Clinical Characteristics and Predictors of In-Hospital Mortality of Patients Hospitalized with COVID-19 Infection

Author:

Gromadziński LeszekORCID,Żechowicz MaciejORCID,Moczulska Beata,Kasprzak Michał,Grzelakowska Klaudyna,Nowek Paulina,Stępniak Dominika,Jaje-Rykowska Natalia,Kłosińska Aleksandra,Pożarowszczyk MikołajORCID,Wochna Aleksandra,Kern Adam,Romaszko JerzyORCID,Sobacka Agata,Podhajski Przemysław,Kubica Aldona,Kryś Jacek,Piasecki Maciej,Lackowski Piotr,Jasiewicz Małgorzata,Navarese Eliano Pio,Kubica Jacek

Abstract

Background: The identification of parameters that would serve as predictors of prognosis in COVID-19 patients is very important. In this study, we assessed independent factors of in-hospital mortality of COVID-19 patients during the second wave of the pandemic. Material and methods: The study group consisted of patients admitted to two hospitals and diagnosed with COVID-19 between October 2020 and May 2021. Clinical and demographic features, the presence of comorbidities, laboratory parameters, and radiological findings at admission were recorded. The relationship of these parameters with in-hospital mortality was evaluated. Results: A total of 1040 COVID-19 patients (553 men and 487 women) qualified for the study. The in-hospital mortality rate was 26% across all patients. In multiple logistic regression analysis, age ≥ 70 years with OR = 7.8 (95% CI 3.17–19.32), p < 0.001, saturation at admission without oxygen ≤ 87% with OR = 3.6 (95% CI 1.49–8.64), p = 0.004, the presence of typical COVID-19-related lung abnormalities visualized in chest computed tomography ≥40% with OR = 2.5 (95% CI 1.05–6.23), p = 0.037, and a concomitant diagnosis of coronary artery disease with OR = 3.5 (95% CI 1.38–9.10), p = 0.009 were evaluated as independent risk factors for in-hospital mortality. Conclusion: The relationship between clinical and laboratory markers, as well as the advancement of lung involvement by typical COVID-19-related abnormalities in computed tomography of the chest, and mortality is very important for the prognosis of these patients and the determination of treatment strategies during the COVID-19 pandemic.

Publisher

MDPI AG

Subject

General Medicine

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