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预测急诊 ICU 收治和死亡:六种早期预警评分的比较。

Predicting ICU admission and death in the Emergency Department: A comparison of six early warning scores.

机构信息

Emergency Department, Fondazione Policlinico Universitario A. Gemelli, IRCCS, Roma, Italy; Università Cattolica del Sacro Cuore, Roma, Italy.

Università Cattolica del Sacro Cuore, Roma, Italy; Department of Anaesthesiology and Intensive Care Medicine, Fondazione Policlinico Universitario A. Gemelli, IRCCS, Roma, Italy.

出版信息

Resuscitation. 2023 Sep;190:109876. doi: 10.1016/j.resuscitation.2023.109876. Epub 2023 Jun 17.

Abstract

AIM

To compare the ability of the most used Early Warning Scores (EWS) to identify adult patients at risk of poor outcomes in the emergency department (ED).

METHODS

Single-center, retrospective observational study. We evaluated the digital records of consecutive ED admissions in patients ≥ 18 years from 2010 to 2019 and calculated NEWS, NEWS2, MEWS, RAPS, REMS, and SEWS based on parameters measured on ED arrival. We assessed the discrimination and calibration performance of each EWS in predicting death/ICU admission within 24 hours using ROC analysis and visual calibration. We also measured the relative weight of clinical and physiological derangements that identified patients missed by EWS risk stratification using neural network analysis.

RESULTS

Among 225,369 patients assessed in the ED during the study period, 1941 (0.9%) were admitted to ICU or died within 24 hours. NEWS was the most accurate predictor (area under the receiver operating characteristic [AUROC] curve 0.904 [95% CI 0.805-0.913]), followed by NEWS2 (AUROC 0.901). NEWS was also well calibrated. In patients judged at low risk (NEWS < 2), 359 events occurred (18.5% of the total). Neural network analysis revealed that age, systolic BP, and temperature had the highest relative weight for these NEWS-unpredicted events.

CONCLUSIONS

NEWS is the most accurate EWS for predicting the risk of death/ICU admission within 24 h from ED arrival. The score also had a fair calibration with few events occurring in patients classified at low risk. Neural network analysis suggests the need for further improvements by focusing on the prompt diagnosis of sepsis and the development of practical tools for the measurement of the respiratory rate.

摘要

目的

比较目前最常用的早期预警评分(EWS)在识别急诊科(ED)中预后不良的成年患者的能力。

方法

单中心回顾性观察性研究。我们评估了 2010 年至 2019 年期间连续入组的 ED 成年患者(≥18 岁)的数字记录,并根据 ED 到达时测量的参数计算了 NEWS、NEWS2、MEWS、RAPS、REMS 和 SEWS。我们使用 ROC 分析和视觉校准评估了每种 EWS 在预测 24 小时内死亡/入住 ICU 的鉴别和校准性能。我们还使用神经网络分析测量了识别 EWS 风险分层遗漏患者的临床和生理紊乱的相对权重。

结果

在研究期间 ED 评估的 225369 名患者中,1941 名(0.9%)在 24 小时内入住 ICU 或死亡。NEWS 是最准确的预测指标(接受者操作特征曲线下面积[AUROC]为 0.904[95%CI 0.805-0.913]),其次是 NEWS2(AUROC 为 0.901)。NEWS 也具有良好的校准能力。在判断为低危(NEWS<2)的患者中,有 359 例(总事件的 18.5%)发生了事件。神经网络分析显示,年龄、收缩压和体温对这些 NEWS 无法预测的事件具有最高的相对权重。

结论

NEWS 是预测 ED 到达后 24 小时内死亡/入住 ICU 风险最准确的 EWS。该评分的校准也较好,低危患者分类中发生的事件较少。神经网络分析表明,需要通过关注脓毒症的快速诊断和开发实用的呼吸频率测量工具来进一步改进。

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