Objective

During the COVID-19 pandemic, dynamic factors such as governmental policies, improved treatment and prevention options and viral mutations changed the incidence of outcomes and possibly changed the relation between predictors and outcomes. The aim of the present study was to assess whether the dynamic context of the pandemic influenced the predictive performance of mortality predictions over time in older patients hospitalised for COVID-19.

Study design and setting

The COVID-OLD study, a multicentre cohort study in the Netherlands, included COVID-19 patients aged 70 years and older hospitalised during the first (early 2020), second (late 2020), third (late 2021) or fourth wave (early 2022). We developed a prediction model for in-hospital mortality that included variables commonly collected at the emergency department with least absolute shrinkage and selection operator (LASSO) regression on patients admitted in the first pandemic wave and temporally validated this model in patients admitted in the second, third or fourth wave.

Results

In total, 3067 patients (median age 79 years, 60% men) were included. The final model included demographics, frailty and indicators of disease severity that were generally available within three hours after admission. The model differentiated between death and alive after hospitalization for COVID-19 with an AUC of 0.80 (95% CI: 0.76-0.84) in the internal validation cohort. In terms of discrimination and calibration, predictive performance of the model decreased over time with an AUC of 0.76 (0.73-0.79) and calibration slope of 0.81 (0.68-0.96) in the second wave, an AUC of 0.77 (0.72-0.82) and calibration slope of 0.85 (0.65-1.10) in the third wave and an AUC of 0.59 (0.48-0.70) and calibration slope of 0.35 (-0.05, 0.72) in the fourth wave.

Conclusion

Compared to the moderate model performance in the first wave, we observed a slight decrease in terms of discrimination and calibration in the second and third wave with a much larger decrease in the fourth wave. This highlights the importance of ongoing data collection, monitoring of model performance and model updates during a pandemic.

Copyright © 2024 The Author(s). Published by Elsevier Inc. All rights reserved.

Overview publication

TitleThe influence of the dynamic context of the pandemic on the predictive performance of mortality predictions over time in older patients hospitalised for COVID-19.
DateDecember 26th, 2024
Issue nameJournal of clinical epidemiology
Issue number:111652
DOI10.1016/j.jclinepi.2024.111652
PubMed39732182
Authorsvan Raaij BFM, Zahra A, Steyerberg EW, de Hond AAH, Smits RAL, van der Klei VMGTH, Polinder-Bos HA, Minnema J, Appelman B, Smorenberg A, Trompet S, Peeters G, van Smeden M, Moons KGM, Gussekloo J, Mooijaart SP & Noordam R
InfoCOOP consortium and COVID-OLD study, Mooijaart SP, Gussekloo J, Polinder-Bos HA, Moons KGM, van Smeden M, Peeters G, Melis RJF, Elders PJM, Festen J, Polinder-Bos HA, van der Linden CMJ, Jansen SWM, Willems HC, van der Bol JM
KeywordsCOVID-19, prediction model, temporal validation
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