Conley Amy K, Fuller Douglas O, Haddad Nabil, Hassan Ali N, Gad Adel M, Beier John C
Department of Geography, University of Miami, 1300 Campo Sano Avenue, Coral Gables, FL 33146, USA.
Parasit Vectors. 2014 Jun 24;7:289. doi: 10.1186/1756-3305-7-289.
The Middle East North Africa (MENA) region is under continuous threat of the re-emergence of West Nile virus (WNV) and Rift Valley Fever virus (RVF), two pathogens transmitted by the vector species Culex pipiens. Predicting areas at high risk for disease transmission requires an accurate model of vector distribution, however, most Cx. pipiens distribution modeling has been confined to temperate, forested habitats. Modeling species distributions across a heterogeneous landscape structure requires a flexible modeling method to capture variation in mosquito response to predictors as well as occurrence data points taken from a sufficient range of habitat types.
We used presence-only data from Egypt and Lebanon to model the population distribution of Cx. pipiens across a portion of the MENA that also encompasses Jordan, Syria, and Israel. Models were created with a set of environmental predictors including bioclimatic data, human population density, hydrological data, and vegetation indices, and built using maximum entropy (Maxent) and boosted regression tree (BRT) methods. Models were created with and without the inclusion of human population density.
Predictions of Maxent and BRT models were strongly correlated in habitats with high probability of occurrence (Pearson's r=0.774, r=0.734), and more moderately correlated when predicting into regions that exceeded the range of the training data (r=0.666,r=0.558). All models agreed in predicting high probability of occupancy around major urban areas, along the banks of the Nile, the valleys of Israel, Lebanon, and Jordan, and southwestern Saudi Arabia. The most powerful predictors of Cx. pipiens habitat were human population density (60.6% Maxent models, 34.9% BRT models) and the seasonality of the enhanced vegetation index (EVI) (44.7% Maxent, 16.3% BRT). Maxent models tended to be dominated by a single predictor. Areas of high probability corresponded with sites of independent surveys or previous disease outbreaks.
Cx. pipiens occurrence was positively associated with areas of high human population density and consistent vegetation cover, but was not significantly driven by temperature and rainfall, suggesting human-induced habitat change such as irrigation and urban infrastructure has a greater influence on vector distribution in this region than in temperate zones.
中东和北非(MENA)地区持续面临西尼罗河病毒(WNV)和裂谷热病毒(RVF)再次出现的威胁,这两种病原体由媒介物种致倦库蚊传播。预测疾病传播的高风险区域需要准确的媒介分布模型,然而,大多数致倦库蚊分布建模局限于温带森林栖息地。在异质景观结构中对物种分布进行建模需要一种灵活的建模方法,以捕捉蚊子对预测因子的反应变化以及从足够广泛的栖息地类型获取的出现数据点。
我们使用来自埃及和黎巴嫩的仅存在数据,对MENA地区一部分(包括约旦、叙利亚和以色列)的致倦库蚊种群分布进行建模。模型利用一组环境预测因子创建,包括生物气候数据、人口密度、水文数据和植被指数,并使用最大熵(Maxent)和增强回归树(BRT)方法构建。模型在包含和不包含人口密度的情况下创建。
在出现概率高的栖息地,Maxent模型和BRT模型的预测高度相关(皮尔逊相关系数r = 0.774,r = 0.734),而在预测超出训练数据范围的区域时,相关性中等(r = 0.666,r = 0.558)。所有模型都一致预测主要城市地区周围、尼罗河沿岸、以色列、黎巴嫩和约旦的山谷以及沙特阿拉伯西南部的占用概率高。致倦库蚊栖息地最有力的预测因子是人口密度(Maxent模型占60.6%,BRT模型占34.9%)和增强植被指数(EVI)的季节性(Maxent模型占44.7%,BRT模型占16.3%)。Maxent模型往往由单一预测因子主导。高概率区域与独立调查地点或先前疾病爆发地点相对应。
致倦库蚊的出现与高人口密度和一致的植被覆盖区域呈正相关,但不受温度和降雨的显著驱动,这表明人为引起的栖息地变化,如灌溉和城市基础设施,对该地区媒介分布的影响比温带地区更大。