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一种用于预测中国心力衰竭住院患者出院后死亡率的简单临床风险评分。

A Simple Clinical Risk Score to Predict Post-Discharge Mortality in Chinese Patients Hospitalized with Heart Failure.

机构信息

Departamento de Medicina Geriátrica, the Fourth Medical Center, Chinese PLA General Hospital, Beijng - China.

Departamento de Enfermagem, the Eighth Medical Center, Chinese PLA General Hospital, Beijng - China.

出版信息

Arq Bras Cardiol. 2021 Oct;117(4):615-623. doi: 10.36660/abc.20200435.

Abstract

BACKGROUND

Cardiovascular diseases are the leading causes of death in China. However, present efforts to identify the risk factors for death in patients hospitalized with heart failure (HF) are primarily focused on in-hospital mortality and 30-day mortality in the United States. Thus, a model similar to the model used for predicting the risk in patients considered for cardiovascular surgical procedures is needed to evaluate the risk of the patients admitted with a diagnosis of HF.

OBJECTIVE

To identify variables that can predict post-discharge one-year HF mortality and develop a risk score to assess the risk of dying within one year.

METHODS

In the present study, 1,742 Chinese patients with HF were randomly divided into two groups: a derivation sample group and a test sample group. A Markov Chain Monte Carlo simulation method was used to identify variables that can predict the one-year post-discharge mortality. Variables with a frequency of >1% in the bivariate analysis and that were considered clinically meaningful were eligible for further modeling analyses. The posterior probability that a variable was statistically and significantly associated with the outcome was calculated as the total number of times that the variable's 95% CI did not overlap with 1 (i.e., the reference point) divided by the total number of iterations. A variable with a probability of 0.9 or higher was considered a robust risk factor for predicting the outcome, and this was included in the final variable list. The level of statistical significance adopted was 5%.

RESULTS

Five variables that could robustly predict the one-year post-discharge mortality were identified: age, female gender, New York Heart Association functional classification score >3, left atrial diameter, and body mass index. Both derivation and test models had a receiver operating curve area of 0.79. These selected variables were used to assess the one-year HF mortality risk score, and these were divided into three groups (low, moderate, and high). The high-risk group corresponds to nearly 86% of the deaths, while the moderate group corresponds to 12% of the deaths.

CONCLUSION

A simple 5-variable risk score can be used to assess the one-year post-discharge mortality of hospitalized Chinese patients with HF.

摘要

背景

心血管疾病是中国的主要死亡原因。然而,目前识别因心力衰竭(HF)住院患者死亡风险的努力主要集中在美国的院内死亡率和 30 天死亡率。因此,需要建立一种类似于用于预测考虑心血管手术患者风险的模型,以评估因 HF 住院患者的风险。

目的

确定可预测出院后一年 HF 死亡率的变量,并制定风险评分以评估一年内死亡的风险。

方法

本研究中,1742 例中国 HF 患者被随机分为两组:推导样本组和测试样本组。采用马尔可夫链蒙特卡罗模拟方法识别可预测一年后出院死亡率的变量。在双变量分析中频率大于 1%且被认为具有临床意义的变量有资格进行进一步的模型分析。变量与结果有统计学显著关联的后验概率计算为变量的 95%CI 与 1(即参考点)不重叠的总次数除以总迭代次数。概率为 0.9 或更高的变量被认为是预测结果的稳健风险因素,并包含在最终变量列表中。采用的统计显著性水平为 5%。

结果

确定了 5 个可稳健预测出院后一年死亡率的变量:年龄、女性、纽约心脏协会功能分类评分>3、左心房直径和体重指数。推导和测试模型的接收者操作曲线面积均为 0.79。这些选定的变量用于评估 HF 住院患者一年的死亡率风险评分,并将其分为三组(低、中、高)。高危组接近 86%的死亡,中危组对应 12%的死亡。

结论

一种简单的 5 变量风险评分可用于评估中国 HF 住院患者出院后一年的死亡率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e53c/8528360/c6edac5bb3c3/0066-782X-abc-117-04-0615-gf01.jpg

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