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

  • Mazankowski Heart Institute
  • , ISARIC Characterisation Group

Producción científica: RevistaArtículorevisión exhaustiva

Resumen

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.

Idioma originalInglés
Número de artículo16387
PublicaciónScientific Reports
Volumen14
N.º1
DOI
EstadoPublicada - dic. 2024

Nota bibliográfica

Publisher Copyright:
© The Author(s) 2024.

Financiación

FinanciadoresNúmero del financiador
Kementerian Kesihatan Malaysia
Instituto de Salud Carlos III
Institut national de la santé et de la recherche médicale
European Centre for Disease Prevention and Control
National Institutes of Health
Ministero della Salute
University of Queensland
University College Dublin
University of Oxford
Wellcome Trust220757/Z/20/Z, 215091/Z/18/Z, 225288/Z/22/Z, 222410/Z/21/Z
Wellcome Trust
ISBRC-1215-20013
200907
Bill and Melinda Gates Foundation0009109, OPP1209135
Bill and Melinda Gates Foundation
Engineering and Physical Sciences Research CouncilEP/S02428X/1
Engineering and Physical Sciences Research Council
National Institute for Health and Care ResearchNIHR201385, CO-CIN-01
National Institute for Health and Care Research
PHRC n20-0424
312780
APCOV22BGM
Imperial College London200927
Imperial College London
303953/2018-7
Canadian Institutes of Health ResearchOV2170359
Canadian Institutes of Health Research
NCT04262921
115523
3273191
C18616/A25153
Australian Research CouncilCE170100009
Australian Research Council
Medical Research CouncilMC_PC_19059
Medical Research Council
CTN-2014-12
965313
101003589
P0153_21_N2

    ODS de las Naciones Unidas

    Este resultado contribuye a los siguientes Objetivos de Desarrollo Sostenible

    1. ODS 3: Salud y bienestar
      ODS 3: Salud y bienestar

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