4.4 Review

The Use and Misuse of Mathematical Modeling for Infectious Disease Policymaking: Lessons for the COVID-19 Pandemic

Journal

MEDICAL DECISION MAKING
Volume 41, Issue 4, Pages 379-385

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1177/0272989X21990391

Keywords

COVID-19; infectious diseases; mathematical modeling; uncertainty; validation

Funding

  1. NIH/NIAID [R01AI146555]

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Mathematical modeling has played a crucial role in the current COVID-19 pandemic, but its limitations, such as uncertainty and validity of predictions, have been recognized. Various approaches have been proposed to strengthen the validity of inferences drawn from these models, in order to improve decision-making in the current crisis and beyond.
Mathematical modeling has played a prominent and necessary role in the current coronavirus disease 2019 (COVID-19) pandemic, with an increasing number of models being developed to track and project the spread of the disease, as well as major decisions being made based on the results of these studies. A proliferation of models, often diverging widely in their projections, has been accompanied by criticism of the validity of modeled analyses and uncertainty as to when and to what extent results can be trusted. Drawing on examples from COVID-19 and other infectious diseases of global importance, we review key limitations of mathematical modeling as a tool for interpreting empirical data and informing individual and public decision making. We present several approaches that have been used to strengthen the validity of inferences drawn from these analyses, approaches that will enable better decision making in the current COVID-19 crisis and beyond.

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