TY - JOUR
T1 - Estimation and inference of R0 of an infectious pathogen by a removal method
AU - Ferrari, Matthew J.
AU - Bjørnstad, Ottar N.
AU - Dobson, Andrew P.
N1 - Funding Information:
We would like to thank Ben Bolker for his help with the profile likelihoods and three anonymous reviewers for constructive comments and bringing to our attention an algebraic error that greatly improved the performance of the estimator. This research was supported in part by the John E. Fogarty Center of the National Institutes of Health (ONB).
PY - 2005/11
Y1 - 2005/11
N2 - The basic reproductive ratio, R0, is a central quantity in the investigation and management of infectious pathogens. The standard model for describing stochastic epidemics is the continuous time epidemic birth-and-death process. The incidence data used to fit this model tend to be collected in discrete units (days, weeks, etc.), which makes model fitting, and estimation of R0 difficult. Discrete time epidemic models better match the time scale of data collection but make simplistic assumptions about the stochastic epidemic process. By investigating the nature of the assumptions of a discrete time epidemic model, we derive a bias corrected maximum likelihood estimate of R0 based on the chain binomial model. The resulting 'removal' estimators provide estimates of R0 and the initial susceptible population size from time series of infectious case counts. We illustrate the performance of the estimators on both simulated data and real epidemics. Lastly, we discuss methods to address data collected with observation error.
AB - The basic reproductive ratio, R0, is a central quantity in the investigation and management of infectious pathogens. The standard model for describing stochastic epidemics is the continuous time epidemic birth-and-death process. The incidence data used to fit this model tend to be collected in discrete units (days, weeks, etc.), which makes model fitting, and estimation of R0 difficult. Discrete time epidemic models better match the time scale of data collection but make simplistic assumptions about the stochastic epidemic process. By investigating the nature of the assumptions of a discrete time epidemic model, we derive a bias corrected maximum likelihood estimate of R0 based on the chain binomial model. The resulting 'removal' estimators provide estimates of R0 and the initial susceptible population size from time series of infectious case counts. We illustrate the performance of the estimators on both simulated data and real epidemics. Lastly, we discuss methods to address data collected with observation error.
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U2 - 10.1016/j.mbs.2005.08.002
DO - 10.1016/j.mbs.2005.08.002
M3 - Article
C2 - 16216286
AN - SCOPUS:27644594199
SN - 0025-5564
VL - 198
SP - 14
EP - 26
JO - Mathematical Biosciences
JF - Mathematical Biosciences
IS - 1
ER -