CIRAD ES, UR Animal et Gestion intégrée des risques (AGIR), TA C 22/E, Campus International de Baillarguet, Montpellier, France.
Ecohealth. 2010 Sep;7(3):283-93. doi: 10.1007/s10393-010-0347-5. Epub 2010 Sep 24.
Predicting areas of disease emergence when no epidemiological data is available is essential for the implementation of efficient surveillance programs. The Inner Niger Delta (IND) in Mali is a major African wetland where >1 million Palearctic and African waterbirds congregate. Waterbirds are the main reservoir of Avian Influenza Viruses (AIV). Our objective was to model their spatial distribution in order to predict where these viruses would be more likely to circulate. We developed a generalized linear model (GLM) and a boosted regression trees (BRT) model based on total aerial bird counts taken in winter over 6 years. We used remotely sensed environmental variables with a high temporal resolution (10 days) to predict the spatial distribution of four waterbird groups. The predicted waterbird abundances were weighted with an epidemiological indicator based on the prevalence of low pathogenic AIV reported in the literature. The BRT model had the best predictive power and allowed prediction of the high variability of waterbird distribution. Years with low flood levels showed areas with a higher risk of circulation and had better spatial distribution predictions. Each year, the model identified a few areas with a higher risk of AIV circulation. This model can be applied every 10 days to evaluate the risk of AIV emergence in wild waterbirds. By taking into account the IND's ecological variability, it allows better targeting of areas considered for surveillance. This could enhance the control of emerging diseases at a local and regional scale, especially when resources available for surveillance programs are scarce.
当没有流行病学数据可用时,预测疾病出现的区域对于实施有效的监测计划至关重要。马里的尼日尔三角洲内陆(IND)是一个主要的非洲湿地,有超过 100 万只古北界和非洲水鸟聚集在这里。水鸟是禽流感病毒(AIV)的主要宿主。我们的目标是对其空间分布进行建模,以预测这些病毒更有可能传播的区域。我们开发了一个广义线性模型(GLM)和一个基于 6 年来冬季总共进行的空中鸟类计数的 boosted 回归树(BRT)模型。我们使用了具有高时间分辨率(10 天)的遥感环境变量来预测四个水鸟群的空间分布。预测的水鸟丰度根据文献中报道的低致病性 AIV 的流行率加权了一个流行病学指标。BRT 模型具有最佳的预测能力,并且允许预测水鸟分布的高度可变性。洪水水位较低的年份显示出循环风险较高的区域,并且具有更好的空间分布预测。每年,该模型都会确定一些高致病性 AIV 循环风险较高的区域。该模型可以每 10 天应用一次,以评估野生水鸟中 AIV 出现的风险。通过考虑到 IND 的生态变异性,可以更好地确定需要监测的区域。这可以增强对地方和区域范围内新发疾病的控制,特别是在监测计划可用资源稀缺的情况下。