Context-dependent representation of within- and between-model uncertainty: aggregating probabilistic predictions in infectious disease epidemiology

Author:

Howerton Emily1ORCID,Runge Michael C.2ORCID,Bogich Tiffany L.1ORCID,Borchering Rebecca K.1ORCID,Inamine Hidetoshi1ORCID,Lessler Justin34ORCID,Mullany Luke C.5ORCID,Probert William J. M.6ORCID,Smith Claire P.4ORCID,Truelove Shaun47ORCID,Viboud Cécile8ORCID,Shea Katriona1ORCID

Affiliation:

1. Department of Biology and Center for Infectious Disease Dynamics, The Pennsylvania State University, University Park, PA, USA

2. Eastern Ecological Science Center at the Patuxent Research Refuge, U.S. Geological Survey, Laurel, MD, USA

3. Department of Epidemiology and Carolina Population Center, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA

4. Department of Epidemiology, Bloomberg School of Public Health, Johns Hopkins University, Baltimore, MD, USA

5. Applied Physics Laboratory, Johns Hopkins University, Baltimore, MD, USA

6. Big Data Institute, Li Ka Shing Centre for Health Information and Discovery, University of Oxford, UK

7. Department of International Health, Bloomberg School of Public Health, Johns Hopkins University, Baltimore, MD, USA

8. Fogarty International Center, National Institutes of Health, Bethesda, MD, USA

Abstract

Probabilistic predictions support public health planning and decision making, especially in infectious disease emergencies. Aggregating outputs from multiple models yields more robust predictions of outcomes and associated uncertainty. While the selection of an aggregation method can be guided by retrospective performance evaluations, this is not always possible. For example, if predictions are conditional on assumptions about how the future will unfold (e.g. possible interventions), these assumptions may never materialize, precluding any direct comparison between predictions and observations. Here, we summarize literature on aggregating probabilistic predictions, illustrate various methods for infectious disease predictions via simulation, and present a strategy for choosing an aggregation method when empirical validation cannot be used. We focus on the linear opinion pool (LOP) and Vincent average, common methods that make different assumptions about between-prediction uncertainty. We contend that assumptions of the aggregation method should align with a hypothesis about how uncertainty is expressed within and between predictions from different sources. The LOP assumes that between-prediction uncertainty is meaningful and should be retained, while the Vincent average assumes that between-prediction uncertainty is akin to sampling error and should not be preserved. We provide an R package for implementation. Given the rising importance of multi-model infectious disease hubs, our work provides useful guidance on aggregation and a deeper understanding of the benefits and risks of different approaches.

Funder

Pennsylvania State University Eberly College of Science Barbara McClintock Science Achievement Graduate Scholarship in Biology

United States National Science Foundation COVID-19 RAPID

Pennsylvania State University Huck Institutes for the Life Sciences

Publisher

The Royal Society

Subject

Biomedical Engineering,Biochemistry,Biomaterials,Bioengineering,Biophysics,Biotechnology

Reference72 articles.

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