Suttapanit Karn, Lerdpaisarn Peeraya, Sanguanwit Pitsucha, Supatanakij Praphaphorn
Department of Emergency Medicine, Faculty of Medicine Ramathibodi Hospital, Mahidol University, Bangkok, Thailand.
Open Access Emerg Med. 2023 Oct 4;15:355-365. doi: 10.2147/OAEM.S430600. eCollection 2023.
Most patients with coronavirus disease 2019 (COVID-19) pneumonia require oxygen therapy, including standard oxygen therapy and a high-flow nasal cannula (HFNC), in the Emergency Department (ED), and some patients develop respiratory failure. In the COVID-19 pandemic, the intensive care unit (ICU) was overburdening. Therefore, prioritizing patients who require intensive care is important. This study aimed to find predictors and develop a model to predict patients at risk of requiring an invasive mechanical ventilator (IMV) in the ED.
We performed a retrospective, single-center, observational study. Patients aged ≥18 years who were diagnosed with COVID-19 and required oxygen therapy in the ED were enrolled. Cox regression and Harrell's C-statistic were used to identifying predictors of requiring IMV. The predictive model was developed by calculated coefficients and the ventilator-free survival probability. The predictive model was internally validated using the bootstrapping method.
We enrolled 333 patients, and 97 (29.1%) had required IMV. Most 66 (68.0%) failure cases were initial oxygen therapy with HFNC. Respiratory rate-oxygenation (ROX) index, interleukin-6 (IL-6) concentrations ≥20 pg/mL, the SOFA (Sequential Organ Failure Assessment) score without a respiratory score, and the patient's age were independent risk factors of requiring IMV. These factors were used to develop the predictive model. ROX index and the predictive model at 2 hours showed a good performance to predict oxygen therapy failure; the c-statistic was 0.814 (95% confidence level [CI] 0.767-0.861) and 0.901 (95% CI 0.873-0.928), respectively. ROX index ≤5.1 and the predictive model score ≥8 indicated a high probability of requiring IMV.
The COVID-19 pandemic was limited resources, ROX index, IL-6 ≥20 pg/mL, the SOFA score without a respiratory score, and the patient's age can be used to predict oxygen therapy failure. Moreover, the predictive model is good at discriminating patients at risk of requiring IMV and close monitoring.
大多数2019冠状病毒病(COVID-19)肺炎患者在急诊科(ED)需要氧疗,包括标准氧疗和高流量鼻导管(HFNC)氧疗,部分患者会发展为呼吸衰竭。在COVID-19大流行期间,重症监护病房(ICU)负担过重。因此,对需要重症监护的患者进行优先排序很重要。本研究旨在寻找预测因素并建立一个模型,以预测急诊科有创机械通气(IMV)需求风险的患者。
我们进行了一项回顾性、单中心观察性研究。纳入年龄≥18岁、确诊为COVID-19且在急诊科需要氧疗的患者。采用Cox回归和Harrell's C统计量来确定需要IMV的预测因素。通过计算系数和无呼吸机生存概率来建立预测模型。使用自抽样法对预测模型进行内部验证。
我们纳入了333例患者,其中97例(29.1%)需要IMV。大多数66例(68.0%)失败病例最初采用HFNC进行氧疗。呼吸频率-氧合(ROX)指数、白细胞介素-6(IL-6)浓度≥20 pg/mL、不包括呼吸评分的序贯器官衰竭评估(SOFA)评分以及患者年龄是需要IMV的独立危险因素。利用这些因素建立了预测模型。ROX指数和2小时时的预测模型在预测氧疗失败方面表现良好;C统计量分别为0.814(95%置信区间[CI] 0.767-0.861)和0.901(95%CI 0.873-0.928)。ROX指数≤5.1且预测模型评分≥8表明需要IMV的可能性很高。
在COVID-19大流行期间资源有限的情况下,ROX指数、IL-6≥20 pg/mL、不包括呼吸评分的SOFA评分以及患者年龄可用于预测氧疗失败。此外,该预测模型善于识别有IMV需求风险的患者并进行密切监测。