Predictive performance and clinical application of COV50, a urinary proteomic biomarker in early COVID-19 infection: a prospective multicentre cohort study.
Journal
The Lancet. Digital health
ISSN: 2589-7500
Titre abrégé: Lancet Digit Health
Pays: England
ID NLM: 101751302
Informations de publication
Date de publication:
10 2022
10 2022
Historique:
received:
11
01
2022
revised:
17
07
2022
accepted:
19
07
2022
pubmed:
4
9
2022
medline:
28
9
2022
entrez:
3
9
2022
Statut:
ppublish
Résumé
The SARS-CoV-2 pandemic is a worldwide challenge. The CRIT-CoV-U pilot study generated a urinary proteomic biomarker consisting of 50 peptides (COV50), which predicted death and disease progression from SARS-CoV-2. After the interim analysis presented for the German Government, here, we aimed to analyse the full dataset to consolidate the findings and propose potential clinical applications of this biomarker. CRIT-CoV-U was a prospective multicentre cohort study. In eight European countries (Austria, France, Germany, Greece, North Macedonia, Poland, Spain, and Sweden), 1012 adults with PCR-confirmed COVID-19 were followed up for death and progression along the 8-point WHO scale. Capillary electrophoresis coupled with mass spectrometry was used for urinary proteomic profiling. Statistical methods included logistic regression and receiver operating characteristic curve analysis with a comparison of the area under curve (AUC) between nested models. Hospitalisation costs were derived from the care facility corresponding with the Markov chain probability of reaching WHO scores ranging from 3 to 8 and flat-rate hospitalisation costs adjusted for the gross per capita domestic product of each country. From June 30 to Nov 19, 2020, 228 participants were recruited, and from April 30, 2020, to April 14, 2021, 784 participants were recruited, resulting in a total of 1012 participants. The entry WHO scores were 1-3 in 445 (44%) participants, 4-5 in 529 (52%) participants, and 6 in 38 (4%) participants; and of all participants, 119 died and 271 had disease progression. The odds ratio (OR) associated with COV50 in all 1012 participants for death was 2·44 (95% CI 2·05-2·92) unadjusted and 1·67 (1·34-2·07) when adjusted for sex, age, BMI, comorbidities, and baseline WHO score; and for disease progression, the OR was 1·79 (1·60-2·01) when unadjusted and 1·63 (1·41-1·91) when adjusted (p<0·0001 for all). The predictive accuracy of the optimised COV50 thresholds was 74·4% (71·6-77·1%) for mortality (threshold 0·47) and 67·4% (64·4-70·3%) for disease progression (threshold 0·04). When adjusted for covariables and the baseline WHO score, these thresholds improved AUCs from 0·835 to 0·853 (p=0·033) for death and from 0·697 to 0·730 (p=0·0008) for progression. Of 196 participants who received ambulatory care, 194 (99%) did not reach the 0·04 threshold. The cost reductions associated with 1 day less hospitalisation per 1000 participants were million Euro (M€) 0·887 (5-95% percentile interval 0·730-1·039) in participants at a low risk (COV50 <0·04) and M€2·098 (1·839-2·365) in participants at a high risk (COV50 ≥0·04). The urinary proteomic COV50 marker might be predictive of adverse COVID-19 outcomes. Even in people with mild-to-moderate PCR-confirmed infections (WHO scores 1-4), the 0·04 COV50 threshold justifies earlier drug treatment, thereby potentially reducing the number of days in hospital and associated costs. German Federal Ministry of Health.
Sections du résumé
BACKGROUND
The SARS-CoV-2 pandemic is a worldwide challenge. The CRIT-CoV-U pilot study generated a urinary proteomic biomarker consisting of 50 peptides (COV50), which predicted death and disease progression from SARS-CoV-2. After the interim analysis presented for the German Government, here, we aimed to analyse the full dataset to consolidate the findings and propose potential clinical applications of this biomarker.
METHODS
CRIT-CoV-U was a prospective multicentre cohort study. In eight European countries (Austria, France, Germany, Greece, North Macedonia, Poland, Spain, and Sweden), 1012 adults with PCR-confirmed COVID-19 were followed up for death and progression along the 8-point WHO scale. Capillary electrophoresis coupled with mass spectrometry was used for urinary proteomic profiling. Statistical methods included logistic regression and receiver operating characteristic curve analysis with a comparison of the area under curve (AUC) between nested models. Hospitalisation costs were derived from the care facility corresponding with the Markov chain probability of reaching WHO scores ranging from 3 to 8 and flat-rate hospitalisation costs adjusted for the gross per capita domestic product of each country.
