Identifying drivers of dengue fever outbreaks in Mauritius using Geographic Information System.

IF 1.7 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Jamba-Journal of Disaster Risk Studies Pub Date : 2025-08-20 eCollection Date: 2025-01-01 DOI:10.4102/jamba.v17i2.1740
Smita Goorah, Manta Nowbuth, Mahendra Gooroochurn
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Abstract

Mosquito-borne diseases can cause public health disasters. Climatic and environmental conditions, urbanisation, changes in land use, and the increased movement of people and goods worldwide are causing their increased transmission. Mauritius is especially at risk being situated in a vulnerable geographical region. In this study, we used geographical tools to identify potential drivers and vulnerability areas related to dengue fever in the island. Dengue cases were identified by municipal ward (MW) and village council area (VCA). Meteorological data consisted of rainfall and temperature data. The Relative Development Index (RDI) was used as a proxy for socioeconomic factors. The population density and the number of houses in close proximity to rivers were determined per VCA and MW. Maps were generated on the software QGIS 3.12. Statistical tests consisted of multiple regression analysis with dengue incidence as the dependent variable and potential drivers as the independent variables. The results showed that the close proximity of houses to rivers had a significant positive effect on dengue incidence (p = 0.03) while the RDI had a significant negative effect (p = 0.01). Vulnerability areas in the island can hence be determined based on the findings.

Contribution: The findings of this study allow preemptive measures to be taken in identified vulnerability areas to prevent mosquito-borne disease outbreaks.

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利用地理信息系统确定毛里求斯登革热暴发的驱动因素。
蚊媒疾病可造成公共卫生灾难。气候和环境条件、城市化、土地利用的变化以及世界范围内人员和货物流动的增加正在导致它们的传播增加。毛里求斯处于一个脆弱的地理区域,因此面临的风险尤其大。在这项研究中,我们使用地理工具来确定岛上与登革热相关的潜在驱动因素和脆弱区域。登革热病例由市辖区(MW)和村委会区(VCA)确定。气象资料包括雨量和气温资料。使用相对发展指数(RDI)作为社会经济因素的代理。根据VCA和MW确定靠近河流的人口密度和房屋数量。地图在QGIS 3.12软件上生成。统计检验采用多元回归分析,以登革热发病率为因变量,潜在驱动因素为自变量。结果表明,房屋靠近河流对登革热发病率有显著的正向影响(p = 0.03),而RDI对登革热发病率有显著的负向影响(p = 0.01)。因此,可以根据调查结果确定岛上的脆弱地区。贡献:这项研究的结果允许在确定的脆弱地区采取先发制人的措施,以防止蚊媒疾病的爆发。
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
Jamba-Journal of Disaster Risk Studies
Jamba-Journal of Disaster Risk Studies SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.60
自引率
7.10%
发文量
37
审稿时长
37 weeks
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