Department of Medicine, MedStar Southern Maryland Hospital, Clinton, MD, USA.
London School of Hygiene and Tropical Medicine, London, UK.
Epidemiol Infect. 2020 Nov 13;148:e273. doi: 10.1017/S0950268820002769.
As the COVID-19 pandemic continues to escalate and place pressure on hospital system resources, a proper screening and risk stratification score is essential. We aimed to develop a risk score to identify patients with increased risk of COVID-19, allowing proper identification and allocation of limited resources. A retrospective study was conducted of 338 patients who were admitted to the hospital from the emergency room to regular floors and tested for COVID-19 at an acute care hospital in the Metropolitan Washington D.C. area. The dataset was split into development and validation sets with a ratio of 6:4. Demographics, presenting symptoms, sick contact, triage vital signs, initial laboratory and chest X-ray results were analysed to develop a prediction model for COVID-19 diagnosis. Multivariable logistic regression was performed in a stepwise fashion to develop a prediction model, and a scoring system was created based on the coefficients of the final model. Among 338 patients admitted to the hospital from the emergency room, 136 (40.2%) patients tested positive for COVID-19 and 202 (59.8%) patients tested negative. Sick contact with suspected or confirmed COVID-19 case (3 points), nursing facility residence (3 points), constitutional symptom (1 point), respiratory symptom (1 point), gastrointestinal symptom (1 point), obesity (1 point), hypoxia at triage (1 point) and leucocytosis (-1 point) were included in the prediction score. A risk score for COVID-19 diagnosis achieved area under the receiver operating characteristic curve of 0.87 (95% confidence interval (CI) 0.82-0.92) in the development dataset and 0.85 (95% CI 0.78-0.92) in the validation dataset. A risk prediction score for COVID-19 can be used as a supplemental tool to assist clinical decision to triage, test and quarantine patients admitted to the hospital from the emergency room.
随着 COVID-19 大流行的持续升级,对医院系统资源造成压力,一个适当的筛查和风险分层评分是至关重要的。我们旨在开发一种风险评分来识别 COVID-19 风险增加的患者,以便正确识别和分配有限的资源。我们对在华盛顿特区大都会区一家急症医院从急诊室到普通病房住院并接受 COVID-19 检测的 338 名患者进行了回顾性研究。该数据集分为开发集和验证集,比例为 6:4。分析了人口统计学、临床表现、与患病者接触、分诊生命体征、初始实验室和胸部 X 线结果,以开发 COVID-19 诊断的预测模型。采用逐步多变量逻辑回归方法开发预测模型,并根据最终模型的系数创建评分系统。在从急诊室住院的 338 名患者中,有 136 名(40.2%)患者 COVID-19 检测呈阳性,202 名(59.8%)患者 COVID-19 检测呈阴性。与疑似或确诊 COVID-19 病例有密切接触史(3 分)、疗养院居住(3 分)、全身症状(1 分)、呼吸道症状(1 分)、胃肠道症状(1 分)、肥胖症(1 分)、分诊时缺氧(1 分)和白细胞增多症(-1 分)纳入预测评分。在开发数据集中,COVID-19 诊断风险评分的受试者工作特征曲线下面积为 0.87(95%置信区间 0.82-0.92),在验证数据集中为 0.85(95%置信区间 0.78-0.92)。COVID-19 的风险预测评分可作为辅助临床决策分诊、检测和隔离从急诊室入院的患者的补充工具。