.75-0.86) in the internal validation dataset and 0.75 (95% CI 0.71-0.78) in the external validation dataset. The model was also well-calibrated to the expected probability of the external validation dataset.

Conclusions: Our findings showed that our models have the potential to be utilized as a screening tool using simple, accessible demographic and explainable clinical variables in Thai community-dwelling older persons to identify individuals with frailty who require early intervention to become physically robust.

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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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