Division of General Internal Medicine, Department of Internal Medicine, Faculty of Medicine, Hacettepe University, Ankara, Turkey.
Department of Internal Medicine, Faculty of Medicine, Hacettepe University, Ankara, Turkey.
Intern Emerg Med. 2022 Aug;17(5):1413-1424. doi: 10.1007/s11739-022-02962-6. Epub 2022 May 20.
One of the most helpful strategies to deal with ongoing coronavirus pandemics is to use some prudence when treating patients infected with SARS-CoV-2. We aimed to evaluate the clinical, demographic, and laboratory parameters that might have predictive value for in-hospital mortality and the need for intensive care and build a model based on them. This study was a prospective, observational, single-center study including non-critical patients admitted to COVID-19 wards. Besides classical clinic-demographic features, basic laboratory parameters obtained on admission were tested, and then new models for each outcome were developed built on the most significant variables. Receiver operating characteristics (ROC) analyses were performed by calculating each model's probability. A total of 368 non-critical hospitalized patients were recruited, the need for ICU care was observed in 70 patients (19%). The total number of patients who died in either ICU or wards was 39 (10.6%). The first two models (based on clinical features and demographics) were developed to predict ICU and death, respectively; older age, male sex, active cancer, and low baseline saturation were noted to be independent predictors. The area under the curve values of the first two models were noted 0.878 and 0.882 (p < .001; confidence interval [CI] 95% [0.837-0.919], p < .001; CI 95% [0.844-0.922]). Following two models, the third and fourth were based on laboratory parameters with clinic-demographic features. Initial lower sodium and lower albumin levels were determined as independent factors in predicting the need for ICU care; higher blood urea nitrogen and lower albumin were independent factors in predicting in-hospital mortality. The area under the curve values of the third and fourth model was noted 0.938 and 0.929, respectively (p < .001; CI 95% [0.912-0.965], p < .001; CI 95% [0.895-962]). By integrating the widely available blood tests results with simple clinic demographic data, non-critical patients can be stratified according to their risk level. Such stratification is essential to filter the patients' non-critical underlying diseases and conditions that can obfuscate the physician's predictive capacity.
应对持续的冠状病毒大流行的最有效策略之一是在治疗感染 SARS-CoV-2 的患者时谨慎行事。我们旨在评估可能对住院死亡率和需要重症监护具有预测价值的临床、人口统计学和实验室参数,并在此基础上建立一个模型。本研究为前瞻性、观察性、单中心研究,包括入住 COVID-19 病房的非危重症患者。除了经典的临床人口统计学特征外,还检测了入院时获得的基本实验室参数,然后基于最显著的变量为每个结果建立新的模型。通过计算每个模型的概率进行接收者操作特征 (ROC) 分析。共纳入 368 名非危重症住院患者,70 名患者(19%)需要入住 ICU 治疗。在 ICU 或病房死亡的总患者人数为 39 人(10.6%)。前两个模型(基于临床特征和人口统计学特征)分别用于预测 ICU 和死亡;年龄较大、男性、活动性癌症和基线饱和度较低被认为是独立的预测因素。前两个模型的曲线下面积值分别为 0.878 和 0.882(p <.001;95%置信区间 [CI] [0.837-0.919],p <.001;CI 95% [0.844-0.922])。在这两个模型之后,第三个和第四个模型基于具有临床人口统计学特征的实验室参数。初始较低的钠和白蛋白水平被确定为预测需要 ICU 护理的独立因素;较高的血尿素氮和较低的白蛋白是预测住院死亡率的独立因素。第三个和第四个模型的曲线下面积值分别为 0.938 和 0.929(p <.001;95%置信区间 [CI] [0.912-0.965],p <.001;CI 95% [0.895-962])。通过将广泛可用的血液检查结果与简单的临床人口统计学数据相结合,可以根据风险水平对非危重症患者进行分层。这种分层对于筛选可能混淆医生预测能力的患者潜在的非危急疾病和状况至关重要。