Volume 51, Issue 6
Research Article

Additive‐Multiplicative Regression Models for Spatio‐Temporal Epidemics

Michael Höhle

Corresponding Author

E-mail address: michael.hoehle@stat.uni‐muenchen.de

Department of Statistics, Ludwig‐Maximilians‐Universität München, Ludwigstr. 33, 80539 München, Germany

Munich Center of Health Sciences, Germany

Phone: +4989‐2180‐3803, Fax: +4989‐2180‐5040Search for more papers by this author
First published: 22 December 2009
Citations: 16

Abstract

An extension of the stochastic susceptible–infectious–recovered (SIR) model is proposed in order to accommodate a regression context for modelling infectious disease data. The proposal is based on a multivariate counting process specified by conditional intensities, which contain an additive epidemic component and a multiplicative endemic component. This allows the analysis of endemic infectious diseases by quantifying risk factors for infection by external sources in addition to infective contacts. Inference can be performed by considering the full likelihood of the stochastic process with additional parameter restrictions to ensure non‐negative conditional intensities. Simulation from the model can be performed by Ogata's modified thinning algorithm. As an illustrative example, we analyse data provided by the Federal Research Centre for Virus Diseases of Animals, Wusterhausen, Germany, on the incidence of the classical swine fever virus in Germany during 1993–2004.

Number of times cited according to CrossRef: 16

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