Inferring the dynamics of a spatial epidemic from time-series data

被引:0
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作者
J. A. N. Filipe
W. Otten
G. J. Gibson
C. A. Gilligan
机构
[1] University of Cambridge,Department of Plant Sciences
[2] Heriot-Watt University,Department of Actuarial Mathematics and Statistics
[3] Imperial College London,Department of Infectious Disease Epidemiology
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关键词
Primary Infection; Secondary Infection; Near Neighbour; Disease Progress Curve; Pair Approximation;
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摘要
Spatial interactions are key determinants in the dynamics of many epidemiological and ecological systems; therefore it is important to use spatio-temporal models to estimate essential parameters. However, spatially-explicit data sets are rarely available; moreover, fitting spatially-explicit models to such data can be technically demanding and computationally intensive. Thus non-spatial models are often used to estimate parameters from temporal data. We introduce a method for fitting models to temporal data in order to estimate parameters which characterise spatial epidemics. The method uses semi-spatial models and pair approximation to take explicit account of spatial clustering of disease without requiring spatial data. The approach is demonstrated for data from experiments with plant populations invaded by a common soilborne fungus, Rhizoctonia solani. Model inferences concerning the number of sources of disease and primary and secondary infections are tested against independent measures from spatio-temporal data. The applicability of the method to a wide range of host-pathogen systems is discussed.
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页码:373 / 391
页数:18
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