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Spatial data aggregation for spatio-temporal individual-level models of infectious disease transmission

机译:时空个体水平传染病传播模型的空间数据汇总

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摘要

A class of complex statistical models, known as individual-level models, have been effectively used to model the spread of infectious diseases. These models are often fitted within a Bayesian Markov chain Monte Carlo framework, which can have a sig nifkant computational expense due to the complex nature of the likelihood function associated with this class of models. Increases in population size or duration of the modeled epidemic can contribute to this computational burden. Here, we explore the effect of reducing this computational expense by aggregating the data into spatial clusters, and therefore reducing the overall population size. Individual-level models, reparameterized to account for this aggregation effect, may then be fitted to the spatially aggregated data. The ability of two reparameterized individual-level models, when fitted to this reduced data set, to identify a covariate effect is investigated through a simulation study.
机译:一类复杂的统计模型(称为个人级别模型)已被有效地用来模拟传染病的传播。这些模型通常装配在贝叶斯马尔可夫链蒙特卡洛框架内,由于与此类模型相关的似然函数的复杂性质,其计算开销可能很大。人口规模的增加或流行病的持续时间会增加这种计算负担。在这里,我们探索了通过将数据聚合到空间簇中来减少此计算费用的效果,从而减小了总体人口规模。重新参数化以解决此聚集效应的个体级别模型,然后可以拟合到空间聚集数据。通过模拟研究,研究了两个重新参数化的个人级别模型在适应此精简数据集后识别协变量效应的能力。

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