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Risk Mapping of Cutaneous Leishmaniasis via a Fuzzy C Means-based Neuro-Fuzzy Inference System

机译:通过基于模糊的C型神经模糊推理系统的皮肤利什曼病风险映射

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Finding pathogenic factors and how they are spread in the environment has become a global demand, recently. Cutaneous Leishmaniasis (CL) created by Leishmania is a special parasitic disease which can be passed on to human through phlebotomus of vector-born. Studies show that economic situation, cultural issues, as well as environmental and ecological conditions can affect the prevalence of this disease. In this study, Data Mining is utilized in order to predict CL prevalence rate and obtain a risk map. This case is based on effective environmental parameters on CL and a Neuro-Fuzzy system was also used. Learning capacity of Neuro-Fuzzy systems in neural network on one hand and reasoning power of fuzzy systems on the other, make it very efficient to use. In this research, in order to predict CL prevalence rate, an adaptive Neuro-fuzzy inference system with fuzzy inference structure of fuzzy C Means clustering was applied to determine the initial membership functions. Regarding to high incidence of CL in Ilam province, counties of Ilam, Mehran, and Dehloran have been examined and evaluated. The CL prevalence rate was predicted in 2012 by providing effective environmental map and topography properties including temperature, moisture, annual, rainfall, vegetation and elevation. Results indicate that the model precision with fuzzy C Means clustering structure rises acceptable RMSE values of both training and checking data and support our analyses. Using the proposed data mining technology, the pattern of disease spatial distribution and vulnerable areas become identifiable and the map can be used by experts and decision makers of public health as a useful tool in management and optimal decision-making.
机译:最近,寻找病原因素以及它们在环境中的蔓延成为全球需求。由Leishmania创建的皮肤LeishManiaisis(CL)是一种特殊的寄生疾病,可以通过v v version-both的痰多传递给人类。研究表明,经济形势,文化问题以及环境和生态条件会影响这种疾病的患病率。在本研究中,利用数据挖掘以预测CL流行率并获得风险地图。这种情况是基于CL的有效环境参数,也使用了神经模糊系统。在一方面的神经网络中神经模糊系统的学习能力及对方模糊系统的推理能力,使其非常有效。在本研究中,为了预测CL流行率,应用模糊C意味着聚类的模糊推理结构的自适应神经模糊推理系统以确定初始隶属函数。关于ILAM省中CL的高发病率,已检查和评估伊拉姆,Mehran和Dehloran的县。 2012年通过提供有效的环境图和地形性能,包括温度,水分,年度,降雨,植被和海拔地貌,预测了CL流行率。结果表明,具有模糊C的模型精度培养结构培养和检查数据的可接受的RMSE值并支持我们的分析。使用所提出的数据挖掘技术,疾病空间分布和脆弱地区的模式变得可识别,地图可以由公共卫生的专家和决策者作为管理和最佳决策的有用工具使用。

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