Rajabi Mohamadreza, Mansourian Ali, Bazmani Ahad
Faculty of Geodesy and Geomatics Eng. K.N. Toosi University of Technology, No. 1346, Mirdamad cross, Valiasr st., Tehran, Iran.
Geospat Health. 2012 Nov;7(1):37-50. doi: 10.4081/gh.2012.103.
Visceral leishmaniasis (VL) is a vector-borne disease, highly influenced by environmental factors, which is an increasing public health problem in Iran, especially in the north-western part of the country. A geographical information system was used to extract data and map environmental variables for all villages in the districts of Kalaybar and Ahar in the province of East Azerbaijan. An attempt to predict VL prevalence based on an analytical hierarchy process (AHP) module combined with ordered weighted averaging (OWA) with fuzzy quantifiers indicated that the south-eastern part of Ahar is particularly prone to high VL prevalence. With the main objective to locate the villages most at risk, the opinions of experts and specialists were generalised into a group decision-making process by means of fuzzy weighting methods and induced OWA. The prediction model was applied throughout the entire study area (even where the disease is prevalent and where data already exist). The predicted data were compared with registered VL incidence records in each area. The results suggest that linguistic fuzzy quantifiers, guided by an AHP-OWA model, are capable of predicting susceptive locations for VL prevalence with an accuracy exceeding 80%. The group decision-making process demonstrated that people in 15 villages live under particularly high risk for VL contagion, i.e. villages where the disease is highly prevalent. The findings of this study are relevant for the planning of effective control strategies for VL in northwest Iran.
内脏利什曼病(VL)是一种受环境因素高度影响的媒介传播疾病,在伊朗,尤其是该国西北部,它已成为一个日益严重的公共卫生问题。利用地理信息系统提取了东阿塞拜疆省卡拉伊巴尔和阿哈尔地区所有村庄的环境变量数据并绘制地图。基于层次分析法(AHP)模块结合带有模糊量词的有序加权平均法(OWA)来预测VL患病率的尝试表明,阿哈尔的东南部尤其容易出现高VL患病率。为了找出风险最高的村庄,通过模糊加权法和诱导OWA将专家和专业人员的意见归纳为一个群体决策过程。该预测模型应用于整个研究区域(即使在疾病流行且已有数据的地区)。将预测数据与每个地区登记的VL发病率记录进行比较。结果表明,在层次分析法 - 有序加权平均法(AHP - OWA)模型的指导下,语言模糊量词能够以超过80%的准确率预测VL患病率的易感地点。群体决策过程表明,有15个村庄的居民面临VL感染的特别高风险,即疾病高度流行的村庄。本研究结果对于伊朗西北部VL有效控制策略的规划具有参考价值。