Department of Endocrinology and Nutrition, Albacete University Hospital Complex, Albacete, Spain.
Department of Internal Medicine, Albacete University Hospital Complex, Albacete, Spain.
Curr Med Res Opin. 2021 May;37(5):719-726. doi: 10.1080/03007995.2021.1891036. Epub 2021 Mar 12.
COVID-19 has a wide range of symptoms reported, which may vary from very mild cases (even asymptomatic) to deadly infections. Identifying high mortality risk individuals infected with the SARS-CoV-2 virus through a prediction instrument that uses simple clinical and analytical parameters at admission can help clinicians to focus on treatment efforts in this group of patients.
Data was obtained retrospectively from the electronic medical record of all COVID-19 patients hospitalized in the Albacete University Hospital Complex until July 2020. Patients were split into two: a generating and a validating cohort. Clinical, demographical and laboratory variables were included. A multivariate logistic regression model was used to select variables associated with in-hospital mortality in the generating cohort. A numerical and subsequently a categorical score according to mortality were constructed (A: mortality from 0% to 5%; B: from 5% to 15%; C: from 15% to 30%; D: from 30% to 50%; E: greater than 50%). These scores were validated with the validation cohort.
Variables independently related to mortality during hospitalization were age, diabetes mellitus, confusion, SaFiO2, heart rate and lactate dehydrogenase (LDH) at admission. The numerical score defined ranges from 0 to 13 points. Scores included are: age ≥71 years (3 points), diabetes mellitus (1 point), confusion (2 points), onco-hematologic disease (1 point), SaFiO2 ≤ 419 (3 points), heart rate ≥ 100 bpm (1 point) and LDH ≥ 390 IU/L (2 points). The area under the curve (AUC) for the numerical and categorical scores from the generating cohort were 0.8625 and 0.848, respectively. In the validating cohort, AUCs were 0.8505 for the numerical score and 0.8313 for the categorical score.
Data analysis found a correlation between clinical admission parameters and in-hospital mortality for COVID-19 patients. This correlation is used to develop a model to assist physicians in the emergency department in the COVID-19 treatment decision-making process.
COVID-19 有广泛报道的症状,从非常轻微的病例(甚至无症状)到致命感染都有。通过使用入院时简单的临床和分析参数的预测工具,识别感染 SARS-CoV-2 病毒的高死亡率个体,可以帮助临床医生将治疗重点放在这组患者上。
从 2020 年 7 月之前 Albacete 大学医院综合大楼所有 COVID-19 住院患者的电子病历中获得回顾性数据。患者分为两组:生成组和验证组。纳入临床、人口统计学和实验室变量。使用多变量逻辑回归模型选择与生成组住院死亡率相关的变量。根据死亡率构建数值和随后的分类评分(A:死亡率为 0%至 5%;B:5%至 15%;C:15%至 30%;D:30%至 50%;E:大于 50%)。使用验证组对这些评分进行验证。
与住院期间死亡率独立相关的变量是年龄、糖尿病、意识模糊、SaFiO2、心率和乳酸脱氢酶(LDH)入院时。数值评分定义范围从 0 到 13 分。评分包括:年龄≥71 岁(3 分)、糖尿病(1 分)、意识模糊(2 分)、肿瘤血液疾病(1 分)、SaFiO2≤419(3 分)、心率≥100 bpm(1 分)和 LDH≥390 IU/L(2 分)。生成组的数值评分和分类评分的曲线下面积(AUC)分别为 0.8625 和 0.848。验证组的数值评分 AUC 为 0.8505,分类评分 AUC 为 0.8313。
数据分析发现 COVID-19 患者入院时的临床参数与住院死亡率之间存在相关性。这种相关性用于开发一种模型,以帮助急诊科医生在 COVID-19 治疗决策过程中进行决策。