The usefulness of D-dimer as a predictive marker for mortality in patients with COVID-19 hospitalized during the first wave in Italy

Author:

Hassan ShermarkeORCID,Ferrari Barbara,Rossio Raffaella,la Mura Vincenzo,Artoni Andrea,Gualtierotti Roberta,Martinelli Ida,Nobili Alessandro,Bandera Alessandra,Gori Andrea,Blasi FrancescoORCID,Monzani Valter,Costantino Giorgio,Harari Sergio,Rosendaal Frits R.,Peyvandi Flora

Abstract

AbstractBackgroundThe coronavirus disease 2019 (COVID-19) presents an urgent threat to global health. Identification of predictors of poor outcomes will assist medical staff in treatment and allocating limited healthcare resources.AimsThe primary aim was to study the value of D-dimer as a predictive marker for in-hospital mortality.MethodsThis was a cohort study. The study population consisted of hospitalized patients (age >18 years), who were diagnosed with COVID-19 based on real-time PCR at 9 hospitals during the first COVID-19 wave in Lombardy, Italy (Feb-May 2020). The primary endpoint was in-hospital mortality. Information was obtained from patient records. Statistical analyses were performed using a Fine-Gray competing risk survival model. Model discrimination was assessed using Harrell’s C-index and model calibration was assessed using a calibration plot.ResultsOut of 1049 patients, 501 patients had evaluable data. Of these 501 patients, 96 died. The cumulative incidence of in-hospital mortality within 30 days was 20% (95CI: 16%-23%), and the majority of deaths occurred within the first 10 days. A prediction model containing D-dimer as the only predictor had a C-index of 0.66 (95%CI: 0.61-0.71). Overall calibration of the model was very poor. The addition of D-dimer to a model containing age, sex and co-morbidities as predictors did not lead to any meaningful improvement in either the C-index or the calibration plot.ConclusionThe predictive value of D-dimer alone was moderate, and the addition of D-dimer to a simple model containing basic clinical characteristics did not lead to any improvement in model performance.

Publisher

Cold Spring Harbor Laboratory

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