作者
Carlo Berzuini, Cathal Hannan, Andrew King, Andy Vail, Claire O'Leary, David Brough, James Galea, Kayode Ogungbenro, Megan Wright, Omar Pathmanaban, Sharon Hulme, Stuart Allan, Luisa Bernardinelli, Hiren C Patel
发表日期
2020/9/1
期刊
BMJ open
卷号
10
期号
9
页码范围
e041983
出版商
British Medical Journal Publishing Group
简介
Objectives
Being able to predict which patients with COVID-19 are going to deteriorate is important to help identify patients for clinical and research practice. Clinical prediction models play a critical role in this process, but current models are of limited value because they are typically restricted to baseline predictors and do not always use contemporary statistical methods. We sought to explore the benefits of incorporating dynamic changes in routinely measured biomarkers, non-linear effects and applying ‘state-of-the-art’ statistical methods in the development of a prognostic model to predict death in hospitalised patients with COVID-19.
Design
The data were analysed from admissions with COVID-19 to three hospital sites. Exploratory data analysis included a graphical approach to partial correlations. Dynamic biomarkers were considered up to 5 days following admission rather than depending solely on baseline or …
引用总数
20202021202220231456