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Accounting for biological variability and sampling scale: a multi-scale approach to building epidemic models

机译:解释生物变异性和抽样规模:建立流行病模型的多尺度方法

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摘要

When one considers the fine-scale spread of an epidemic, one usually knows the sources of biological variability and their qualitative effect on the epidemic process. The force of infection on a susceptible unit depends on the locations and the strengths of the infectious units, and on the environmental and intrinsic factors affecting infectivity and/or susceptibility. The infection probability for the susceptible unit can then be modelled as a function of these factors. Thus, one can build a conceptual model at the fine scale. However, the epidemic is generally observed at a larger scale and one has to build a model adapted to this larger scale. But how can the sources of variation identified at the fine scale be integrated into the model at the larger scale? To answer this question, we present, in the context of plant epidemiology, a multi-scale approach which consists of defining a base model built at the fine scale and upscaling it to match the scale of the sampling and the data. This approach will enable comparing experiments involving different observational processes.
机译:当人们考虑到流行病的小规模传播时,通常会知道生物学变异的来源及其对流行过程的定性影响。在易感单位上的感染力取决于感染单位的位置和强度,以及影响感染性和/或易感性的环境因素和内在因素。然后可以根据这些因素对易感单位的感染概率进行建模。因此,人们可以建立一个精细的概念模型。但是,通常在较大规模上观察到该流行病,因此必须建立一种适应于该较大规模的模型。但是,如何在较大规模上将识别出的变化源整合到较大规模的模型中呢?为了回答这个问题,在植物流行病学的背景下,我们提出了一种多尺度方法,该方法包括定义一个以小规模构建的基础模型,然后将其放大以匹配采样规模和数据规模。这种方法将使比较涉及不同观察过程的实验成为可能。

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