Bayesian epidemiological modeling over high-resolution network data

被引:7
|
作者
Engblom, Stefan [1 ]
Eriksson, Robin [1 ]
Widgren, Stefan [2 ]
机构
[1] Uppsala Univ, Dept Informat Technol, Div Sci Comp, SE-75105 Uppsala, Sweden
[2] Natl Vet Inst, Dept Dis Control & Epidemiol, SE-75189 Uppsala, Sweden
基金
瑞典研究理事会;
关键词
Bayesian parameter estimation; Pathogen detection; Disease intervention; Synthetic likelihood; Spatial stochastic models; MONTE-CARLO; DISEASE; SPREAD; COMPUTATION; INFERENCE; CATTLE; STRATEGIES; INFLUENZA; VIRUS; O157;
D O I
10.1016/j.epidem.2020.100399
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
Mathematical epidemiological models have a broad use, including both qualitative and quantitative applications. With the increasing availability of data, large-scale quantitative disease spread models can nowadays be formulated. Such models have a great potential, e.g., in risk assessments in public health. Their main challenge is model parameterization given surveillance data, a problem which often limits their practical usage. We offer a solution to this problem by developing a Bayesian methodology suitable to epidemiological models driven by network data. The greatest difficulty in obtaining a concentrated parameter posterior is the quality of surveillance data; disease measurements are often scarce and carry little information about the parameters. The often overlooked problem of the model's identifiability therefore needs to be addressed, and we do so using a hierarchy of increasingly realistic known truth experiments. Our proposed Bayesian approach performs convincingly across all our synthetic tests. From pathogen measurements of shiga toxin-producing Escherichia coli 0157 in Swedish cattle, we are able to produce an accurate statistical model of first-principles confronted with data. Within this model we explore the potential of a Bayesian public health framework by assessing the efficiency of disease detection and -intervention scenarios.
引用
收藏
页数:9
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