Published July 16, 2024 | Version v1
Journal article Open

At-admission prediction of mortality and pulmonary embolism in an international cohort of hospitalised patients with COVID-19 using statistical and machine learning methods

  • 1. University of Oxford
  • 2. Institute for Clinical Research
  • 3. Ministry of Health, Malaysia
  • 4. Amsterdam University Medical Center
  • 5. University of Chicago

Description

By September 2022, more than 600 million cases of SARS-CoV-2 infection have been reported globally, resulting in over 6.5 million deaths. COVID-19 mortality risk estimators are often, however, developed with small unrepresentative samples and with methodological limitations. It is highly important to develop predictive tools for pulmonary embolism (PE) in COVID-19 patients as one of the most severe preventable complications of COVID-19. Early recognition can help provide life-saving targeted anti-coagulation therapy right at admission. Using a dataset of more than 800,000 COVID-19 patients from an international cohort, we propose a cost-sensitive gradient-boosted machine learning model that predicts occurrence of PE and death at admission. Logistic regression, Cox proportional hazards models, and Shapley values were used to identify key predictors for PE and death. Our prediction model had a test AUROC of 75.9% and 74.2%, and sensitivities of 67.5% and 72.7% for PE and all-cause mortality respectively on a highly diverse and held-out test set. The PE prediction model was also evaluated on patients in UK and Spain separately with test results of 74.5% AUROC, 63.5% sensitivity and 78.9% AUROC, 95.7% sensitivity. Age, sex, region of admission, comorbidities (chronic cardiac and pulmonary disease, dementia, diabetes, hypertension, cancer, obesity, smoking), and symptoms (any, confusion, chest pain, fatigue, headache, fever, muscle or joint pain, shortness of breath) were the most important clinical predictors at admission. Age, overall presence of symptoms, shortness of breath, and hypertension were found to be key predictors for PE using our extreme gradient boosted model. This analysis based on the, until now, largest global dataset for this set of problems can inform hospital prioritisation policy and guide long term clinical research and decision-making for COVID-19 patients globally. Our machine learning model developed from an international cohort can serve to better regulate hospital risk prioritisation of at-risk patients.

Data availability

The ISARIC-WHO CCP, case report form and consent forms are openly available on the ISARIC website at https://isaric.org/re search/covid-19-clinical-research-resources/clinical-characterisation-protocol-ccp/. Informed consent for data collection, sharing and/or analysis was obtained from individual participants or their representatives when required by local ethics committees. Some committees approved a waiver of consent due to the public benefit of the research and the minimal risk to participants. The data that underpin this analysis are highly detailed clinical data on individuals hospitalised with COVID-19. Due to the sensitive nature of these data and the associated privacy concerns, they are available via a governed data access mechanism following review of a data access committee. Data can be requested via the IDDO COVID-19 Data Sharing Platform (http://www.iddo.org/covid-19). The Data Access Application, Terms of Access and details of the Data Access Committee are available on the website. Briefly, the requirements for access are a request from a qualified researcher working with a legal entity who have a health and/or research remit; a scientifically valid reason for data access which adheres to appropriate ethical principles. The full terms are at https://www.iddo.org/document/covid-19-data-access-guidelines. A small subset of sites who contributed data to this analysis have not agreed to pooled data sharing as above. In the case of requiring access to these data, please contact the corresponding author in the first instance who will look to facilitate access.

GR declares receiving a grant from United States National Institute of Health, R01 Grant: Emerging Zoonotic Malaria in Malaysia: Strenghtening Surveillance and Evaluating Population Genetics Structure to Improve Regional Risk Prediction Tool and travel support from the European Society of Clinical Microbiology and Infectious Disease (ESCMID) for observership at European Centre for Disease Prevention and Control (ECDC). All authors declare no competing interests.

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Additional details

Identifiers

DOI
10.1038/s41598-024-63212-7
Other
oai:uchicago.tind.io:12850

Funding

UK Foreign, Commonwealth and Development Office
Wellcome
215091/Z/18/Z
Wellcome
222410/Z/21/Z
Wellcome
225288/Z/22/Z
Wellcome
220757/Z/20/Z
Bill & Melinda Gates Foundation
OPP1209135
University of Oxford
COVID-19 Research Response Fund
CIHR
Coronavirus Rapid Research Funding Opportunity
Health Research Board of Ireland
CTN-2014-12
Rapid European COVID-19 Emergency Response research (RECOVER)
H2020 project 101003589
European Clinical Research Alliance on Infectious Diseases (ECRAID)
965313
Research Council of Norway
312780
Vivaldi Invest A/S
Comprehensive Local Research Networks (CLRNs)
NIHR201385
Innovative Medicines Initiative Joint Undertaking
115523 COMBACTE
European Union
Seventh Framework Programme
City of Vienna
Stiftungsfonds zur Förderung der Bekämpfung der Tuberkulose und anderer Lungenkrankheiten
Australian Department of Health
3273191
University of Queensland
Gender Equity Strategic Fund
Centre of Excellence for Engineered Quantum Systems (EQUS), Australian Research Council
CE170100009
Prince Charles Hospital Foundation, Australia
Instituto de Salud Carlos III, Ministerio de Ciencia, Spain
National Council for Scientific and Technological Development, Brazil
Scholarship
Firland Foundation
REACTing (REsearch & ACtion emergING infectious diseases) consortium
French Ministry of Health
PHRC n20-0424
Bevordering Onderzoek Franciscus
National Institute for Health Research
CO-CIN-01
Medical Research Council
MC_PC_19059
Health Protection Research Unit in Emerging and Zoonotic Infections at University of Liverpool, National Institute for Health Research
200907
Health Protection Research Unit in Respiratory Infections at Imperial College London, National Institute for Health Research
200927
Liverpool Experimental Cancer Medicine Centre
C18616/A25153
Biomedical Research Centre at Imperial College London, National Institute for Health Research
ISBRC-1215-20013

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Surgery