FINDINGS
From June 30 to Nov 19, 2020, 228 participants were recruited, and from April 30, 2020, to April 14, 2021, 784 participants were recruited, resulting in a total of 1012 participants. The entry WHO scores were 1-3 in 445 (44%) participants, 4-5 in 529 (52%) participants, and 6 in 38 (4%) participants; and of all participants, 119 died and 271 had disease progression. The odds ratio (OR) associated with COV50 in all 1012 participants for death was 2·44 (95% CI 2·05-2·92) unadjusted and 1·67 (1·34-2·07) when adjusted for sex, age, BMI, comorbidities, and baseline WHO score; and for disease progression, the OR was 1·79 (1·60-2·01) when unadjusted and 1·63 (1·41-1·91) when adjusted (p<0·0001 for all). The predictive accuracy of the optimised COV50 thresholds was 74·4% (71·6-77·1%) for mortality (threshold 0·47) and 67·4% (64·4-70·3%) for disease progression (threshold 0·04). When adjusted for covariables and the baseline WHO score, these thresholds improved AUCs from 0·835 to 0·853 (p=0·033) for death and from 0·697 to 0·730 (p=0·0008) for progression. Of 196 participants who received ambulatory care, 194 (99%) did not reach the 0·04 threshold. The cost reductions associated with 1 day less hospitalisation per 1000 participants were million Euro (M€) 0·887 (5-95% percentile interval 0·730-1·039) in participants at a low risk (COV50 <0·04) and M€2·098 (1·839-2·365) in participants at a high risk (COV50 ≥0·04).
INTERPRETATION
The urinary proteomic COV50 marker might be predictive of adverse COVID-19 outcomes. Even in people with mild-to-moderate PCR-confirmed infections (WHO scores 1-4), the 0·04 COV50 threshold justifies earlier drug treatment, thereby potentially reducing the number of days in hospital and associated costs.
FUNDING
German Federal Ministry of Health.
Identifiants
pubmed: 36057526
pii: S2589-7500(22)00150-9
doi: 10.1016/S2589-7500(22)00150-9
pmc: PMC9432869
pii:
doi:
Substances chimiques
Biomarkers
0
Types de publication
Journal Article
Multicenter Study
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
e727-e737Subventions
Organisme : Austrian Science Fund FWF
ID : KLI 861
Pays : Austria
Investigateurs
Jan A Staessen
(JA)
Ralph Wendt
(R)
Yu-Ling Yu
(YL)
Sven Kalbitz
(S)
Lutgarde Thijs
(L)
Justyna Siwy
(J)
Julia Raad
(J)
Jochen Metzger
(J)
Barbara Neuhaus
(B)
Armin Papkalla
(A)
Heiko von der Leyen
(H)
Alexandre Mebazaa
(A)
Emmanuel Dudoignon
(E)
Goce Spasovski
(G)
Mimoza Milenkova
(M)
Aleksandra Canevska-Taneska
(A)
Mercedes Salgueira Lazo
(MS)
Mina Psichogiou
(M)
Marek W Rajzer
(MW)
Lukasz Fulawka
(L)
Magdalena Dzitkowska-Zabielska
(M)
Guenter Weiss
(G)
Torsten Feldt
(T)
Miriam Stegemann
(M)
Johan Normark
(J)
Alexander Zoufaly
(A)
Stefan Schmiedel
(S)
Michael Seilmaier
(M)
Benedikt Rumpf
(B)
Mirosław Banasik
(M)
Magdalena Krajewska
(M)
Lorenzo Catanese
(L)
Harald Rupprecht
(H)
Beata Czerwienska
(B)
Björn Peters
(B)
Åsa Nilsson
(Å)
Katja Rothfuss
(K)
Christoph Lübbert
(C)
Harald Mischak
(H)
Joachim Beige
(J)
Jörg Ermisch
(J)
Nils Kellner
(N)
Lydia Peruth-Stutzmann
(L)
Stefanie Schroth
(S)
Jonathan Schmidt
(J)
Ulrike Schmidt
(U)
Daniel Breuer
(D)
Fariza Abeud
(F)
Marie-Celine Fournier
(MC)
Badr Louadah
(B)
Rocio Molas
(R)
Fraile Loreto Rojas
(FL)
Fabiola Alonso García
(FA)
Isabel Garcia Sánchez
(IG)
Ioana Cezara Hrom
(IC)
Andrzej Więczek
(A)
Matthias Schwab
(M)
Kei K Asayama
(K)
Tine W Hansen
(TW)
Gladys E Maestre
(GE)
Dimitrios Basoulis
(D)
Georgios Karamanakos
(G)
Pawel Lis
(P)
Agnieszka Olszanecka
(A)
Rosa Bellmann-Weiler
(R)
Lucas Lanser
(L)
Alicia Edin
(A)
Matthias Ne Forsell
(MN)
Bernd Stegmayr
(B)
Björn-Erik Ole Jensen
(BO)
Hans-Martin Orth
(HM)
Sylke Borstel
(S)
Agata Mikolajewska
(A)
Manfred Hecking
(M)
Lukas Schmölz
(L)
Michał Hoffmann
(M)
Krzysztof Narkiewicz
(K)
Agnieszka Matera-Witkiewicz
(A)
Justyna Zachciał
(J)
Monika Litwin
(M)
Patrycja Marciniak
(P)
Commentaires et corrections
Type : ErratumIn
Informations de copyright
Copyright © 2022 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license. Published by Elsevier Ltd.. All rights reserved.
Déclaration de conflit d'intérêts
Declaration of interests HM is the co-founder and co-owner of Mosaiques-Diagnostiques (Hannover, Germany). JS and JR are employees of Mosaiques-Diagnostics. HDR received consulting fees and honoraria for presentations from Alexion, AstraZeneca, and Bristol-Myers-Squibb. All other authors declare no competing interests.
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