Abstract
Background: The 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.
Aims: The primary aim was to study the value of D-dimer as a predictive marker for in-hospital mortality.
Methods: This 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.
Results: Out of 1049 patients, 507 patients (46%) had evaluable data. Of these 507 patients, 96 died within 30 days. The cumulative incidence of in-hospital mortality within 30 days was 19% (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.
Conclusion: The 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.
【초록키워드】 COVID-19, Treatment, coronavirus disease, Coronavirus disease 2019, Clinical characteristics, hospital, Sex, risk, D-dimer, outcome, Italy, hospitalized patients, cohort study, global health, Predictive value, Hospital mortality, Health, survival, Real-time PCR, healthcare, Patient, Model, death, co-morbidity, age, predictor, incidence, moderate, patients, in-hospital mortality, cumulative incidence, marker, primary endpoint, Analysis, lombardy, identification, lead, Predictive, medical staff, patient records, study population, C-index, morbidities, dimer, statistical analyses, cumulative, resources, performed, occurred, died, addition, majority, hospitalized patient, competing, assist, was obtained, diagnosed with COVID-19, 【제목키워드】 Hospitalized, Mortality, First wave, marker, Predictive, patients with COVID-19,