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预测住院COVID-19患者氧疗需求、重症监护需求及死亡率的新型评分系统:一种风险分层工具

Novel Scoring Systems to Predict the Need for Oxygenation and ICU Care, and Mortality in Hospitalized COVID-19 Patients: A Risk Stratification Tool.

作者信息

Keri Vishakh C, Jorwal Pankaj, Verma Rohit, Ranjan Piyush, Upadhyay Ashish D, Aggarwal Anivita, Sarda Radhika, Sharma Kunal, Sahni Shubham, Rajanna Chaithra

机构信息

Infectious Diseases, All India Institute of Medical Sciences (AIIMS), New Delhi, IND.

Medicine, All India Institute of Medical Sciences (AIIMS), New Delhi, IND.

出版信息

Cureus. 2022 Jul 29;14(7):e27459. doi: 10.7759/cureus.27459. eCollection 2022 Jul.

Abstract

INTRODUCTION

A rapid surge in cases during the COVID-19 pandemic can overwhelm any healthcare system. It is imperative to triage patients who would require oxygen and ICU care, and predict mortality. Specific parameters at admission may help in identifying them.

METHODOLOGY

A prospective observational study was undertaken in a COVID-19 ward of a tertiary care center. All baseline clinical and laboratory data were captured. Patients were followed till death or discharge. Univariable and multivariable logistic regression was used to find predictors of the need for oxygen, need for ICU care, and mortality. Objective scoring systems were developed for the same using the predictors.

RESULTS

The study included 209 patients. Disease severity was mild, moderate, and severe in 98 (46.9%), 74 (35.4%), and 37 (17.7%) patients, respectively. The neutrophil-to-lymphocyte ratio (NLR) >4 was a common independent predictor of the need for oxygen (p<0.001), need for ICU transfer (p=0.04), and mortality (p=0.06). Clinical risk scores were developed (10c-reactive protein (CRP) + 14.8NLR + 12urea), (10aspartate transaminase (AST) + 15.7NLR + 14.28CRP), (10NLR + 10.1creatinine) which, if ≥14.8, ≥25.7, ≥10.1 predicted need for oxygenation, need for ICU transfer and mortality with a sensitivity and specificity (81.6%, 70%), (73.3%, 75.7%), (61.1%, 75%), respectively.  Conclusion: The NLR, CRP, urea, creatinine, and AST are independent predictors in identifying patients with poor outcomes. An objective scoring system can be used at the bedside for appropriate triaging of patients and utilization of resources.

摘要

引言

在新冠疫情期间病例的迅速激增可能会使任何医疗系统不堪重负。对需要氧气和重症监护病房(ICU)护理的患者进行分诊并预测死亡率至关重要。入院时的特定参数可能有助于识别这些患者。

方法

在一家三级护理中心的新冠病房进行了一项前瞻性观察研究。记录了所有基线临床和实验室数据。对患者进行随访直至死亡或出院。采用单变量和多变量逻辑回归来寻找需要氧气、需要ICU护理和死亡率的预测因素。利用这些预测因素开发了针对上述情况的客观评分系统。

结果

该研究纳入了209名患者。疾病严重程度为轻度、中度和重度的患者分别有98例(46.9%)、74例(35.4%)和37例(17.7%)。中性粒细胞与淋巴细胞比值(NLR)>4是需要氧气(p<0.001)、需要转入ICU(p=0.04)和死亡率(p=0.06)的常见独立预测因素。开发了临床风险评分(10×C反应蛋白(CRP)+14.8×NLR+12×尿素)、(10×天冬氨酸转氨酶(AST)+15.7×NLR+14.28×CRP)、(10×NLR+10.1×肌酐),如果这些评分≥14.8、≥25.7、≥10.1,则分别预测需要氧合、转入ICU和死亡率,其敏感性和特异性分别为(81.6%,70%)、(73.3%,75.7%)、(61.1%,75%)。结论:NLR、CRP、尿素、肌酐和AST是识别预后不良患者的独立预测因素。可在床边使用客观评分系统对患者进行适当分诊并合理利用资源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a30b/9424646/41f5d9fd4103/cureus-0014-00000027459-i01.jpg

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