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The competing risk between in-hospital mortality and recovery: A pitfall in COVID-19 survival analysis research

Oulhaj, A.; Ahmed, L. A.; Prattes, J.; Suliman, A.; Al Suwaidi, A.; Al-Rifai, R. H.; Sourij, H.; Van Keilegom, I.

2020-07-14 infectious diseases
10.1101/2020.07.11.20151472 medRxiv
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BackgroundA plethora of studies on COVID-19 investigating mortality and recovery have used the Cox Proportional Hazards (Cox PH) model without taking into account the presence of competing risks. We investigate, through extensive simulations, the bias in estimating the hazard ratio (HR) and the absolute risk reduction (ARR) of death when competing risks are ignored, and suggest an alternative method. MethodsWe simulated a fictive clinical trial on COVID-19 mimicking studies investigating interventions such as Hydroxychloroquine, Remdesivir, or convalescent plasma. The outcome is time from randomization until death. Six scenarios for the effect of treatment on death and recovery were considered. The HR and the 28-day ARR of death were estimated using the Cox PH and the Fine and Gray (FG) models. Estimates were then compared with the true values, and the magnitude of misestimation was quantified. ResultsThe Cox PH model misestimated the true HR and the 28-day ARR of death in the majority of scenarios. The magnitude of misestimation increased when recovery was faster and/or chance of recovery was higher. In some scenarios, this model has shown harmful treatment effect when it was beneficial. Estimates obtained from FG model were all consistent and showed no misestimation or changes in direction. ConclusionThere is a substantial risk of misleading results in COVID-19 research if recovery and death due to COVID-19 are not considered as competing risk events. We strongly recommend the use of a competing risk approach to re-analyze relevant published data that have used the Cox PH model.

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