Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/188703
Title: Exposing and Overcoming Limitations of Clinical Laboratory Tests in COVID-19 by Adding Immunological Parameters; A Retrospective Cohort Analysis and Pilot Study
Author: Sánchez Montalvá, Adrián
Álvarez Sierra, Daniel
Martínez Gallo, Mónica
Perurena Prieto, Janire
Arrese Muñoz, Iria
Ruiz Rodríguez, Juan Carlos
Espinosa Pereiro, Juan
Bosch Nicolau, Pau
Martínez Gómez, Xavier
Antón, Andrés
Martínez Valle, Ferran
Riveiro Barciela, Mar
Blanco Grau, Albert
Rodríguez-Frías, Francisco
Castellano Escuder, Pol
Poyatos Canton, Elisabet
Bas Minguet, Jordi
Martínez Cáceres, Eva
Sánchez Pla, Alex
Zurera Egea, Coral
Teniente Serra, Aina
Hernández González, Manuel
Pujol Borrell, Ricardo
The Hospital Vall D’hebron Group for the study of Covid-19 Immune Profile
Keywords: COVID-19
Marcadors bioquímics
Citocines
COVID-19
Biochemical markers
Cytokines
Issue Date: 29-Jun-2022
Publisher: Frontiers Media SA
Abstract: BackgroundTwo years since the onset of the COVID-19 pandemic no predictive algorithm has been generally adopted for clinical management and in most algorithms the contribution of laboratory variables is limited. ObjectivesTo measure the predictive performance of currently used clinical laboratory tests alone or combined with clinical variables and explore the predictive power of immunological tests adequate for clinical laboratories. Methods: Data from 2,600 COVID-19 patients of the first wave of the pandemic in the Barcelona area (exploratory cohort of 1,579, validation cohorts of 598 and 423 patients) including clinical parameters and laboratory tests were retrospectively collected. 28-day survival and maximal severity were the main outcomes considered in the multiparametric classical and machine learning statistical analysis. A pilot study was conducted in two subgroups (n=74 and n=41) measuring 17 cytokines and 27 lymphocyte phenotypes respectively. Findings1) Despite a strong association of clinical and laboratory variables with the outcomes in classical pairwise analysis, the contribution of laboratory tests to the combined prediction power was limited by redundancy. Laboratory variables reflected only two types of processes: inflammation and organ damage but none reflected the immune response, one major determinant of prognosis. 2) Eight of the thirty variables: age, comorbidity index, oxygen saturation to fraction of inspired oxygen ratio, neutrophil-lymphocyte ratio, C-reactive protein, aspartate aminotransferase/alanine aminotransferase ratio, fibrinogen, and glomerular filtration rate captured most of the combined statistical predictive power. 3) The interpretation of clinical and laboratory variables was moderately improved by grouping them in two categories i.e., inflammation related biomarkers and organ damage related biomarkers; Age and organ damage-related biomarker tests were the best predictors of survival, and inflammatory-related ones were the best predictors of severity. 4) The pilot study identified immunological tests (CXCL10, IL-6, IL-1RA and CCL2), that performed better than most currently used laboratory tests. ConclusionsLaboratory tests for clinical management of COVID 19 patients are valuable but limited predictors due to redundancy; this limitation could be overcome by adding immunological tests with independent predictive power. Understanding the limitations of tests in use would improve their interpretation and simplify clinical management but a systematic search for better immunological biomarkers is urgent and feasible.
Note: Reproducció del document publicat a: https://doi.org/10.3389/fimmu.2022.902837
It is part of: Frontiers in Immunology, 2022, vol. 13, num. 902837
URI: http://hdl.handle.net/2445/188703
Related resource: https://doi.org/10.3389/fimmu.2022.902837
Appears in Collections:Articles publicats en revistes (Institut d'lnvestigació Biomèdica de Bellvitge (IDIBELL))

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