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Improving Risk Models for Avian Influenza: The Role of Intensive Poultry Farming and Flooded Land during the 2004 Thailand Epidemic

机译:改善禽流感风险模型:强化家禽养殖的2004年泰国流行期间的作用和水淹地

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摘要

Since 1996 when Highly Pathogenic Avian Influenza type H5N1 first emerged in southern China, numerous studies sought risk factors and produced risk maps based on environmental and anthropogenic predictors. However little attention has been paid to the link between the level of intensification of poultry production and the risk of outbreak. This study revised H5N1 risk mapping in Central and Western Thailand during the second wave of the 2004 epidemic. Production structure was quantified using a disaggregation methodology based on the number of poultry per holding. Population densities of extensively- and intensively-raised ducks and chickens were derived both at the sub-district and at the village levels. LandSat images were used to derive another previously neglected potential predictor of HPAI H5N1 risk: the proportion of water in the landscape resulting from floods. We used Monte Carlo simulation of Boosted Regression Trees models of predictor variables to characterize the risk of HPAI H5N1. Maps of mean risk and uncertainty were derived both at the sub-district and the village levels. The overall accuracy of Boosted Regression Trees models was comparable to that of logistic regression approaches. The proportion of area flooded made the highest contribution to predicting the risk of outbreak, followed by the densities of intensively-raised ducks, extensively-raised ducks and human population. Our results showed that as little as 15% of flooded land in villages is sufficient to reach the maximum level of risk associated with this variable. The spatial pattern of predicted risk is similar to previous work: areas at risk are mainly located along the flood plain of the Chao Phraya river and to the south-east of Bangkok. Using high-resolution village-level poultry census data, rather than sub-district data, the spatial accuracy of predictions was enhanced to highlight local variations in risk. Such maps provide useful information to guide intervention.
机译:自1996年中国南部首次出现高致病性禽流感H5N1型以来,许多研究都在寻找风险因素,并根据环境和人为因素预测了风险图。但是,人们很少关注家禽生产集约化程度与爆发风险之间的联系。这项研究修订了2004年第二次流行期间泰国中部和西部地区H5N1风险图。使用分解方法根据每家禽的家禽数量对生产结构进行量化。在分区和乡村一级都得出了粗养和精养鸭和鸡的人口密度。 LandSat图像用于得出HPAI H5N1风险的另一个先前被忽略的潜在预测指标:洪水造成的景观中水的比例。我们使用蒙特卡洛模拟的预测变量的Boosted Regression Trees模型来表征HPAI H5N1的风险。在街道和村庄两级均绘制了平均风险和不确定性图。 Boosted回归树模型的总体准确性与逻辑回归方法相当。洪水面积的比例对预测暴发风险做出了最大贡献,其次是密集饲养的鸭子,广泛饲养的鸭子和人口的密度。我们的结果表明,只有15%的村庄被淹土地足以达到与该变量相关的最大风险水平。预测风险的空间格局与先前的工作类似:风险区域主要位于湄南河泛滥平原和曼谷东南部。使用高分辨率的村级家禽普查数据而不是分区数据,可以提高预测的空间准确性,以突出显示风险的局部变化。这样的地图提供了有用的信息来指导干预。

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