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Multiple Approaches at Admission Based on Lung Ultrasound and Biomarkers Improves Risk Identification in COVID-19 Patients.

Authors :
Jorge, Rubio-Gracia
Marta, Sánchez-Marteles
Vanesa, Garcés-Horna
Luis, Martínez-Lostao
Fernando, Ruiz-Laiglesia
Silvia, Crespo-Aznarez
Natacha, Peña-Fresneda
Borja, Gracia-Tello
Alberto, Cebollada
Patricia, Carrera-Lasfuentes
Ignacio, Pérez-Calvo Juan
Ignacio, Giménez-López
Source :
Journal of Clinical Medicine; Dec2021, Vol. 10 Issue 23, p5478, 1p
Publication Year :
2021

Abstract

Background: Risk stratification of COVID-19 patients is fundamental to improving prognosis and selecting the right treatment. We hypothesized that a combination of lung ultrasound (LUZ-score), biomarkers (sST2), and clinical models (PANDEMYC score) could be useful to improve risk stratification. Methods: This was a prospective cohort study designed to analyze the prognostic value of lung ultrasound, sST2, and PANDEMYC score in COVID-19 patients. The primary endpoint was in-hospital death and/or admission to the intensive care unit. The total length of hospital stay, increase of oxygen flow, or escalated medical treatment during the first 72 h were secondary endpoints. Results: a total of 144 patients were included; the mean age was 57.5 ± 12.78 years. The median PANDEMYC score was 243 (52), the median LUZ-score was 21 (10), and the median sST2 was 53.1 ng/mL (30.9). Soluble ST2 showed the best predictive capacity for the primary endpoint (AUC = 0.764 (0.658–0.871); p = 0.001), towards the PANDEMYC score (AUC = 0.762 (0.655–0.870); p = 0.001) and LUZ-score (AUC = 0.749 (0.596–0.901); p = 0.002). Taken together, these three tools significantly improved the risk capacity (AUC = 0.840 (0.727–0.953); p ≤ 0.001). Conclusions: The PANDEMYC score, lung ultrasound, and sST2 concentrations upon admission for COVID-19 are independent predictors of intra-hospital death and/or the need for admission to the ICU for mechanical ventilation. The combination of these predictive tools improves the predictive power compared to each one separately. The use of decision trees, based on multivariate models, could be useful in clinical practice. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20770383
Volume :
10
Issue :
23
Database :
Complementary Index
Journal :
Journal of Clinical Medicine
Publication Type :
Academic Journal
Accession number :
154082274
Full Text :
https://doi.org/10.3390/jcm10235478