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基于列线图的老年人死亡风险预测模型的开发与验证

The development and validation of a nomogram-based risk prediction model for mortality among older adults.

作者信息

Duan Jun, Wang MingXia, Sam Napoleon Bellua, Tian Qin, Zheng TingTing, Chen Yun, Deng XiaoMei, Liu Yan

机构信息

Department of Medical Record Statistics, Peking University Shenzhen Hospital, Shenzhen, China.

Department of Stomatology, Luohu Hospital of Traditional Chinese Medicine, Shenzhen, China.

出版信息

SSM Popul Health. 2024 Jan 6;25:101605. doi: 10.1016/j.ssmph.2024.101605. eCollection 2024 Mar.

Abstract

OBJECTIVE

This research aims to construct and authenticate a comprehensive predictive model for all-cause mortality, based on a multifaceted array of risk factors.

METHODS

The derivation cohort for this study was the Chinese Longitudinal Healthy Longevity Survey (CLHLS), while the Healthy Ageing and Biomarkers Cohort Study (HABCS) and the China Health and Retirement Longitudinal Study (CHARLS) were used as validation cohorts. Risk factors were filtered using lasso regression, and predictive factors were determined using net reclassification improvement. Cox proportional hazards models were employed to establish the mortality risk prediction equations, and the model's fit was evaluated using a discrimination concordance index (C-index). To evaluate the internal consistency of discrimination and calibration, a 10x10 cross-validation technique was employed. Calibration plots were generated to compare predicted probabilities with observed probabilities. The prediction ability of the equations was demonstrated using nomogram.

RESULTS

The CLHLS (mean age 88.08, n = 37074) recorded 28158 deaths (179683 person-years) throughout the course of an 8-20 year follow-up period. Additionally, there were 1384 deaths in the HABCS (mean age 86.74, n = 2552), and 1221 deaths in the CHARLS (mean age 72.48, n = 4794). The final all-cause mortality model incorporated demographic characteristics like age, sex, and current marital status, as well as functional status indicators including cognitive function and activities of daily living. Additionally, lifestyle factors like past smoking condition and leisure activities including housework, television viewing or radio listening, and gardening work were included. The C-index for the derivation cohort was 0.728 (95% CI: 0.724-0.732), while the external validation results for the CHARS and HABCS cohorts were 0.761 (95% CI: 0.749-0.773) and 0.713 (95% CI: 0.697-0.729), respectively.

CONCLUSION

This study introduces a reliable, validated, and acceptable mortality risk predictor for older adults in China. These predictive factors have potential applications in public health policy and clinical practice.

摘要

目的

本研究旨在基于多方面的风险因素构建并验证一个全因死亡率的综合预测模型。

方法

本研究的推导队列是中国老年健康影响因素跟踪调查(CLHLS),而健康老龄化与生物标志物队列研究(HABCS)和中国健康与养老追踪调查(CHARLS)被用作验证队列。使用套索回归筛选风险因素,并使用净重新分类改善来确定预测因素。采用Cox比例风险模型建立死亡风险预测方程,并使用鉴别一致性指数(C指数)评估模型的拟合度。为了评估鉴别和校准的内部一致性,采用了10×10交叉验证技术。生成校准图以比较预测概率和观察概率。使用列线图展示方程的预测能力。

结果

在8至20年的随访期内,CLHLS(平均年龄88.08岁,n = 37074)记录了28158例死亡(179683人年)。此外,HABCS中有1384例死亡(平均年龄86.74岁,n = 2552),CHARLS中有1221例死亡(平均年龄72.48岁,n = 4794)。最终的全因死亡率模型纳入了年龄、性别和当前婚姻状况等人口统计学特征,以及包括认知功能和日常生活活动在内的功能状态指标。此外,还包括过去吸烟状况等生活方式因素以及家务、看电视或听广播、园艺工作等休闲活动。推导队列的C指数为0.728(95%CI:0.724 - 0.732),而CHARLS和HABCS队列的外部验证结果分别为0.761(95%CI:0.749 - 0.773)和0.713(95%CI:0.697 - 0.729)。

结论

本研究为中国老年人引入了一个可靠、经过验证且可接受的死亡风险预测指标。这些预测因素在公共卫生政策和临床实践中具有潜在应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4f3e/10825771/fa6185c4fbee/gr1.jpg

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