基于疟疾扩散机制和高分辨率地球观测数据的陆地地表水预报器预测大陆范围的疟疾。

IF 4.3 2区 医学 Q2 ENVIRONMENTAL SCIENCES Geohealth Pub Date : 2023-10-10 DOI:10.1029/2023GH000811
Maurice W. M. L. Kalthof, Mathieu Gravey, Flore Wijnands, Derek Karssenberg
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引用次数: 0

摘要

尽管疟疾流行率通过媒介繁殖与地表水有关,但代表地表水的空间疟疾预测因子对疟疾的预测往往很差。此外,作为地表水前兆的降水通常表现更好。我们的目标是确定,与降水相比,从新的高分辨率地表水数据中得出的考虑到疟疾传播机制的新地表水暴露指数是否可以更有力地预测疟疾流行率。通过结合东非高精度和高分辨率(5米分辨率,总体准确率96%,Kappa系数0.89,委员会和遗漏误差分别为3%和13%)水地图的三次地表水疟疾暴露,创建了180个候选预测因子。通过变量贡献分析,选择了一个子集的强预测因子,并将其用作增强回归树模型的输入。我们以这组新的预测因子的性能和相对贡献为基准,对使用降水而不是地表水预测因子、替代低分辨率预测因子和先前研究中使用的更简单地表水预测函数的模型进行了比较。新指数的预测性能可与降水预测指标相媲美或超越。与从低分辨率联合研究中心地表水数据集得出的同一组预测因子(+10%R2,+17%相对贡献)和一组更简单的预测因子(+18%R2,+30%相对贡献)相比,新指数显著提高了性能。如果空间分辨率足够高,可以在人类和病媒水暴露评估中检测小型水体和与地表水相关的疟疾传播机制,那么地表水衍生指数可以成为疟疾的有力预测因子。
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Predicting Continental Scale Malaria With Land Surface Water Predictors Based on Malaria Dispersal Mechanisms and High-Resolution Earth Observation Data

Despite malaria prevalence being linked to surface water through vector breeding, spatial malaria predictors representing surface water often predict malaria poorly. Furthermore, precipitation, which precursors surface water, often performs better. Our goal is to determine whether novel surface water exposure indices that take malaria dispersal mechanisms into account, derived from new high-resolution surface water data, can be stronger predictors of malaria prevalence compared to precipitation. One hundred eighty candidate predictors were created by combining three surface water malaria exposures from high-accuracy and resolution (5 m resolution, overall accuracy 96%, Kappa Coefficient 0.89, Commission and Omission error 3% and 13%, respectively) water maps of East Africa. Through variable contribution analysis a subset of strong predictors was selected and used as input for Boosted Regression Tree models. We benchmarked the performance and Relative Contribution of this set of novel predictors to models using precipitation instead of surface water predictors, alternative lower resolution predictors, and simpler surface water predictors used in previous studies. The predictive performance of the novel indices rivaled or surpassed that of precipitation predictors. The novel indices substantially improved performance over the identical set of predictors derived from the lower resolution Joint Research Center surface water data set (+10% R2, +17% Relative Contribution) and over the set of simpler predictors (+18% R2, +30% Relative Contribution). Surface water derived indices can be strong predictors of malaria, if the spatial resolution is sufficiently high to detect small waterbodies and dispersal mechanisms of malaria related to surface water in human and vector water exposure assessment are incorporated.

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来源期刊
Geohealth
Geohealth Environmental Science-Pollution
CiteScore
6.80
自引率
6.20%
发文量
124
审稿时长
19 weeks
期刊介绍: GeoHealth will publish original research, reviews, policy discussions, and commentaries that cover the growing science on the interface among the Earth, atmospheric, oceans and environmental sciences, ecology, and the agricultural and health sciences. The journal will cover a wide variety of global and local issues including the impacts of climate change on human, agricultural, and ecosystem health, air and water pollution, environmental persistence of herbicides and pesticides, radiation and health, geomedicine, and the health effects of disasters. Many of these topics and others are of critical importance in the developing world and all require bringing together leading research across multiple disciplines.
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