Use of soil moisture active passive satellite data and WorldClim 2.0 data to predict the potential distribution of visceral leishmaniasis and its vector Lutzomyia longipalpis in Sao Paulo and Bahia states, Brazil.

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES
M. M. Rodgers, E. Fonseca, P. Nieto, J. Malone, J. Luvall, J. McCarroll, R. Avery, M. Bavia, R. Guimarães, Xue Wen, M. M. N. Silva, D. D. M. T. Carneiro, L. Cardim
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引用次数: 2

Abstract

Visceral leishmaniasis (VL) is a neglected tropical disease transmitted by Lutzomyia longipalpis, a sand fly widely distributed in Brazil. Despite efforts to strengthen national control programs reduction in incidence and geographical distribution of VL in Brazil has not yet been successful; VL is in fact expanding its range in newly urbanized areas. Ecological niche models (ENM) for use in surveillance and response systems may enable more effective operational VL control by mapping risk areas and elucidation of eco-epidemiologic risk factors. ENMs for VL and Lu. longipalpis were generated using monthly WorldClim 2.0 data (30-year climate normal, 1-km spatial resolution) and monthly soil moisture active passive (SMAP) satellite L4 soil moisture data. SMAP L4 Global 3-hourly 9-km EASE-Grid Surface and Root Zone Soil Moisture Geophysical Data V004 were obtained for the first image of day 1 and day 15 (0:00-3:00 hour) of each month. ENM were developed using MaxEnt software to generate risk maps based on an algorithm for maximum entropy. The jack-knife procedure was used to identify the contribution of each variable to model performance. The three most meaningful components were used to generate ENM distribution maps by ArcGIS 10.6. Similar patterns of VL and vector distribution were observed using SMAP as compared to WorldClim 2.0 models based on temperature and precipitation data or water budget. Results indicate that direct Earth-observing satellite measurement of soil moisture by SMAP can be used in lieu of models calculated from classical temperature and precipitation climate station data to assess VL risk.
利用土壤湿度主动-被动卫星数据和WorldClim 2.0数据预测巴西圣保罗州和巴伊亚州内脏利什曼病及其媒介长须Lutzomyia的潜在分布。
内脏利什曼病(VL)是一种被忽视的热带疾病,由广泛分布于巴西的沙蝇——长须狐尾虫传播。尽管努力加强国家控制计划,但巴西VL发病率和地理分布的减少尚未成功;事实上,VL正在新城市化地区扩大其范围。用于监测和响应系统的生态位模型(ENM)可以通过绘制风险区域和阐明生态流行病学风险因素来实现更有效的VL控制。VL和Lu.longipalpis的ENM是使用WorldClim 2.0月度数据(30年气候正常,1公里空间分辨率)和土壤湿度主动-被动(SMAP)卫星L4月度土壤湿度数据生成的。SMAP L4全球3小时9公里EASE网格表面和根区土壤水分地球物理数据V004是为每月第1天和第15天(0:00-3:00小时)的第一张图像获得的。ENM是使用MaxEnt软件开发的,用于基于最大熵算法生成风险图。千斤顶-刀具程序用于确定每个变量对模型性能的贡献。ArcGIS 10.6使用三个最有意义的组件生成ENM分布图。与基于温度和降水数据或水量预算的WorldClim 2.0模型相比,使用SMAP观察到VL和矢量分布的相似模式。结果表明,SMAP对土壤湿度的直接地球观测卫星测量可以代替根据经典温度和降水气候站数据计算的模型来评估VL风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geospatial Health
Geospatial Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
2.40
自引率
11.80%
发文量
48
审稿时长
12 months
期刊介绍: The focus of the journal is on all aspects of the application of geographical information systems, remote sensing, global positioning systems, spatial statistics and other geospatial tools in human and veterinary health. The journal publishes two issues per year.
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