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基于贝叶斯网络分析的日本社区老年人衰弱的识别与预测:一项横断面和纵向研究。

Identification and prediction of frailty among community-dwelling older Japanese adults based on Bayesian network analysis: a cross-sectional and longitudinal study.

作者信息

Yang Mengjiao, Liu Yang, Miura Kumi Watanabe, Matsumoto Munenori, Jiao Dandan, Zhu Zhu, Li Xiang, Cui Mingyu, Zhang Jinrui, Qian Meiling, Huang Lujiao, Anme Tokie

机构信息

Graduate School of Comprehensive Human Science, University of Tsukuba, Tsukuba, Japan.

Department of Cardiovascular Surgery. Affiliated Hospital of North Sichuan Medical College, Nanchong, 637000, China.

出版信息

BMC Public Health. 2024 Aug 7;24(1):2141. doi: 10.1186/s12889-024-19697-y.

Abstract

BACKGROUND

Frailty is a multifactorial syndrome; through this study, we aimed to investigate the physiological, psychological, and social factors associated with frailty and frailty worsening in community-dwelling older adults.

METHODS

We conducted a cross-sectional and longitudinal study using data from the "Community Empowerment and Well-Being and Healthy Long-term Care: Evidence from a Cohort Study (CEC)," which focuses on community dwellers aged 65 and above in Japan. The sample of the cross-sectional study was drawn from a CEC study conducted in 2014 with a total of 673 participants. After excluding those who were frail during the baseline assessment (2014) and at the 3-year follow-up (2017), the study included 373 participants. Frailty assessment was extracted from the Kihon Checklist, while social relationships were assessed using the Social Interaction Index (ISI). Variable selection was performed using Least Absolute Shrinkage and Selection Operator (LASSO) regression and their predictive abilities were tested. Factors associated with frailty status and worsening were identified through the Maximum-min Hillclimb algorithm applied to Bayesian networks (BNs).

RESULTS

At baseline, 14.1% (95 out of 673) participants were frail, and 24.1% (90 out of 373) participants experienced frailty worsening at the 3-years follow up. LASSO regression identified key variables for frailty. For frailty identification (cross-sectional), the LASSO model's AUC was 0.943 (95%CI 0.913-0.974), indicating good discrimination, with Hosmer-Lemeshow (H-L) test p = 0.395. For frailty worsening (longitudinal), the LASSO model's AUC was 0.722 (95%CI 0.656-0.788), indicating moderate discrimination, with H-L test p = 0.26. The BNs found that age, multimorbidity, function status, and social relationships were parent nodes directly related to frailty. It revealed an 85% probability of frailty in individuals aged 75 or older with physical dysfunction, polypharmacy, and low ISI scores; however, if their social relationships and polypharmacy status improve, the probability reduces to 50.0%. In the longitudinal-level frailty worsening model, a 75% probability of frailty worsening in individuals aged 75 or older with declined physical function and ISI scores was noted; however, if physical function and ISI improve, the probability decreases to 25.0%.

CONCLUSION

Frailty and its progression are prevalent among community-dwelling older adults and are influenced by various factors, including age, physical function, and social relationships. BNs facilitate the identification of interrelationships among these variables, quantify the influence of key factors. However, further research is required to validate the proposed model.

摘要

背景

衰弱是一种多因素综合征;通过本研究,我们旨在调查社区居住的老年人中与衰弱及衰弱加重相关的生理、心理和社会因素。

方法

我们使用“社区赋权、福祉与健康长期护理:队列研究证据(CEC)”的数据进行了一项横断面和纵向研究,该研究聚焦于日本65岁及以上的社区居民。横断面研究的样本取自2014年进行的CEC研究,共有673名参与者。在排除基线评估(2014年)和3年随访(2017年)期间衰弱的参与者后,该研究纳入了373名参与者。衰弱评估从基本检查表中提取,而社会关系使用社会互动指数(ISI)进行评估。使用最小绝对收缩和选择算子(LASSO)回归进行变量选择,并测试其预测能力。通过应用于贝叶斯网络(BNs)的最大-最小爬山算法确定与衰弱状态和加重相关的因素。

结果

在基线时,14.1%(673名中的95名)参与者衰弱,在3年随访时有24.1%(373名中的90名)参与者衰弱加重。LASSO回归确定了衰弱的关键变量。对于衰弱识别(横断面),LASSO模型的AUC为0.943(95%CI 0.913 - 0.974),表明具有良好的区分度,Hosmer-Lemeshow(H-L)检验p = 0.395。对于衰弱加重(纵向),LASSO模型的AUC为0.722(95%CI 0.656 - 0.788),表明具有中等区分度,H-L检验p = 0.26。贝叶斯网络发现年龄、多种疾病、功能状态和社会关系是与衰弱直接相关的父节点。它显示身体功能障碍、多种药物治疗且ISI得分低的75岁及以上个体衰弱的概率为85%;然而,如果他们的社会关系和多种药物治疗状态改善,概率降至50.0%。在纵向水平的衰弱加重模型中,身体功能下降且ISI得分低的75岁及以上个体衰弱加重的概率为75%;然而,如果身体功能和ISI改善,概率降至25.0%。

结论

衰弱及其进展在社区居住的老年人中普遍存在,并受多种因素影响,包括年龄、身体功能和社会关系。贝叶斯网络有助于识别这些变量之间的相互关系,量化关键因素的影响。然而,需要进一步研究来验证所提出的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a890/11304620/2997cfcf9bc9/12889_2024_19697_Fig1_HTML.jpg

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