A generalized-growth model to characterize the early ascending phase of infectious disease outbreaks
C\'ecile Viboud, Lone Simonsen, Gerardo Chowell

TL;DR
This paper introduces a flexible 2-parameter model to characterize early epidemic growth, capturing a spectrum from sub-exponential to exponential patterns across various infectious diseases, improving understanding and forecasting of outbreaks.
Contribution
The study presents a novel generalized-growth model that accurately describes diverse early epidemic growth patterns, emphasizing the importance of sub-exponential growth in disease modeling.
Findings
Epidemic growth varies widely from slow to exponential.
Sub-exponential growth is common and significant.
Growth patterns differ across diseases and regions.
Abstract
A better characterization of the early growth dynamics of an epidemic is needed to dissect the important drivers of disease transmission. We introduce a 2-parameter generalized-growth model to characterize the ascending phase of an outbreak and capture epidemic profiles ranging from sub-exponential to exponential growth. We test the model against empirical outbreak data representing a variety of viral pathogens and provide simulations highlighting the importance of sub-exponential growth for forecasting purposes. We applied the generalized-growth model to 20 infectious disease outbreaks representing a range of transmission routes. We uncovered epidemic profiles ranging from very slow growth (p=0.14 for the Ebola outbreak in Bomi, Liberia (2014)) to near exponential (p>0.9 for the smallpox outbreak in Khulna (1972), and the 1918 pandemic influenza in San Francisco). The foot-and-mouth…
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