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Risk mapping of Rinderpest sero-prevalence in Central and Southern Somalia based on spatial and network risk factors

机译:基于空间和网络风险因素的索马里中南部牛瘟血清流行率风险图

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Background In contrast to most pastoral systems, the Somali livestock production system is oriented towards domestic trade and export with seasonal movement patterns of herds/flocks in search of water and pasture and towards export points. Data from a rinderpest survey and other data sources have been integrated to explore the topology of a contact network of cattle herds based on a spatial proximity criterion and other attributes related to cattle herd dynamics. The objective of the study is to integrate spatial mobility and other attributes with GIS and network approaches in order to develop a predictive spatial model of presence of rinderpest. Results A spatial logistic regression model was fitted using data for 562 point locations. It includes three statistically significant continuous-scale variables that increase the risk of rinderpest: home range radius, herd density and clustering coefficient of the node of the network whose link was established if the sum of the home ranges of every pair of nodes was equal or greater than the shortest distance between the points. The sensitivity of the model is 85.1% and the specificity 84.6%, correctly classifying 84.7% of the observations. The spatial autocorrelation not accounted for by the model is negligible and visual assessment of a semivariogram of the residuals indicated that there was no undue amount of spatial autocorrelation. The predictive model was applied to a set of 6176 point locations covering the study area. Areas at high risk of having serological evidence of rinderpest are located mainly in the coastal districts of Lower and Middle Juba, the coastal area of Lower Shabele and in the regions of Middle Shabele and Bay. There are also isolated spots of high risk along the border with Kenya and the southern area of the border with Ethiopia. Conclusions The identification of point locations and areas with high risk of presence of rinderpest and their spatial visualization as a risk map will be useful for informing the prioritization of disease surveillance and control activities for rinderpest in Somalia. The methodology applied here, involving spatial and network parameters, could also be applied to other diseases and/or species as part of a standardized approach for the design of risk-based surveillance activities in nomadic pastoral settings.
机译:背景技术与大多数牧业系统相比,索马里畜牧生产系统以国内贸易和出口为导向,其畜群/羊群的季节性运动方式在寻找水和牧场,并朝着出口点发展。来自牛瘟调查的数据和其他数据源已被集成,以基于空间邻近性标准和与牛群动态相关的其他属性来探索牛群接触网络的拓扑。这项研究的目的是将空间流动性和其他属性与GIS和网络方法相结合,以开发一种预测性的牛瘟存在的空间模型。结果使用562个点位置的数据拟合了空间逻辑回归模型。它包括三个具有统计学意义的,具有连续统计学意义的连续变量,这些变量会增加牛瘟的风险:如果每对节点的家庭范围之和相等或已建立链接,则建立链接的网络节点的家庭范围半径,畜群密度和聚类系数大于两点之间的最短距离。该模型的敏感性为85.1%,特异性为84.6%,正确分类了观察值的84.7%。模型未考虑的空间自相关可以忽略不计,对残差半变异函数的视觉评估表明不存在过多的空间自相关。将预测模型应用于覆盖研究区域的一组6176个点位置。有牛瘟血清学证据的高风险地区主要位于下朱巴中部和中部沿海地区,下谢贝利州沿海地区以及谢贝利中部和海湾地区。在与肯尼亚接壤的边界以及与埃塞俄比亚接壤的南部地区,也有一些高风险的孤立地点。结论确定牛瘟存在的高风险的点位置和区域,并将其空间可视化为风险图,将有助于确定索马里牛瘟疾病监测和控制活动的优先次序。此处使用的涉及空间和网络参数的方法,也可以应用于其他疾病和/或物种,作为设计游牧牧区中基于风险的监视活动的标准化方法的一部分。

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