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Mapping a Knowledge-Based Malaria Hazard Index Related to Landscape Using Remote Sensing: Application to the Cross-Border Area between French Guiana and Brazil

机译:利用遥感技术绘制与景观相关的基于知识的疟疾危险指数:在法属圭亚那和巴西之间的跨界地区中的应用

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Malaria remains one of the most common vector-borne diseases in the world and the definition of novel control strategies can benefit from the modeling of transmission processes. However, data-driven models are often difficult to build, as data are very often incomplete, heterogeneous in nature and in quality, and/or biased. In this context, a knowledge-based approach is proposed to build a robust and general landscape-based hazard index for malaria transmission that is tailored to the Amazonian region. A partial knowledge-based model of the risk of malaria transmission in the Amazonian region, based on landscape features and extracted from a systematic literature review, was used. Spatialization of the model was obtained by generating land use and land cover maps of the cross-border area between French Guiana and Brazil, followed by computing and combining landscape metrics to build a set of normalized landscape-based hazard indices. An empirical selection of the best index was performed by comparing the indices in terms of adequacy with the knowledge-based model, intelligibility and correlation with P. falciparum incidence rates. The selected index is easy to interpret and successfully represents the current knowledge about the role played by landscape patterns in malaria transmission within the study area. It was significantly associated with P. falciparum incidence rates, using the Pearson and Spearman correlation coefficients (up to 0.79 and 0.75, respectively; p -value < 0.001), and the linear regression coefficient of determination (reaching 0.63; p -values < 0.001). This study establishes a spatial knowledge-driven, landscape-based hazard malaria index using remote sensing that can be easily produced on a regular basis and might be useful for malaria prediction, surveillance, and control.
机译:疟疾仍然是世界上最常见的媒介传播疾病之一,新型控制策略的定义可以从传播过程的模型中受益。但是,数据驱动的模型通常很难构建,因为数据通常不完整,性质和质量上都是异构的和/或带有偏见。在这种情况下,提出了一种基于知识的方法来建立针对亚马逊地区的针对疟疾传播的稳健且基于景观的一般危害指数。使用基于景观特征并从系统的文献综述中提取的基于部分知识的亚马逊河地区疟疾传播风险模型。通过生成法属圭亚那和巴西之间跨境区域的土地利用和土地覆盖图,然后计算和组合景观度量标准,以建立一组标准化的基于景观的灾害指数,从而获得模型的空间化。通过比较指标是否与基于知识的模型,可理解性以及与恶性疟原虫发生率的相关性,对最佳指标进行了经验选择。选定的索引易于解释,可以成功代表有关研究区域内景观模式在疟疾传播中所起作用的当前知识。使用Pearson和Spearman相关系数(分别高达0.79和0.75; p值<0.001)和测定的线性回归系数(达到0.63; p值<0.001),它与恶性疟原虫的发病率显着相关。 )。这项研究使用遥感技术建立了一个以空间知识为基础,以景观为基础的灾害性疟疾指数,这种指数很容易定期产生,并且可能对疟疾的预测,监测和控制有用。

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