Modeling clinical trajectory status of critically ill COVID-19 patients over time: A method for analyzing discrete longitudinal and ordinal outcomes.
Michael J WardDavid J DouinWu GongAdit A GindeCatherine L HoughMatthew C ExlineMark W TenfordeWilliam B StubblefieldJay S SteingrubMatthew E PrekkerAkram KhanD Clark FilesKevin W GibbsTodd W RiceJonathan D CaseyDaniel J HenningJennifer G WilsonSamuel M BrownManish M PatelWesley H SelfChristopher John Lindsellnull nullPublished in: Journal of clinical and translational science (2022)
Early in the COVID-19 pandemic, the World Health Organization stressed the importance of daily clinical assessments of infected patients, yet current approaches frequently consider cross-sectional timepoints, cumulative summary measures, or time-to-event analyses. Statistical methods are available that make use of the rich information content of longitudinal assessments. We demonstrate the use of a multistate transition model to assess the dynamic nature of COVID-19-associated critical illness using daily evaluations of COVID-19 patients from 9 academic hospitals. We describe the accessibility and utility of methods that consider the clinical trajectory of critically ill COVID-19 patients.