Sofizadeh Aioub, Rassi Yavar, Vatandoost Hassan, Hanafi-Bojd Ahmad Ali, Mollalo Abolfazl, Rafizadeh Sayena, Akhavan Amir Ahmad
Ph.D student in Medical Entomology and Vector Control, International Campus, Tehran University of Medical Sciences, Tehran, Iran (
Department of Medical Entomology and Vector Control, School of Public Health, Tehran University of Medical Sciences, Tehran, Iran (
J Med Entomol. 2017 Mar 1;54(2):312-320. doi: 10.1093/jme/tjw178.
Zoonotic cutaneous leishmaniasis (ZCL) is a prevalent vector-borne disease in the Golestan province of Iran, with Phlebotomus papatasi (Scopoli, 1786) serving as the main vector. The aim of this study was to model the probability of presence of this species in the study area, and to determine the underlying factors affecting its distribution. Three villages were selected from each county of the province and visited monthly for investigating ZCL. Sticky paper traps were used for collecting the sand flies to determine the species present. The presence of Ph. papatasi was modeled using genetic algorithm for rule-set production (GARP) and maximum entropy (MaxEnt) techniques. Both models showed the central and northern parts of the province with lowland areas were more vulnerable to Ph. papatasi propagation, in comparison with the southern parts with mountainous and forest areas. The area under curve (AUC) of MaxEnt model for the training points was calculated as 0.90, indicating excellent performance of the model in predicting Ph. papatasi distribution. Jackknife test showed that the factors with the greatest influence in vector distribution were slope, vegetation cover, annual mean temperature, and altitude. By using ecological niche models, it is possible to identify areas with higher probability of presence of Ph. papatasi, which guides public health policy makers for planning better vector control interventions.
人兽共患皮肤利什曼病(ZCL)是伊朗戈勒斯坦省一种普遍的媒介传播疾病,巴氏白蛉(Scopoli,1786)是主要传播媒介。本研究的目的是对该物种在研究区域出现的概率进行建模,并确定影响其分布的潜在因素。从该省的每个县选取了三个村庄,每月进行走访以调查ZCL。使用粘纸诱捕器收集白蛉以确定存在的物种。利用遗传算法规则集生成(GARP)和最大熵(MaxEnt)技术对巴氏白蛉的存在情况进行建模。与山区和森林覆盖的南部地区相比,这两种模型均显示该省中部和北部的低地地区更容易受到巴氏白蛉繁殖的影响。训练点的MaxEnt模型的曲线下面积(AUC)计算为0.90,表明该模型在预测巴氏白蛉分布方面表现出色。刀切法检验表明,对媒介分布影响最大的因素是坡度、植被覆盖、年平均温度和海拔高度。通过使用生态位模型,可以识别巴氏白蛉出现概率较高的区域,这为公共卫生政策制定者规划更好的媒介控制干预措施提供了指导。