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Establishment of CORONET; COVID-19 Risk in Oncology Evaluation Tool to identify cancer patients at low versus high risk of severe complications of COVID-19 infection upon presentation to hospital

Authors :
Donal Landers Dr
Prerana Huddar Dr
Tim Cooksley Dr
Hayley Boyce Dr
Cong Zhou Dr
Hayley McKenzie Dr
Caroline Wilson Dr
Umair T Khan Dr
Jamie Weaver Dr
Anne C Armstrong Dr
Michael Rowe Dr
Kathryn Banfill Dr
Angelos Angelakas Dr
Alec Maynard Dr
Paul Fitzpartick Dr
Joshua Woodcock Dr
Theingi Aung Dr
Anne Thomas Prof
Christina Hague Dr
Rohan Shotton Dr
Donna Graham Dr
Sophie Williams Dr
Sam Khan Dr
Rebecca J Lee Dr
Louise Lever Dr
Roseleen Sheehan Dr
Talvinder Bhogal Dr
Lance Turtle
Caroline Dive Prof
Tim Robinson Dr
Ellen Copson Dr
Richard Hoskins Dr
Hannah Frost Ms
Julie Stevenson Dr
Andre Freitas Dr
Elena Dickens Dr
Leonie Eastlake Dr
Mark Baxter Dr
Laura Horsley Dr
Oskar Wysocki Dr
Fabio Gomes Dr
Michelle Harrison Dr
Zoe Hudson Dr
Alexander J. Stockdale
Ann Tivey Dr
Carlo Palmieri Prof
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

BackgroundCancer patients are at increased risk of severe COVID-19. As COVID-19 presentation and outcomes are heterogeneous in cancer patients, decision-making tools for hospital admission, severity prediction and increased monitoring for early intervention are critical.ObjectiveTo identify features of COVID-19 in cancer patients predicting severe disease and build a decision-support online tool; COVID-19 Risk in Oncology Evaluation Tool (CORONET)MethodData was obtained for consecutive patients with active cancer with laboratory confirmed COVID-19 presenting in 12 hospitals throughout the United Kingdom (UK). Univariable logistic regression was performed on pre-specified features to assess their association with admission (≥24 hours inpatient), oxygen requirement and death. Multivariable logistic regression and random forest models (RFM) were compared with patients randomly split into training and validation sets. Cost function determined cut-offs were defined for admission/death using RFM. Performance was assessed by sensitivity, specificity and Brier scores (BS). The CORONET model was then assessed in the entire cohort to build the online CORONET tool.ResultsTraining and validation sets comprised 234 and 66 patients respectively with median age 69 (range 19-93), 54% males, 46% females, 71% vs 29% had solid and haematological cancers. The RFM, selected for further development, demonstrated superior performance over logistic regression with AUROC predicting admission (0.85 vs. 0.78) and death (0.76 vs. 0.72). C-reactive protein was the most important feature predicting COVID-19 severity. CORONET cut-offs for admission and mortality of 1.05 and 1.8 were established. In the training set, admission prediction sensitivity and specificity were 94.5% and 44.3% with BS 0.118; mortality sensitivity and specificity were 78.5% and 57.2% with BS 0.364. In the validation set, admission sensitivity and specificity were 90.7% and 42.9% with BS 0.148; mortality sensitivity and specificity were 92.3% and 45.8% with BS 0.442. In the entire cohort, the CORONET decision support tool recommended admission of 99% of patients requiring oxygen and of 99% of patients who died.Conclusions and RelevanceCORONET, a decision support tool validated in hospitals throughout the UK showed promise in aiding decisions regarding admission and predicting COVID-19 severity in patients with cancer presenting to hospital. Future work will validate and refine the tool in further datasets.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........d7f0d5daeee706b29d7d161342233f2a