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International comparisons of laboratory values from the 4CE collaborative to predict COVID-19 mortality

Title: International comparisons of laboratory values from the 4CE collaborative to predict COVID-19 mortality
Authors: Weber G. M.; Hong C.; Xia Z.; Palmer N. P.; Avillach P.; L'Yi S.; Keller M. S.; Murphy S. N.; Gutierrez-Sacristan A.; Bonzel C. -L.; Serret-Larmande A.; Neuraz A.; Omenn G. S.; Visweswaran S.; Klann J. G.; South A. M.; Loh N. H. W.; Cannataro M.; Beaulieu-Jones B. K.; Bellazzi R.; Agapito G.; Alessiani M.; Aronow B. J.; Bell D. S.; Benoit V.; Bourgeois F. T.; Chiovato L.; Cho K.; Dagliati A.; DuVall S. L.; Barrio N. G.; Hanauer D. A.; Ho Y. -L.; Holmes J. H.; Issitt R. W.; Liu M.; Luo Y.; Lynch K. E.; Maidlow S. E.; Malovini A.; Mandl K. D.; Mao C.; Matheny M. E.; Moore J. H.; Morris J. S.; Morris M.; Mowery D. L.; Ngiam K. Y.; Patel L. P.; Pedrera-Jimenez M.; Ramoni R. B.; Schriver E. R.; Schubert P.; Balazote P. S.; Spiridou A.; Tan A. L. M.; Tan B. W. L.; Tibollo V.; Torti C.; Trecarichi E. M.; Wang X.; Aaron J. R.; Albayrak A.; Albi G.; Alloni A.; Amendola D. F.; Angoulvant F.; Anthony L. L. L. J.; Ashraf F.; Atz A.; Azevedo P. S.; Balshi J.; Bellasi A.; Beraghi M.; Bernal-Sobrino J. L.; Bernaux M.; Bey R.; Bhatnagar S.; Blanco-Martinez A.; Boeker M.; Booth J.; Bosari S.; Bradford R. L.; Brat G. A.; Breant S.; Brown N. W.; Bruno R.; Bryant W. A.; Bucalo M.; Bucholz E.; Burgun A.; Cai T.; Carmona A.; Caucheteux C.; Champ J.; Chen K. Y.; Chen J.; Chiudinelli L.; Cimino J. J.; Colicchio T. K.; Cormont S.; Cossin S.; Craig J. B.; Cruz-Bermudez J. L.; Cruz-Rojo J.; Daniar M.; Daniel C.; Das P.; Devkota B.; Dionne A.; Duan R.; Dubiel J.; Esteve L.; Estiri H.; Fan S.; Follett R. W.; Ganslandt T.; Garcia-Barrio N.; Garmire L. X.; Gehlenborg N.; Getzen E. J.; Geva A.; Gradinger T.; Gramfort A.; Griffier R.; Griffon N.; Grisel O.; Han L.; Haverkamp C.; Hazard D. Y.; He B.; Henderson D. W.; Hilka M.; Huling K. M.; Hutch M. R.; Jannot A. S.; Jouhet V.; Kavuluru R.; Kennedy C. J.; Kernan K. F.; Key D. A.; Kirchoff K.; Kohane I. S.; Krantz I. D.; Kraska D.; Krishnamurthy A. K.; Le T. T.; Leblanc J.; Lemaitre G.; Lenert L.; Leprovost D.; Long Q.; Lozano-Zahonero S.; Mahmood S.; Makoudjou A.; Maram A.; Martel P.; Martins M. R.; Marwaha J. S.; Masino A. J.; Mazzitelli M.; Mensch A.; Milano M.; Minicucci M. F.; Moal B.; Ahooyi T. M.; Moraleda C.; Moshal K. L.; Mousavi S.; Murad D. A.; Naughton T. P.; Neto C. T. B.; Newburger J.; Njoroge W. F. M.; Norman J. B.; Obeid J.; Okoshi M. P.; Olson K. L.; Orlova N.; Ostasiewski B. D.; Paris N.; Pfaff A. C.; Pfaff E. R.; Pillion D.; Pizzimenti S.; Prokosch H. U.; Prudente R. A.; Prunotto A.; Quiros-Gonzalez V.; Raskin M.; Rieg S.; Roig-Dominguez G.; Rojo P.; Rubio-Mayo P.; Sacchi P.; Saez C.; Salamanca E.; Samayamuthu M. J.; Sanchez-Pinto L. N.; Sandrin A.; Santhanam N.; Santos J. C. C.; Sanz Vidorreta F. J.; Savino M.; Schuettler J.; Scudeller L.; Sebire N. J.; Serre P.; Shah M.; Abad Z. S. H.; Silvio D.; Sliz P.; Son J.; Sonday C.; Sperotto F.; Strasser Z. H.; Tan B. W. Q.; Tanni S. E.; Taylor D. M.; Terriza-Torres A. I.; Tippmann P.; Toh E. M. S.; Tseng Y. -J.; Vallejos A. K.; Varoquaux G.; Vella M. E.; Verdy G.; Vie J. -J.; Vitacca M.; Wagholikar K. B.; Waitman L. R.; Wassermann D.; Wolkewitz M.; Wong S.; Xiong X.; Ye Y.; Yehya N.; Yuan W.; Zambelli A.; Zhang H. G.; Zoller D.; Zuccaro V.; Zucco C.
