Using the information value method in a geographic information system and remote sensing for malaria mapping: a case study from India.

Praveen Kumar Rai, Mahendra Singh Nathawat, Shalini Rai
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引用次数: 18

Abstract

Background: This paper explores the scope of malaria-susceptibility modelling to predict malaria occurrence in an area.

Objective: An attempt has been made in Varanasi district, India, to evaluate the status of malaria disease and to develop a model by which malaria-prone zones could be predicted using five classes of relative malaria susceptibility, i.e.very low, low, moderate, high and very high categories. The information value (Info Val) method was used to assess malaria occurrence and various time-were used as the independent variables. A geographical information system (GIS) is employed to investigate associations between such variables and distribution of different mosquitoes responsible for malaria transmission. Accurate prediction of risk depends on a number of variables, such as land use, NDVI, climatic factors, population, distance to health centres, ponds, streams and roads etc., all of which have an influence on malaria transmission or reporting. Climatic factors, particularly rainfall, temperature and relative humidity, are known to have a major influence on the biology of mosquitoes. To produce a malaria-susceptibility map using this method, weightings are calculated for various classes in each group. The groups are then superimposed to prepare a Malaria Susceptibility Index (MSI) map.

Results: We found that 3.87% of the malaria cases were found in areas with a low malaria-susceptibility level predicted from the model, whereas 39.86% and 26.29% of malaria cases were found in predicted high and very high susceptibility level areas, respectively.

Conclusions: Malaria susceptibility modelled using a GIS may have a role in predicting the risks of malaria and enable public health interventions to be better targeted.

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利用地理信息系统和遥感中的信息价值方法进行疟疾制图:以印度为例。
背景:本文探讨了疟疾易感性模型预测某一地区疟疾发生的范围。目标:在印度瓦拉纳西县进行了一项评估疟疾状况的尝试,并开发了一种模型,利用五类相对疟疾易感性,即极低、低、中、高和极高的类别,来预测疟疾易发地区。采用信息值(Info Val)法评估疟疾发生情况,以各时间为自变量。利用地理信息系统(GIS)调查这些变量与负责疟疾传播的不同蚊子分布之间的关系。对风险的准确预测取决于若干变量,如土地使用、国家疟疾指数、气候因素、人口、到保健中心的距离、池塘、溪流和道路等,所有这些因素都对疟疾传播或报告产生影响。众所周知,气候因素,特别是降雨、温度和相对湿度,对蚊子的生物学有重大影响。为了使用这种方法绘制疟疾易感性图,需要计算每一组中不同类别的权重。然后将这些组叠加在一起,形成疟疾易感性指数(MSI)地图。结果:3.87%的疟疾病例出现在模型预测的疟疾低敏感区,39.86%的疟疾病例出现在模型预测的高敏感区,26.29%的疟疾病例出现在模型预测的非常高敏感区。结论:利用地理信息系统建立的疟疾易感性模型可能在预测疟疾风险方面发挥作用,并使公共卫生干预措施更有针对性。
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