Author:
Nieto-Ortega Eduardo,Maldonado-del-Arenal Alejandro,Escudero-Roque Lupita,Macedo-Falcon Diana Ali,Escorcia-Saucedo Ana Elena,León-del-Ángel Adalberto,Durán-Méndez Alejandro,Rueda-Medécigo María José,García-Callejas Karla,Hernández-Islas Sergio,Romero-López Gabriel,Hernández-Romero Ángel Raúl,Pérez-Ortega Daniela,Rodríguez-Segura Estephany,Montaño‑Olmos Daniela,Hernández-Muñoz Jeffrey,Rodríguez-Peña Samuel,Magos Montserrat,Aco-Cuamani Yanira Lizeth,García-Chávez Nazareth,García-Otero Ana Lizeth,Mejía-Rangel Analiz,Gutiérrez-Losada Valeria,Cova-Bonilla Miguel,Aguilar-Arroyo Alma Delia,Sandoval-García Araceli,Martínez-Francisco Eneyda,Vázquez-García Blanca Azucena,Jardínez-Vera Aldo Christiaan,del Campo Alejandro Lechuga-Martín,Peón Alberto N.
Abstract
AbstractPrognostic scales may help to optimize the use of hospital resources, which may be of prime interest in the context of a fast spreading pandemics. Nonetheless, such tools are underdeveloped in the context of COVID-19. In the present article we asked whether accurate prognostic scales could be developed to optimize the use of hospital resources. We retrospectively studied 467 files of hospitalized patients after COVID-19. The odds ratios for 16 different biomarkers were calculated, those that were significantly associated were screened by a Pearson’s correlation, and such index was used to establish the mathematical function for each marker. The scales to predict the need for hospitalization, intensive-care requirement and mortality had enhanced sensitivities (0.91 CI 0.87–0.94; 0.96 CI 0.94–0.98; 0.96 CI 0.94–0.98; all withp < 0.0001) and specificities (0.74 CI 0.62–0.83; 0.92 CI 0.87–0.96 and 0.91 CI 0.86–0.94; all withp < 0.0001). Interestingly, when a different population was assayed, these parameters did not change considerably. These results show a novel approach to establish the mathematical function of a marker in the development of highly sensitive prognostic tools, which in this case, may aid in the optimization of hospital resources. An online version of the three algorithms can be found at:http://benepachuca.no-ip.org/covid/index.php
Funder
Sociedad Española de Beneficencia
Publisher
Springer Science and Business Media LLC
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