Abstract

Abstract. 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.

Highlights

  • Leishmaniasis is the third commonest vector-borne disease and a very important protozoan infection

  • Cutaneous Leishmaniasis (CL) is an environmental disease since its transmission depends on the distribution and abundance of vectors and reservoirs which are sensitive to environmental factors

  • The relation between Climatic/environmental factors and CL prevalence rate allows the prediction of CL prevalence rate at locations without previously acquired data to generate a Risk map

Read more

Summary

INTRODUCTION

Leishmaniasis is the third commonest vector-borne disease and a very important protozoan infection. CL is an environmental disease since its transmission depends on the distribution and abundance of vectors and reservoirs which are sensitive to environmental factors. In order to provide the risk map and the spatial distribution pattern and to predict CL prevalence rate, data mining methods are used. The aim of this study is to combine the artificial neural networks (ANN) and the fuzzy logic to make a powerful tool for CL prevalence rate prediction in Ilam province.

STUDY AREA AND DATA COLLECTION
ADAPTIVE NEURO FUZZY INFERENCE SYSTEM
Fuzzy C-Means Clustering
RESULTS
CONCLUSION
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call