Résumé:
Objective To develop and validate a prediction model
of mortality in patients with COVID-19 attending hospital
emergency rooms.
Design Multivariable prognostic prediction model.
Setting 127 Spanish hospitals.
Participants Derivation (DC) and external validation
(VC) cohorts were obtained from multicentre and singlecentre databases, including 4035 and 2126 patients with
confirmed COVID-19, respectively.
Interventions Prognostic variables were identified
using multivariable logistic regression.
Main outcome measures 30-day mortality.
Results Patients¿ characteristics in the DC and VC
were median age 70 and 61 years, male sex 61.0%
and 47.9%, median time from onset of symptoms to
admission 5 and 8 days, and 30-day mortality 26.6%
and 15.5%, respectively. Age, low age-adjusted
saturation of oxygen, neutrophil-to-lymphocyte ratio,
estimated glomerular filtration rate by the Chronic
Kidney Disease Epidemiology Collaboration (CKDEPI) equation, dyspnoea and sex were the strongest
predictors of mortality. Calibration and discrimination
were satisfactory with an area under the receiver
operating characteristic curve with a 95% CI for
prediction of 30-day mortality of 0.822 (0.806¿0.837) in
the DC and 0.845 (0.819¿0.870) in the VC. A simplified
score system ranging from 0 to 30 to predict 30-day
mortality was also developed. The risk was considered to
be low with 0¿2 points (0%¿2.1%), moderate with 3¿5
(4.7%¿6.3%), high with 6¿8 (10.6%¿19.5%) and very
high with 9¿30 (27.7%¿100%).
Conclusions A simple prediction score, based on
readily available clinical and laboratory data, provides a
useful tool to predict 30-day mortality probability with
a high degree of accuracy among hospitalised patients
with COVID-19.