地理环境因子对螺情影响的探测分析
Impact of environmental factors on snail distribution using geographical detector model
查看参考文献31篇
文摘
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近年来,由于自然环境、经济社会等因素影响,中国血吸虫病疫情呈回升态势,表现为急性感染人数和血吸虫病患病人数增多,局部地区钉螺扩散明显,感染性钉螺分布范围逐渐扩大等。钉螺是血吸虫的唯一中间宿主,控制钉螺对血吸虫病防治具有重要意义。本文根据钉螺的生态学特征,综合高程、水文、土地利用、土壤、植被等因子,基于地理探测器模型分析了地理环境因子对2009年湖北省钉螺分布的影响。结果表明:①在垸内型流行区,整个流行季(3-10月)、特别是7-9月期间的植被覆盖与钉螺分布范围有关,密螺地带的特征为土壤质地粉砂含量适中、黄红壤和淹育水稻土,第一季度有较高的植被覆盖度;②在垸外型流行区,湖泊滩地、高覆盖度草地是其主要分布环境,而第一季度较高的植被覆盖,尤其是荻、芦苇等植被类型是高密度地区的环境特征;③在山地丘陵,河流附近的林地和耕地,潴育或淹育水稻土是钉螺密集分布的环境。筛选出的地理环境指示因子可用于遥感技术监测钉螺孳生地,从而为采取有效的控螺措施提供科学依据。 |
其他语种文摘
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Schistosomiasis japonica is a parasitic disease that debilitates human bodies and greatly impedes socioeconomic progress in endemic areas. It was widespread in southern China several decades ago and the disease prevention effort of the Chinese government and researchers achieved remarkable results in reducing infections. However, in recent year, the epidemic situation has worsened due to a series of changes in the natural environment and socioeconomic conditions. As the only intermediate host of Schistosome, Oncomelania hupensis plays an important role in the spread of this disease and its control is critical for the prevention and control of Schistosome. Therefore, identifying the environmental factors that determine the distribution of the snail could help predict the distribution and extent of snail breeding sites, obtain a macroscopic view on snail spreading trend, and take effective measures to eliminate the snails. In this paper, we aim to determine key indictors that could be used in remote sensing monitoring of Oncomelania hupensis breeding extent and density. Hubei Province is one of the serious epidemic areas in China. Oncomelania hupensis here can be classified into three subtypes: the subtype inside embankments, subtype outside embankments, and subtype in hilly areas, according to the geographical environment of snail habitats. We take into account several environmental factors including elevation, nearest distance to river (water), land use, soil and vegetation to analyze their influence on snail distribution. Geographical Detector Model used in this research is based on spatial variation analysis of the geographical strata to assess the health risks in different environment. It contains four geographical detectors: factor detector identifies which factors are responsible for the risk; ecological detector compares the relative importance of risk factors; risk detector discloses where the high risk areas are; and interaction detector reveals whether the risk factors interact or lead to disease independently. The main procedures of our analysis are as follows: first, both snail statistics and environmental data are collected and preprocessed with ArcGIS Desktop software; then the environmental indicators that are strongly related to snail distribution are identified by the factor detector and ecological detector; finally, favorable (suitable) type or range of each indicator as well as the reference factors that indirectly influence the snails can be computed from the risk detector and interaction detector. It is found that for the subtype inside embankments, vegetation coverage of epidemic season (March to October), especially July to September, determines the extent of distribution, while high density areas are characterized by moderate silt content in soil texture, yellowish red soil and submerged paddy soil, high vegetation coverage in the first quarter of the year. The subtype outsider embankments distributed mainly at lake beaches with high vegetation coverage, while high vegetation coverage in the first quarter, reed and amur silver grass vegetation contributes to its abundance. In hilly areas, there is no clear indicator for the extent of distribution of the subtype due to the relatively complex environment, yet woodland and farmland close to river, waterlogged paddy soil as well as submerged paddy soil are strongly related to high dense of the snails. This result is consistent with previous studies. The result and method of this research could provide scientific reference for policy makers and researchers to take efficient measures to control snail prevalence. |
来源
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地理科学进展
,2014,33(5):625-635 【核心库】
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关键词
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钉螺
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血吸虫病
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地理环境因子
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地理探测器
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指示作用
;
湖北省
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地址
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1.
中国科学院地理科学与资源研究所, 资源与环境信息系统国家重点实验室, 北京, 100101
2.
湖北省血吸虫病防治研究所, 武汉, 430079
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语种
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中文 |
文献类型
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研究性论文 |
ISSN
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1007-6301 |
学科
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自然地理学 |
基金
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国家科技支撑计划项目
;
全国生态环境十年变化遥感调查与评估项目
;
中国科学院知识创新工程西部行动计划项目
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文献收藏号
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CSCD:5149310
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