Infectious Disease Forecasting for Public Health
Stephen A Lauer, Alexandria C Brown, Nicholas G Reich

TL;DR
This paper reviews methods for forecasting infectious disease transmission, emphasizing challenges, data limitations, modeling approaches, evaluation practices, and communication strategies to support public health decision-making.
Contribution
It provides a comprehensive overview of biological and statistical models, evaluation methods, and communication practices for infectious disease forecasting.
Findings
Forecasting models must account for data imperfections and delays.
Evaluation of models should follow best practices from epidemiology and forecasting fields.
Effective communication of forecasts is crucial for public health use.
Abstract
Forecasting transmission of infectious diseases, especially for vector-borne diseases, poses unique challenges for researchers. Behaviors of and interactions between viruses, vectors, hosts, and the environment each play a part in determining the transmission of a disease. Public health surveillance systems and other sources provide valuable data that can be used to accurately forecast disease incidence. However, many aspects of common infectious disease surveillance data are imperfect: cases may be reported with a delay or in some cases not at all, data on vectors may not be available, and case data may not be available at high geographical or temporal resolution. In the face of these challenges, researchers must make assumptions to either account for these underlying processes in a mechanistic model or to justify their exclusion altogether in a statistical model. Whether a model is…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Zoonotic diseases and public health · Animal Disease Management and Epidemiology