Contributors: Weber, G; Hong, C; Xia, Z; Palmer, N; Avillach, P; L'Yi, S; Keller, M; Murphy, S; Gutierrez-Sacristan, A; Bonzel, C; Serret-Larmande, A; Neuraz, A; Omenn, G; Visweswaran, S; Klann, J; South, A; Loh, N; Cannataro, M; Beaulieu-Jones, B; Bellazzi, R; Agapito, G; Alessiani, M; Aronow, B; Bell, D; Benoit, V; Bourgeois, F; Chiovato, L; Cho, K; Dagliati, A; Duvall, S; Barrio, N; Hanauer, D; Ho, Y; Holmes, J; Issitt, R; Liu, M; Luo, Y; Lynch, K; Maidlow, S; Malovini, A; Mandl, K; Mao, C; Matheny, M; Moore, J; Morris, J; Morris, M; Mowery, D; Ngiam, K; Patel, L; Pedrera-Jimenez, M; Ramoni, R; Schriver, E; Schubert, P; Balazote, P; Spiridou, A; Tan, A; Tan, B; Tibollo, V; Torti, C; Trecarichi, E; Wang, X; Aaron, J; Albayrak, A; Albi, G; Alloni, A; Amendola, D; Angoulvant, F; Anthony, L; Ashraf, F; Atz, A; Azevedo, P; Balshi, J; Bellasi, A; Beraghi, M; Bernal-Sobrino, J; Bernaux, M; Bey, R; Bhatnagar, S; Blanco-Martinez, A; Boeker, M; Booth, J; Bosari, S; Bradford, R; Brat, G; Breant, S; Brown, N; Bruno, R; Bryant, W; Bucalo, M; Bucholz, E; Burgun, A; Cai, T; Carmona, A; Caucheteux, C; Champ, J; Chen, K; Chen, J
Publisher Information: Nature Research; GB
Publication Year: 2022
Collection: Università degli Studi di Milano-Bicocca: BOA (Bicocca Open Archive)
Subject Terms: Blood; Forecasting; Health care; Laboratorie; Population statistic; Regression analysis
Description: Given the growing number of prediction algorithms developed to predict COVID-19 mortality, we evaluated the transportability of a mortality prediction algorithm using a multi-national network of healthcare systems. We predicted COVID-19 mortality using baseline commonly measured laboratory values and standard demographic and clinical covariates across healthcare systems, countries, and continents. Specifically, we trained a Cox regression model with nine measured laboratory test values, standard demographics at admission, and comorbidity burden pre-admission. These models were compared at site, country, and continent level. Of the 39,969 hospitalized patients with COVID-19 (68.6% male), 5717 (14.3%) died. In the Cox model, age, albumin, AST, creatine, CRP, and white blood cell count are most predictive of mortality. The baseline covariates are more predictive of mortality during the early days of COVID-19 hospitalization. Models trained at healthcare systems with larger cohort size largely retain good transportability performance when porting to different sites. The combination of routine laboratory test values at admission along with basic demographic features can predict mortality in patients hospitalized with COVID-19. Importantly, this potentially deployable model differs from prior work by demonstrating not only consistent performance but also reliable transportability across healthcare systems in the US and Europe, highlighting the generalizability of this model and the overall approach.
Document Type: article in journal/newspaper
File Description: ELETTRONICO
Language: English
Relation: info:eu-repo/semantics/altIdentifier/pmid/35697747; info:eu-repo/semantics/altIdentifier/wos/WOS:000810666800001; volume:5; issue:1; journal:NPJ DIGITAL MEDICINE; https://hdl.handle.net/10281/526997
DOI: 10.1038/s41746-022-00601-0
Availability: https://hdl.handle.net/10281/526997; https://doi.org/10.1038/s41746-022-00601-0
Rights: info:eu-repo/semantics/openAccess ; license:Creative Commons ; license uri:http://creativecommons.org/licenses/by/4.0/
Accession Number: edsbas.7CB1A95
Database: BASE