4.3 Article

An approximate Bayesian approach for estimation of the instantaneous reproduction number under misreported epidemic data

期刊

BIOMETRICAL JOURNAL
卷 65, 期 6, 页码 -

出版社

WILEY
DOI: 10.1002/bimj.202200024

关键词

Bayesian P-splines; epidemic renewal equation; Laplace approximation; misreported data

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In epidemic models, the effective reproduction number is crucial for assessing disease transmission dynamics and guiding health intervention strategies. Publicly shared outbreak data often suffer from misreporting, which needs to be considered when estimating epidemiological parameters. This study proposes a faster alternative method based on Laplacian-P-splines for estimating the time-varying reproduction number and considering misreporting, achieving fast and accurate estimates.
In epidemic models, the effective reproduction number is of central importance to assess the transmission dynamics of an infectious disease and to orient health intervention strategies. Publicly shared data during an outbreak often suffers from two sources of misreporting (underreporting and delay in reporting) that should not be overlooked when estimating epidemiological parameters. The main statistical challenge in models that intrinsically account for a misreporting process lies in the joint estimation of the time-varying reproduction number and the delay/underreporting parameters. Existing Bayesian approaches typically rely on Markov chain Monte Carlo algorithms that are extremely costly from a computational perspective. We propose a much faster alternative based on Laplacian-P-splines (LPS) that combines Bayesian penalized B-splines for flexible and smooth estimation of the instantaneous reproduction number and Laplace approximations to selected posterior distributions for fast computation. Assuming a known generation interval distribution, the incidence at a given calendar time is governed by the epidemic renewal equation and the delay structure is specified through a composite link framework. Laplace approximations to the conditional posterior of the spline vector are obtained from analytical versions of the gradient and Hessian of the log-likelihood, implying a drastic speed-up in the computation of posterior estimates. Furthermore, the proposed LPS approach can be used to obtain point estimates and approximate credible intervals for the delay and reporting probabilities. Simulation of epidemics with different combinations for the underreporting rate and delay structure (one-day, two-day, and weekend delays) show that the proposed LPS methodology delivers fast and accurate estimates outperforming existing methods that do not take into account underreporting and delay patterns. Finally, LPS is illustrated in two real case studies of epidemic outbreaks.

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