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首页> 外文期刊>The American Journal of Tropical Medicine and Hygiene >Assessment of a remote sensing-based model for predicting malaria transmission risk in villages of Chiapas, Mexico.
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Assessment of a remote sensing-based model for predicting malaria transmission risk in villages of Chiapas, Mexico.

机译:基于遥感的模型预测墨西哥恰帕斯州村庄疟疾传播风险的评估。

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摘要

A blind test of two remote sensing-based models for predicting adult populations of Anopheles albimanus in villages, an indicator of malaria transmission risk, was conducted in southern Chiapas, Mexico. One model was developed using a discriminant analysis approach, while the other was based on regression analysis. The models were developed in 1992 for an area around Tapachula, Chiapas, using Landsat Thematic Mapper (TM) satellite data and geographic information system functions. Using two remotely sensed landscape elements, the discriminant model was able to successfully distinguish between villages with high and low An. albimanus abundance with an overall accuracy of 90%. To test the predictive capability of the models, multitemporal TM data were used to generate a landscape map of the Huixtla area, northwest of Tapachula, where the models were used to predict risk for 40 villages. The resulting predictions were not disclosed until the end of the test. Independently, An. albimanus abundance data werecollected in the 40 randomly selected villages for which the predictions had been made. These data were subsequently used to assess the models' accuracies. The discriminant model accurately predicted 79% of the high-abundance villages and 50% of the low-abundance villages, for an overall accuracy of 70%. The regression model correctly identified seven of the 10 villages with the highest mosquito abundance. This test demonstrated that remote sensing-based models generated for one area can be used successfully in another, comparable area.
机译:在墨西哥南部恰帕斯州,对两个预测乡村中白带按蚊成年人口的疟疾传播风险指标进行了盲法测试,该模型预测了按蚊的成年人口。一种模型使用判别分析方法开发,而另一种模型则基于回归分析。该模型于1992年使用Landsat Thematic Mapper(TM)卫星数据和地理信息系统功能在恰帕斯州Tapachula周围地区开发。通过使用两个遥感景观要素,判别模型能够成功区分An高和低的村庄。 albimanus丰度,总体精度为90%。为了测试模型的预测能力,多时相TM数据用于生成Tapachula西北地区的Huixtla地区的景观图,其中该模型用于预测40个村庄的风险。直到测试结束,才披露最终的预测。独立地,安。在随机选择的40个村庄中收集了白带菌丰度数据。这些数据随后被用于评估模型的准确性。判别模型准确地预测了79%的高丰度村庄和50%的低丰度村庄,总体准确性为70%。回归模型正确地确定了蚊子数量最高的10个村庄中的7个。该测试表明,针对一个区域生成的基于遥感的模型可以成功用于另一个可比较的区域。

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