Center for Tobacco Research and Intervention (UW-CTRI), University of Wisconsin School of Medicine and Public Health, 1930 Monroe St #200, Madison, WI, 53711, USA.
Department of Medicine, School of Medicine and Public Health, University of Wisconsin, Madison, WI, USA.
Sci Rep. 2023 Mar 11;13(1):4080. doi: 10.1038/s41598-023-31251-1.
It is vital to determine how patient characteristics that precede COVID-19 illness relate to COVID-19 mortality. This is a retrospective cohort study of patients hospitalized with COVID-19 across 21 healthcare systems in the US. All patients (N = 145,944) had COVID-19 diagnoses and/or positive PCR tests and completed their hospital stays from February 1, 2020 through January 31, 2022. Machine learning analyses revealed that age, hypertension, insurance status, and healthcare system (hospital site) were especially predictive of mortality across the full sample. However, multiple variables were especially predictive in subgroups of patients. The nested effects of risk factors such as age, hypertension, vaccination, site, and race accounted for large differences in mortality likelihood with rates ranging from about 2-30%. Subgroups of patients are at heightened risk of COVID-19 mortality due to combinations of preadmission risk factors; a finding of potential relevance to outreach and preventive actions.
确定 COVID-19 发病前的患者特征与 COVID-19 死亡率之间的关系至关重要。这是一项在美国 21 个医疗保健系统中对 COVID-19 住院患者进行的回顾性队列研究。所有患者(N=145944)均有 COVID-19 诊断和/或阳性 PCR 检测结果,并于 2020 年 2 月 1 日至 2022 年 1 月 31 日期间完成住院治疗。机器学习分析显示,年龄、高血压、保险状况和医疗保健系统(医院地点)在全样本中对死亡率具有特别强的预测能力。然而,多个变量在患者亚组中具有特别强的预测能力。危险因素(如年龄、高血压、疫苗接种、地点和种族)的嵌套效应导致死亡率的可能性存在较大差异,比率在 2%至 30%之间不等。由于入院前危险因素的组合,某些患者亚组 COVID-19 死亡率升高;这一发现可能与外联和预防措施有关。