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快速预测 COVID-19 成年患者的院内死亡率。

Rapid prediction of in-hospital mortality among adults with COVID-19 disease.

机构信息

San Francisco Coordinating Center, California Pacific Medical Center Research Institute, Sutter Health, San Francisco, California, United States of America.

Division of Endocrinology, Department of Internal Medicine, Yongin Severance Hospital, Yonsei University College of Medicine, Yongin, South Korea.

出版信息

PLoS One. 2022 Jul 29;17(7):e0269813. doi: 10.1371/journal.pone.0269813. eCollection 2022.

Abstract

BACKGROUND

We developed a simple tool to estimate the probability of dying from acute COVID-19 illness only with readily available assessments at initial admission.

METHODS

This retrospective study included 13,190 racially and ethnically diverse adults admitted to one of the New York City Health + Hospitals (NYC H+H) system for COVID-19 illness between March 1 and June 30, 2020. Demographic characteristics, simple vital signs and routine clinical laboratory tests were collected from the electronic medical records. A clinical prediction model to estimate the risk of dying during the hospitalization were developed.

RESULTS

Mean age (interquartile range) was 58 (45-72) years; 5421 (41%) were women, 5258 were Latinx (40%), 3805 Black (29%), 1168 White (9%), and 2959 Other (22%). During hospitalization, 2,875 were (22%) died. Using separate test and validation samples, machine learning (Gradient Boosted Decision Trees) identified eight variables-oxygen saturation, respiratory rate, systolic and diastolic blood pressures, pulse rate, blood urea nitrogen level, age and creatinine-that predicted mortality, with an area under the ROC curve (AUC) of 94%. A score based on these variables classified 5,677 (46%) as low risk (a score of 0) who had 0.8% (95% confidence interval, 0.5-1.0%) risk of dying, and 674 (5.4%) as high-risk (score ≥ 12 points) who had a 97.6% (96.5-98.8%) risk of dying; the remainder had intermediate risks. A risk calculator is available online at https://danielevanslab.shinyapps.io/Covid_mortality/.

CONCLUSIONS

In a diverse population of hospitalized patients with COVID-19 illness, a clinical prediction model using a few readily available vital signs reflecting the severity of disease may precisely predict in-hospital mortality in diverse populations and can rapidly assist decisions to prioritize admissions and intensive care.

摘要

背景

我们开发了一种简单的工具,仅通过初始入院时的可获得评估来估计急性 COVID-19 疾病死亡的概率。

方法

这项回顾性研究纳入了 2020 年 3 月 1 日至 6 月 30 日期间在纽约市健康与医院(NYC H+H)系统中因 COVID-19 疾病入院的 13190 名不同种族和族裔的成年人。从电子病历中收集人口统计学特征、简单生命体征和常规临床实验室检查结果。开发了一种用于估计住院期间死亡风险的临床预测模型。

结果

平均年龄(四分位距)为 58(45-72)岁;5421 名(41%)为女性,5258 名为拉丁裔(40%),3805 名为黑人(29%),1168 名为白人(9%),2959 名为其他族裔(22%)。住院期间,2875 人(22%)死亡。使用单独的测试和验证样本,机器学习(梯度提升决策树)确定了八个变量-氧饱和度、呼吸频率、收缩压和舒张压、脉搏率、血尿素氮水平、年龄和肌酐-这些变量可以预测死亡率,ROC 曲线下面积(AUC)为 94%。基于这些变量的分数将 5677 人(46%)分类为低风险(分数为 0),其死亡风险为 0.8%(95%置信区间,0.5-1.0%),674 人(5.4%)为高风险(分数≥12 分),其死亡风险为 97.6%(96.5-98.8%);其余的风险处于中等水平。一个风险计算器可在 https://danielevanslab.shinyapps.io/Covid_mortality/ 上在线获得。

结论

在患有 COVID-19 疾病的住院患者的多样化人群中,使用反映疾病严重程度的少数易于获得的生命体征的临床预测模型可以精确预测不同人群的住院死亡率,并可以快速帮助决策优先考虑入院和重症监护。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fba7/9337639/d2df375322fe/pone.0269813.g001.jpg

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