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首页> 外文期刊>Malaria Journal >Large-scale drivers of malaria and priority areas for prevention and control in the Brazilian Amazon region using a novel multi-pathogen geospatial model
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Large-scale drivers of malaria and priority areas for prevention and control in the Brazilian Amazon region using a novel multi-pathogen geospatial model

机译:使用新型的多病原地理空间模型在巴西亚马逊地区大规模疟疾驱动因素和预防和控制重点领域

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Background Most of the malaria burden in the Americas is concentrated in the Brazilian Amazon but a detailed spatial characterization of malaria risk has yet to be undertaken. Methods Utilizing 2004-2008 malaria incidence data collected from six Brazilian Amazon states, large-scale spatial patterns of malaria risk were characterized with a novel Bayesian multi-pathogen geospatial model. Data included 2.4 million malaria cases spread across 3.6 million sq km. Remotely sensed variables (deforestation rate, forest cover, rainfall, dry season length, and proximity to large water bodies), socio-economic variables (rural population size, income, and literacy rate, mortality rate for children age under five, and migration patterns), and GIS variables (proximity to roads, hydro-electric dams and gold mining operations) were incorporated as covariates. Results Borrowing information across pathogens allowed for better spatial predictions of malaria caused by Plasmodium falciparum, as evidenced by a ten-fold cross-validation. Malaria incidence for both Plasmodium vivax and P. falciparum tended to be higher in areas with greater forest cover. Proximity to gold mining operations was another important risk factor, corroborated by a positive association between migration rates and malaria incidence. Finally, areas with a longer dry season and areas with higher average rural income tended to have higher malaria risk. Risk maps reveal striking spatial heterogeneity in malaria risk across the region, yet these mean disease risk surface maps can be misleading if uncertainty is ignored. By combining mean spatial predictions with their associated uncertainty, several sites were consistently classified as hotspots, suggesting their importance as priority areas for malaria prevention and control. Conclusion This article provides several contributions. From a methodological perspective, the benefits of jointly modelling multiple pathogens for spatial predictions were illustrated. In addition, maps of mean disease risk were contrasted with that of statistically significant disease clusters, highlighting the critical importance of uncertainty in determining disease hotspots. From an epidemiological perspective, forest cover and proximity to gold mining operations were important large-scale drivers of disease risk in the region. Finally, the hotspot in Western Acre was identified as the area that should receive highest priority from the Brazilian national malaria prevention and control programme.
机译:背景技术美洲的大多数疟疾负担都集中在巴西的亚马逊地区,但尚未对疟疾风险进行详细的空间表征。方法利用从巴西六个亚马逊州收集的2004-2008年疟疾发病率数据,采用新颖的贝叶斯多病原地理空间模型对大规模的疟疾风险空间格局进行表征。数据包括360万平方公里的240万疟疾病例。遥感变量(森林砍伐率,森林覆盖率,降雨,干旱季节长度和靠近大型水体),社会经济变量(农村人口规模,收入和识字率,五岁以下儿童的死亡率和迁移方式) ),并将GIS变量(临近道路,水电大坝和金矿开采作业)作为协变量。结果跨病原体的借阅信息可以更好地预测由恶性疟原虫引起的疟疾的空间预测,这是十倍交叉验证所证明的。在森林覆盖率较高的地区,间日疟原虫和恶性疟原虫的疟疾发病率往往较高。靠近金矿开采是另一个重要的风险因素,移民率和疟疾发病率之间存在正相关关系,这印证了这一点。最后,干旱季节较长的地区和农村平均收入较高的地区往往有较高的疟疾风险。风险图揭示了整个地区疟疾风险的显着空间异质性,但是,如果忽略不确定性,这些平均疾病风险面图可能会产生误导。通过将平均空间预测及其相关的不确定性相结合,几个地点被一致地归类为热点,表明它们是疟疾预防和控制的重点领域。结论本文提供了一些贡献。从方法学的角度,说明了为空间预测联合建模多种病原体的好处。此外,将平均疾病风险图与统计学上显着的疾病群图进行了对比,突显了不确定性在确定疾病热点方面的至关重要性。从流行病学的角度来看,森林覆盖和接近金矿开采是该地区疾病风险的重要大规模驱动因素。最后,西部英亩的热点被确定为巴西国家疟疾预防和控制计划应给予最高优先重视的地区。

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