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首页> 外文期刊>Veterinary Research: A Journal on Animal Infection >Representation of animal distributions in space: how geostatistical estimates impact simulation modeling of foot-and-mouth disease spread
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Representation of animal distributions in space: how geostatistical estimates impact simulation modeling of foot-and-mouth disease spread

机译:表征动物在空间中的分布:地统计学估计如何影响口蹄疫传播的模拟模型

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Modeling potential disease spread in wildlife populations is important for predicting, responding to and recovering from a foreign animal disease incursion. To make spatial epidemic predictions, the target animal species of interest must first be represented in space. We conducted a series of simulation experiments to determine how estimates of the spatial distribution of white-tailed deer impact the predicted magnitude and distribution of foot-and-mouth disease (FMD) outbreaks. Outbreaks were simulated using a susceptible-infected-recovered geographic automata model. The study region was a 9-county area (24 000 km(2)) of southern Texas. Methods used for creating deer distributions included dasymetric mapping, kriging and remotely sensed image analysis. The magnitudes and distributions of the predicted outbreaks were evaluated by comparing the median number of deer infected and median area affected (km(2)), respectively. The methods were further evaluated for similar predictive power by comparing the model predicted outputs with unweighted pair group method with arithmetic mean (UPGMA) clustering. There were significant differences in the estimated number of deer in the study region, based on the geostatistical estimation procedure used (range: 385 939-768 493). There were also substantial differences in the predicted magnitude of the FMD outbreaks (range: 1 563-8 896) and land area affected (range: 56-447 km(2)) for the different estimated animal distributions. UPGMA clustering indicated there were two main groups of distributions, and one outlier. We recommend that one distribution from each of these two groups be used to model the range of possible outbreaks. Methods included in cluster 1 (such as county-level disaggregation) could be used in conjunction with any of the methods in cluster 2, which included kriging, NDVI split by ecoregion, or disaggregation at the regional level, to represent the variability in the model predicted outbreak distributions. How animal populations are represented needs to be considered in all spatial disease spread models.
机译:对在野生生物种群中传播的潜在疾病进行建模对于预测,应对外来动物疾病入侵并从中恢复很重要。为了进行空间流行病预测,必须首先在空间中表示目标动物的目标物种。我们进行了一系列模拟实验,以确定对白尾鹿空间分布的估计如何影响口蹄疫(FMD)爆发的预测规模和分布。使用易感感染恢复的地理自动机模型模拟爆发。研究区域是德克萨斯州南部的一个9县地区(2.4万公里(2))。用于创建鹿分布的方法包括等距映射,克里金法和遥感图像分析。通过分别比较感染鹿的中位数和受影响的中位数(km(2))来评估预测暴发的规模和分布。通过将模型预测输出与算术平均值(UPGMA)聚类的未加权对组方法进行比较,进一步评估了这些方法的相似预测能力。根据所使用的地统计估计程序,研究区域中鹿的估计数量存在显着差异(范围:385 939-768 493)。对于不同的估计动物分布,口蹄疫暴发的预计规模(范围:1 563-8 896)和受影响的土地面积(范围:56-447 km(2))也存在很大差异。 UPGMA聚类表明存在两个主要的分布组,一个异常值。我们建议使用这两个组中的每一个的分布来模拟可能爆发的范围。聚类1中包含的方法(例如县级分类)可以与聚类2中的任何方法结合使用,包括克里金法,按生态区域划分的NDVI或区域一级的分类,以表示模型中的变异性预测的暴发分布。在所有空间疾病传播模型中都需要考虑如何代表动物种群。

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