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仅使用患者人口统计学、合并症和症状预测与 Covid-19 相关疾病的严重结局。

Predicting severe outcomes in Covid-19 related illness using only patient demographics, comorbidities and symptoms.

机构信息

University of Michigan Medical School, Ann Arbor, MI, USA.

University of Puerto Rico School of Medicine, San Juan, PR, USA.

出版信息

Am J Emerg Med. 2021 Jul;45:378-384. doi: 10.1016/j.ajem.2020.09.017. Epub 2020 Sep 9.

Abstract

OBJECTIVE

Development of a risk-stratification model to predict severe Covid-19 related illness, using only presenting symptoms, comorbidities and demographic data.

MATERIALS AND METHODS

We performed a case-control study with cases being those with severe disease, defined as ICU admission, mechanical ventilation, death or discharge to hospice, and controls being those with non-severe disease. Predictor variables included patient demographics, symptoms and past medical history. Participants were 556 patients with laboratory confirmed Covid-19 and were included consecutively after presenting to the emergency department at a tertiary care center from March 1, 2020 to April 21, 2020 RESULTS: Most common symptoms included cough (82%), dyspnea (75%), and fever/chills (77%), with 96% reporting at least one of these. Multivariable logistic regression analysis found that increasing age (adjusted odds ratio [OR], 1.05; 95% confidence interval [CI], 1.03-1.06), dyspnea (OR, 2.56; 95% CI: 1.51-4.33), male sex (OR, 1.70; 95% CI: 1.10-2.64), immunocompromised status (OR, 2.22; 95% CI: 1.17-4.16) and CKD (OR, 1.76; 95% CI: 1.01-3.06) were significant predictors of severe Covid-19 infection. Hyperlipidemia was found to be negatively associated with severe disease (OR, 0.54; 95% CI: 0.33-0.90). A predictive equation based on these variables demonstrated fair ability to discriminate severe vs non-severe outcomes using only this historical information (AUC: 0.76).

CONCLUSIONS

Severe Covid-19 illness can be predicted using data that could be obtained from a remote screening. With validation, this model could possibly be used for remote triage to prioritize evaluation based on susceptibility to severe disease while avoiding unnecessary waiting room exposure.

摘要

目的

仅使用临床表现、合并症和人口统计学数据开发一种预测严重新冠相关疾病的风险分层模型。

材料和方法

我们进行了一项病例对照研究,病例为重症患者,定义为入住重症监护病房、需要机械通气、死亡或转至临终关怀,对照组为非重症患者。预测变量包括患者人口统计学、症状和既往病史。参与者为 556 名经实验室确诊的新冠患者,于 2020 年 3 月 1 日至 4 月 21 日在一家三级护理中心的急诊科就诊后连续纳入研究。

结果

最常见的症状包括咳嗽(82%)、呼吸困难(75%)和发热/寒战(77%),96%的患者至少有一项这些症状。多变量逻辑回归分析发现,年龄增加(调整后的优势比[OR],1.05;95%置信区间[CI],1.03-1.06)、呼吸困难(OR,2.56;95%CI:1.51-4.33)、男性(OR,1.70;95%CI:1.10-2.64)、免疫功能低下状态(OR,2.22;95%CI:1.17-4.16)和慢性肾脏病(OR,1.76;95%CI:1.01-3.06)是严重新冠感染的显著预测因素。高脂血症与严重疾病呈负相关(OR,0.54;95%CI:0.33-0.90)。基于这些变量的预测方程仅使用这些历史信息就能较好地区分严重和非严重结局(AUC:0.76)。

结论

使用可从远程筛查中获得的数据可以预测严重新冠疾病。经验证后,该模型可用于远程分诊,根据对严重疾病的易感性来优先评估,同时避免不必要的候诊室暴露。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/61b7/7480533/6f103ece9eb8/gr1_lrg.jpg

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