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首页> 外文期刊>Electronic Physician >Modelling the regional vulnerability to Echinococcosis based on environmental factors using fuzzy inference system: A case study of Lorestan Province, west of Iran
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Modelling the regional vulnerability to Echinococcosis based on environmental factors using fuzzy inference system: A case study of Lorestan Province, west of Iran

机译:基于环境因素的模糊推论系统对埃希氏菌病区域脆弱性建模:以伊朗西部洛雷斯坦省为例

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Background and aim Echinococcosis as a zoonosis disease is one of the most important parasitic helminth that is affected by many risk factors such as the environmental factors. Thus, we predicted the regional vulnerability to Echinococcosis based on environmental factors using a fuzzy inference system (FIS) in Lorestan Province. Methods Our study was cross-sectional study on 200 patients from Lorestan Province (west of Iran) who underwent surgery for hydatidosis between October 2005 and November 2014. In order to model the vulnerability to Echinococcosis, first we determined the effective environmental variables. In the next step, the FIS was designed and implemented using MATLAB v.2012 software. Thus, definition and determination of linguistic variables, linguistic values, and their range were performed based on expert knowledge. Then, the membership functions of inputs (environmental variables) and output (vulnerability to Echinococcosis) were defined. A fuzzy rules base was formed. Also, the defuzzification of output was done using a centroid defuzzification function. To test the accuracy of the predictive model, we calculated the AUC (to this purpose, we used four different thresholds, 5%, 10%, 15%, and 20%) using IDRISI Selva v.17.0 software. Results Based on the results of this study, Aligoudarz and Koohdasht counties were identified as a highest and lowest risk area in Lorestan, respectively. The results showed that a predictive model was more efficient than a random model (AUC>0.5). Also, potential vulnerable areas cover 78.29% at threshold of 5%, 60.72% at threshold of 10%, 43.54% at threshold of 15%, and 39.82% at threshold of 20% of the study area. Conclusion According to the success of this research, we emphasized the necessity of attention to fuzzy approach to model vulnerability to hydatidosis. This approach can provide a practical economic basis for making informed preventive services decisions and the allocation of health resources.
机译:背景和目的棘球co虫病是一种人畜共患病,是最重要的寄生虫蠕虫之一,它受到许多危险因素(如环境因素)的影响。因此,我们使用洛尔斯坦省的模糊推理系统(FIS)根据环境因素预测了对埃希氏球菌病的区域脆弱性。方法我们的研究是对2005年10月至2014年11月间从Lorestan省(伊朗西部)接受手术治疗葡萄胎的200例患者的横断面研究。为了模拟对棘球co病的脆弱性,首先确定有效的环境变量。下一步,使用MATLAB v.2012软件设计和实现FIS。因此,基于专家知识对语言变量,语言值及其范围进行定义和确定。然后,定义了输入(环境变量)和输出(易感染棘球v病)的隶属函数。建立了模糊规则库。此外,使用质心去模糊化功能对输出进行去模糊化。为了测试预测模型的准确性,我们使用IDRISI Selva v.17.0软件计算了AUC(为此,我们使用了5%,10%,15%和20%四个不同的阈值)。结果根据这项研究的结果,分别将Aligoudarz和Koohdasht县确定为Lorestan的最高和最低风险地区。结果表明,预测模型比随机模型(AUC> 0.5)更有效。同样,潜在脆弱区域在研究区域的5%处占78.29%,在10%的阈值处占60.72%,在15%的阈值处占43.54%,在20%的阈值处占39.82%。结论根据这项研究的成功,我们强调了必须注意模糊方法以对hy虫病的脆弱性进行建模的必要性。这种方法可以为制定明智的预防服务决策和分配卫生资源提供实用的经济基础。

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