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首页> 外文期刊>PLOS Neglected Tropical Diseases >Modeling the risk of transmission of schistosomiasis in Akure North Local Government Area of Ondo State, Nigeria using satellite derived environmental data
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Modeling the risk of transmission of schistosomiasis in Akure North Local Government Area of Ondo State, Nigeria using satellite derived environmental data

机译:使用卫星衍生的环境数据对尼日利亚翁多州阿库雷北部地方政府区域中血吸虫病的传播风险进行建模

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摘要

Schistosomiasis is a parasitic disease and its distribution, in space and time, can be influenced by environmental factors such as rivers, elevation, slope, land surface temperature, land use/cover and rainfall. The aim of this study is to identify the areas with suitable conditions for schistosomiasis transmission on the basis of physical and environmental factors derived from satellite imagery and spatial analysis for Akure North Local Government Area (LGA) of Ondo State. Nigeria. This was done through methodology multicriteria evaluation (MCE) using Saaty’s analytical hierarchy process (AHP). AHP is a multi-criteria decision method that uses hierarchical structures to represent a problem and makes decisions based on priority scales. In this research AHP was used to obtain the mapping weight or importance of each individual schistosomiasis risk factor. For the purpose of identifying areas of schistosomiasis risk, this study focused on temperature, drainage, elevation, rainfall, slope and land use/land cover as the factors controlling schistosomiasis incidence in the study area. It is by reclassifying and overlaying these factors that areas vulnerable to schistosomiasis were identified. The weighted overlay analysis was done after each factor was given the appropriate weight derived through the analytical hierarchical process. The prevalence of urinary schistosomiasis in the study area was also determined by parasitological analysis of urine samples collected through random sampling. The results showed varying risk of schistosomiasis with a larger portion of the area (82%) falling under the high and very high risk category. The study also showed that one community (Oba Ile) had the lowest risk of schistosomiasis while the risk increased in the four remaining communities (Iju, Igoba, Ita Ogbolu and Ogbese). The predictions made by the model correlated strongly with observations from field study. The high risk zones corresponded to known endemic communities. This study revealed that environmental factors can be used in identifying and predicting the transmission of schistosomiasis as well as effective monitoring of disease risk in newly established rural and agricultural communities.
机译:血吸虫病是一种寄生虫病,其分布在空间和时间上会受到环境因素的影响,例如河流,海拔,坡度,地表温度,土地利用/覆盖和降雨。这项研究的目的是根据从卫星图像得出的物理和环境因素以及对Ondo州Akure北部地方政府区域(LGA)的空间分析,确定具有血吸虫病传播条件的区域。尼日利亚。这是通过使用Saaty的层次分析法(AHP)进行方法多标准评估(MCE)来完成的。 AHP是一种多准则决策方法,它使用层次结构来表示问题并根据优先级尺度做出决策。在这项研究中,AHP用于获得每个血吸虫病危险因素的标测权重或重要性。为了确定血吸虫病风险区域,本研究集中于温度,排水,海拔,降雨,坡度和土地利用/土地覆盖率,作为控制研究区域血吸虫病发生的因素。通过对这些因素进行重新分类和叠加,可以识别出血吸虫病易感区域。在给每个因子适当的权重之后,进行加权叠加分析,这些权重是通过层次分析法得出的。还通过对通过随机抽样收集的尿液样本进行了寄生虫学分析,确定了研究区的尿血吸虫病流行率。结果显示血吸虫病的风险各不相同,该地区的较大部分(82%)属于高风险和极高风险类别。该研究还表明,一个社区(欧巴岛)患血吸虫病的风险最低,而其余四个社区(伊居,伊戈巴,伊塔奥博卢和奥格塞斯)的血吸虫病风险则最高。该模型所作的预测与实地研究的观察结果密切相关。高风险区对应于已知的地方性社区。这项研究表明,环境因素可用于识别和预测血吸虫病的传播以及有效监测新建立的农村和农业社区的疾病风险。

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