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Disease-Course Adapting Machine Learning Prognostication Models in Elderly Patients Critically Ill With COVID-19: Multicenter Cohort Study With External Validation.

Jung, C; Mamandipoor, B; Fjølner, J; Bruno, RR; Wernly, B; Artigas, A; Bollen Pinto, B; Schefold, JC; Wolff, G; Kelm, M; et al. Jung, C; Mamandipoor, B; Fjølner, J; Bruno, RR; Wernly, B; Artigas, A; Bollen Pinto, B; Schefold, JC; Wolff, G; Kelm, M; Beil, M; Sviri, S; van Heerden, PV; Szczeklik, W; Czuczwar, M; Elhadi, M; Joannidis, M; Oeyen, S; Zafeiridis, T; Marsh, B; Andersen, FH; Moreno, R; Cecconi, M; Leaver, S; De Lange, DW; Guidet, B; Flaatten, H; Osmani, V (2022) Disease-Course Adapting Machine Learning Prognostication Models in Elderly Patients Critically Ill With COVID-19: Multicenter Cohort Study With External Validation. JMIR Med Inform, 10 (3). e32949. ISSN 2291-9694 https://doi.org/10.2196/32949
SGUL Authors: Cecconi, Maurizio

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Abstract

BACKGROUND: The COVID-19 pandemic caused by SARS-CoV-2 is challenging health care systems globally. The disease disproportionately affects the elderly population, both in terms of disease severity and mortality risk. OBJECTIVE: The aim of this study was to evaluate machine learning-based prognostication models for critically ill elderly COVID-19 patients, which dynamically incorporated multifaceted clinical information on evolution of the disease. METHODS: This multicenter cohort study (COVIP study) obtained patient data from 151 intensive care units (ICUs) from 26 countries. Different models based on the Sequential Organ Failure Assessment (SOFA) score, logistic regression (LR), random forest (RF), and extreme gradient boosting (XGB) were derived as baseline models that included admission variables only. We subsequently included clinical events and time-to-event as additional variables to derive the final models using the same algorithms and compared their performance with that of the baseline group. Furthermore, we derived baseline and final models on a European patient cohort, which were externally validated on a non-European cohort that included Asian, African, and US patients. RESULTS: In total, 1432 elderly (≥70 years old) COVID-19-positive patients admitted to an ICU were included for analysis. Of these, 809 (56.49%) patients survived up to 30 days after admission. The average length of stay was 21.6 (SD 18.2) days. Final models that incorporated clinical events and time-to-event information provided superior performance (area under the receiver operating characteristic curve of 0.81; 95% CI 0.804-0.811), with respect to both the baseline models that used admission variables only and conventional ICU prediction models (SOFA score, P<.001). The average precision increased from 0.65 (95% CI 0.650-0.655) to 0.77 (95% CI 0.759-0.770). CONCLUSIONS: Integrating important clinical events and time-to-event information led to a superior accuracy of 30-day mortality prediction compared with models based on the admission information and conventional ICU prediction models. This study shows that machine-learning models provide additional information and may support complex decision-making in critically ill elderly COVID-19 patients. TRIAL REGISTRATION: ClinicalTrials.gov NCT04321265; https://clinicaltrials.gov/ct2/show/NCT04321265.

Item Type: Article
Additional Information: © Christian Jung, Behrooz Mamandipoor, Jesper Fjølner, Raphael Romano Bruno, Bernhard Wernly, Antonio Artigas, Bernardo Bollen Pinto, Joerg C Schefold, Georg Wolff, Malte Kelm, Michael Beil, Sigal Sviri, Peter V van Heerden, Wojciech Szczeklik, Miroslaw Czuczwar, Muhammed Elhadi, Michael Joannidis, Sandra Oeyen, Tilemachos Zafeiridis, Brian Marsh, Finn H Andersen, Rui Moreno, Maurizio Cecconi, Susannah Leaver, Dylan W De Lange, Bertrand Guidet, Hans Flaatten, Venet Osmani. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 31.03.2022. This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on https://medinform.jmir.org/, as well as this copyright and license information must be included.
Keywords: COVID-19, clinical informatics, elderly population, machine learning, machine-based learning, outcome prediction, pandemic, patient data, prediction models, machine-based learning, outcome prediction, COVID-19, pandemic, machine learning, prediction models, clinical informatics, patient data, elderly population
Journal or Publication Title: JMIR Med Inform
ISSN: 2291-9694
Language: eng
Dates:
DateEvent
31 March 2022Published
4 December 2021Accepted
Publisher License: Creative Commons: Attribution 4.0
Projects:
Project IDFunderFunder ID
831644European Union's Horizon ProgrammeUNSPECIFIED
2018-32Forschungskommission of the Medical Faculty of Heinrich-Heine-University DüsseldorfUNSPECIFIED
2020-21Forschungskommission of the Medical Faculty of Heinrich-Heine-University DüsseldorfUNSPECIFIED
PubMed ID: 35099394
Web of Science ID: WOS:000781027400007
Go to PubMed abstract
URI: https://openaccess.sgul.ac.uk/id/eprint/114359
Publisher's version: https://doi.org/10.2196/32949

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