Combining models to generate consensus medium-term projections of hospital admissions, occupancy and deaths relating to COVID-19 in England

Author:

Manley Harrison1ORCID,Bayley Thomas1,Danelian Gabriel1,Burton Lucy1,Finnie Thomas1,Charlett Andre1,Watkins Nicholas A.1,Birrell Paul12,De Angelis Daniela12ORCID,Keeling Matt3ORCID,Funk Sebastian4ORCID,Medley Graham4,Pellis Lorenzo5ORCID,Baguelin Marc6,Ackland Graeme J.7ORCID,Hutchinson Johanna1,Riley Steven1,Panovska-Griffiths Jasmina189ORCID

Affiliation:

1. UK Health Security Agency , London, UK

2. MRC Biostatistics Unit, University of Cambridge , , UK

3. Department of Mathematics, University of Warwick , Coventry, UK

4. London School of Hygiene and Tropical Medicine , London, UK

5. University of Manchester , Manchester, UK

6. Imperial College London , London, UK

7. University of Edinburgh , Edinburgh, UK

8. Queen’s College, University of Oxford , Oxford, UK

9. The Big Data Institute and the Pandemic Sciences Institute, University of Oxford , Oxford, UK

Abstract

Mathematical modelling has played an important role in offering informed advice during the COVID-19 pandemic. In England, a cross government and academia collaboration generated medium-term projections (MTPs) of possible epidemic trajectories over the future 4–6 weeks from a collection of epidemiological models. In this article, we outline this collaborative modelling approach and evaluate the accuracy of the combined and individual model projections against the data over the period November 2021–December 2022 when various Omicron subvariants were spreading across England. Using a number of statistical methods, we quantify the predictive performance of the model projections for both the combined and individual MTPs, by evaluating the point and probabilistic accuracy. Our results illustrate that the combined MTPs, produced from an ensemble of heterogeneous epidemiological models, were a closer fit to the data than the individual models during the periods of epidemic growth or decline, with the 90% confidence intervals widest around the epidemic peaks. We also show that the combined MTPs increase the robustness and reduce the biases associated with a single model projection. Learning from our experience of ensemble modelling during the COVID-19 epidemic, our findings highlight the importance of developing cross-institutional multi-model infectious disease hubs for future outbreak control.

Publisher

The Royal Society

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