首页> 外文期刊>Acta tropica: Journal of Biomedical Sciences >Describing Anopheles arabiensis aquatic habitats in two riceland agro-ecosystems in Mwea, Kenya using a negative binomial regression model with a non-homogenous mean.
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Describing Anopheles arabiensis aquatic habitats in two riceland agro-ecosystems in Mwea, Kenya using a negative binomial regression model with a non-homogenous mean.

机译:使用具有非均值均值的负二项式回归模型,描述肯尼亚姆韦两个稻田农业生态系统中的阿拉伯按蚊水生生境。

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摘要

This research illustrates a geostatistical approach for modeling the spatial distribution patterns of Anopheles arabiensis Patton (Patton) aquatic habitats in two riceland environments. QuickBird 0.61 m data, encompassing the visible bands and the near-infra-red (NIR) band, were selected to synthesize images of An. arabiensis aquatic habitats. These bands and field sampled data were used to determine ecological parameters associated with riceland larval habitat development. SAS was used to calculate univariate statistics, correlations and Poisson regression models. Global autocorrelation statistics were generated in ArcGISfrom georeferenced Anopheles aquatic habitats in the study sites. The geographic distribution of Anopheles gambiae s.l. aquatic habitats in the study sites exhibited weak positive autocorrelation; similar numbers of log-larval count habitats tend to clustered in space. Individual rice land habitat data were further evaluated in terms of their covariations with spatial autocorrelation,by regressing them on candidate spatial filter eigenvectors. Each eigenvector generated from a geographically weighted matrix, for both study sites, revealed a distinctive spatial pattern. The spatial autocorrelation components suggest the presence of roughly 14-30% redundant information in the aquatic habitat larval count samples. Synthetic map pattern variables furnish a method of capturing spatial dependency effects in the mean response term in regression analyses of rice land An. arabiensis aquatic habitat data.
机译:这项研究说明了一种地统计学方法,用于模拟两个稻田环境中阿拉伯按蚊Patton(Patton)水生生境的空间分布模式。选择QuickBird的0.61 m数据(包含可见带和近红外(NIR)带)来合成An的图像。阿拉伯水生生境。这些带和野外采样数据用于确定与稻田幼虫栖息地发展相关的生态参数。 SAS用于计算单变量统计量,相关性和泊松回归模型。全球自相关统计是在ArcGIS中根据研究地点中按地理参考的按蚊水生生境生成的。冈比亚按蚊的地理分布研究地点的水生生境表现出弱的正相关性。数量相似的对数幼虫栖息地倾向于聚集在空间中。通过在候选空间滤波器特征向量上进行回归,进一步评估了各个稻田生境数据的空间自相关性与协方差。对于两个研究地点,从地理加权矩阵生成的每个特征向量都显示出独特的空间格局。空间自相关成分表明在水生生境幼虫计数样本中大约存在14-30%的冗余信息。合成图谱变量提供了一种在稻田An回归分析中捕获平均响应项中空间依赖性效应的方法。阿拉伯水生栖息地数据。

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