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基于贝叶斯网络分析的社区居住老年人脆弱性识别和预测。

The identification and prediction of frailty based on Bayesian network analysis in a community-dwelling older population.

机构信息

Department of Geriatric Medicine, Fujian Provincial Hospital, Fuzhou, China.

Shengli Clinical Medical College, Fujian Medical University, Fuzhou, China.

出版信息

BMC Geriatr. 2022 Nov 11;22(1):847. doi: 10.1186/s12877-022-03520-7.

Abstract

BACKGROUND

We have witnessed frailty, which characterized by a decline in physiological reserves, become a major public health issue in older adults. Understanding the influential factors associated with frailty may help prevent or if possible reverse frailty. The present study aimed to investigate factors associated with frailty status and frailty transition in a community-dwelling older population.

METHODS

A prospective cohort study on community-dwelling subjects aged ≥ 60 years was conducted, which was registered beforehand (ChiCTR 2,000,032,949). Participants who had completed two visits during 2020-2021 were included. Frailty status was evaluated using the Fried frailty phenotype. The least absolute shrinkage and selection operator (LASSO) regression was applied for variable selection. Bayesian network analysis with the max-min hill-climbing (MMHC) algorithm was used to identify factors related to frailty status and frailty transition.

RESULTS

Of 1,981 subjects at baseline, 1,040 (52.5%) and 165 (8.33%) were classified as prefrailty and frailty. After one year, improved, stable, and worsening frailty status was observed in 460 (35.6%), 526 (40.7%), and 306 (23.7%) subjects, respectively. Based on the variables screened by LASSO regression, the Bayesian network structure suggested that age, nutritional status, instrumental activities of daily living (IADL), balance capacity, and social support were directly related to frailty status. The probability of developing frailty is 14.4% in an individual aged ≥ 71 years, which increases to 20.2% and 53.2% if the individual has balance impairment alone, or combined with IADL disability and malnutrition. At a longitudinal level, ADL/IADL decline was a direct predictor of worsening in frailty state, which further increased the risk of hospitalization. Low high-density lipoprotein cholesterol (HDL-C) and diastolic blood pressure (DBP) levels were related to malnutrition, and further had impacts on ADL/IADL decline, and ultimately led to the worsening of the frailty state. Knowing the status of any one or more of these factors can be used to infer the risk of frailty based on conditional probabilities.

CONCLUSION

Older age, malnutrition, IADL disability, and balance impairment are important factors for identifying frailty. Malnutrition and ADL/IADL decline further predict worsening of the frailty state.

摘要

背景

我们已经见证了衰弱,这一特征表现为生理储备的下降,成为老年人的主要公共健康问题。了解与衰弱相关的影响因素可能有助于预防或在可能的情况下逆转衰弱。本研究旨在调查与社区居住的老年人衰弱状态和衰弱转变相关的因素。

方法

对 2020-2021 年期间完成两次访视的社区居住的年龄≥60 岁的受试者进行了一项前瞻性队列研究,该研究事先进行了注册(ChiCTR2000032949)。采用 Fried 衰弱表型评估衰弱状态。应用最小绝对收缩和选择算子(LASSO)回归进行变量选择。采用最大最小爬山(MMHC)算法的贝叶斯网络分析用于识别与衰弱状态和衰弱转变相关的因素。

结果

在基线时的 1981 名受试者中,52.5%(1040 名)和 8.33%(165 名)被归类为衰弱前期和衰弱。一年后,460 名(35.6%)、526 名(40.7%)和 306 名(23.7%)受试者的衰弱状态分别改善、稳定和恶化。基于 LASSO 回归筛选出的变量,贝叶斯网络结构表明年龄、营养状况、日常生活活动能力(IADL)、平衡能力和社会支持与衰弱状态直接相关。年龄≥71 岁的个体发生衰弱的概率为 14.4%,如果个体仅存在平衡障碍,或合并 IADL 障碍和营养不良,则该概率增加至 20.2%和 53.2%。在纵向水平上,ADL/IADL 下降是衰弱状态恶化的直接预测因子,进一步增加了住院风险。低高密度脂蛋白胆固醇(HDL-C)和舒张压(DBP)水平与营养不良有关,进一步影响 ADL/IADL 下降,最终导致衰弱状态恶化。了解这些因素中的任何一个或多个的状态可以根据条件概率来推断衰弱的风险。

结论

年龄较大、营养不良、IADL 障碍和平衡障碍是识别衰弱的重要因素。营养不良和 ADL/IADL 下降进一步预测衰弱状态的恶化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3dd7/9652858/2e9eecd27b95/12877_2022_3520_Fig1_HTML.jpg

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