Multi-horizon predictive models for guiding extracorporeal resource allocation in critically ill COVID-19 patients

Author:

Xue Bing1,Shah Neel2,Yang Hanqing1,Kannampallil Thomas34ORCID,Payne Philip Richard Orrin45ORCID,Lu Chenyang1,Said Ahmed Sameh2ORCID

Affiliation:

1. Department of Computer Science & Engineering, Washington University in St. Louis , St. Louis, Missouri, USA

2. Department of Pediatrics, Washington University in St. Louis , St. Louis, Missouri, USA

3. Department of Anesthesiology, Washington University in St. Louis , St. Louis, Missouri, USA

4. Institute of Informatics, Washington University in St. Louis , St. Louis, Missouri, USA

5. Department of Medicine, Washington University in St. Louis , St. Louis, Missouri, USA

Abstract

AbstractObjectiveExtracorporeal membrane oxygenation (ECMO) resource allocation tools are currently lacking. We developed machine learning (ML) models for predicting COVID-19 patients at risk of receiving ECMO to guide patient triage and resource allocation.Material and MethodsWe included COVID-19 patients admitted to intensive care units for >24 h from March 2020 to October 2021, divided into training and testing development and testing-only holdout cohorts. We developed ECMO deployment timely prediction model ForecastECMO using Gradient Boosting Tree (GBT), with pre-ECMO prediction horizons from 0 to 48 h, compared to PaO2/FiO2 ratio, Sequential Organ Failure Assessment score, PREdiction of Survival on ECMO Therapy score, logistic regression, and 30 pre-selected clinical variables GBT Clinical GBT models, with area under the receiver operator curve (AUROC) and precision recall curve (AUPRC) metrics.ResultsECMO prevalence was 2.89% and 1.73% in development and holdout cohorts. ForecastECMO had the best performance in both cohorts. At the 18-h prediction horizon, a potentially clinically actionable pre-ECMO window, ForecastECMO, had the highest AUROC (0.94 and 0.95) and AUPRC (0.54 and 0.37) in development and holdout cohorts in identifying ECMO patients without data 18 h prior to ECMO.Discussion and ConclusionsWe developed a multi-horizon model, ForecastECMO, with high performance in identifying patients receiving ECMO at various prediction horizons. This model has potential to be used as early alert tool to guide ECMO resource allocation for COVID-19 patients. Future prospective multicenter validation would provide evidence for generalizability and real-world application of such models to improve patient outcomes.

Funder

Big Ideas 2020 COVID Grant

Healthcare Innovations Lab

BJC Healthcare and Washington University in St. Louis School of Medicine

Children’s Discovery Institute Faculty Development Award at Washington University in St. Louis

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference91 articles.

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2. Cost of extracorporeal membrane oxygenation: evidence from the Rikshospitalet University Hospital, Oslo, Norway;Mishra;Eur J Cardiothorac Surg,2010

3. Extracorporeal membrane oxygenation for coronavirus disease 2019: crisis standards of care;Agerstrand;ASAIO J,2021

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