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Use of a Mixture Statistical Model in Studying Malaria Vectors Density

机译:在研究疟疾病媒生物密度使用混合统计模型的

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摘要

Vector control is a major step in the process of malaria control and elimination. This requires vector counts and appropriate statistical analyses of these counts. However, vector counts are often overdispersed. A non-parametric mixture of Poisson model (NPMP) is proposed to allow for overdispersion and better describe vector distribution. Mosquito collections using the Human Landing Catches as well as collection of environmental and climatic data were carried out from January to December 2009 in 28 villages in Southern Benin. A NPMP regression model with “village” as random effect is used to test statistical correlations between malaria vectors density and environmental and climatic factors. Furthermore, the villages were ranked using the latent classes derived from the NPMP model. Based on this classification of the villages, the impacts of four vector control strategies implemented in the villages were compared. Vector counts were highly variable and overdispersed with important proportion of zeros (75%). The NPMP model had a good aptitude to predict the observed values and showed that: i) proximity to freshwater body, market gardening, and high levels of rain were associated with high vector density; ii) water conveyance, cattle breeding, vegetation index were associated with low vector density. The 28 villages could then be ranked according to the mean vector number as estimated by the random part of the model after adjustment on all covariates. The NPMP model made it possible to describe the distribution of the vector across the study area. The villages were ranked according to the mean vector density after taking into account the most important covariates. This study demonstrates the necessity and possibility of adapting methods of vector counting and sampling to each setting.
机译:病媒控制是疟疾控制和消除过程中的重要一步。这需要向量计数和对这些计数的适当统计分析。但是,向量计数通常过于分散。提出了泊松模型(NPMP)的非参数混合,以实现过度分散并更好地描述矢量分布。 2009年1月至12月,在贝宁南部的28个村庄进行了利用人类着陆点收集蚊子以及收集环境和气候数据的活动。一个以“村庄”为随机效应的NPMP回归模型用于检验疟疾媒介密度与环境和气候因素之间的统计相关性。此外,使用从NPMP模型派生的潜在类别对村庄进行排名。根据村庄的分类,比较了在村庄实施的四种媒介控制策略的影响。向量计数高度可变且过度分散,具有重要比例的零(75%)。 NPMP模型具有很好的预测观测值的能力,并表明:i)靠近淡水体,市场园艺和高降雨与高矢量密度有关; ii)水分输送,牲畜繁殖,植被指数与低媒介密度有关。然后,在对所有协变量进行调整后,可以根据模型的随机部分估计的平均向量数对28个村庄进行排名。 NPMP模型使描述研究区域中载体的分布成为可能。在考虑最重要的协变量后,根据平均矢量密度对村庄进行排名。这项研究证明了将向量计数和采样方法应用于每种设置的必要性和可能性。

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