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首页> 外文期刊>Statistical methods in medical research >Modeling excess zeros and heterogeneity in count data from a complex survey design with application to the demographic health survey in sub-Saharan Africa
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Modeling excess zeros and heterogeneity in count data from a complex survey design with application to the demographic health survey in sub-Saharan Africa

机译:复杂调查设计中的统计数据中超零和异质性建模,以便在撒哈拉以南非洲人口卫生调查

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摘要

Purpose>To show a novel application of a weighted zero-inflated negative binomial model in modeling count data with excess zeros and heterogeneity to quantify the regional variation in HIV-AIDS prevalence in sub-Saharan African countries.Methods>Data come from latest round of the Demographic and Health Survey (DHS) conducted in three countries (Ethiopia-2011, Kenya-2009 and Rwanda-2010) using a two-stage cluster sampling design. The outcome is an aggregate count of HIV cases in each census enumeration area of each country. The outcome data are characterized by excess zeros and heterogeneity due to clustering. We compare scale weighted zero-inflated negative binomial models with and without random effects to account for zero-inflation, complex survey design and clustering. Finally, we provide marginalized rate ratio estimates from the best zero-inflated negative binomial model.Results>The best fitting zero-inflated negative binomial model is scale weighted and with a common random intercept for the three countries. Rate ratio estimates from the final model show that HIV prevalence is associated with age and gender distribution, HIV acceptance, HIV knowledge, and its regional variation is associated with divorce rate, burden of sexually transmitted diseases and rural residence.Conclusions>Scale weighted zero-inflated negative binomial with proper modeling of random effects is shown to be the best model for count data from a complex survey design characterized by excess zeros and extra heterogeneity. In our data example, the final rate ratio estimates show significant regional variation in the factors associated with HIV prevalence indicating that HIV intervention strategies should be tailored to the unique factors found in each country.
机译:<![cdata [ <标题>目的 >以显示加权零充气负二进制型模型在模拟具有过量的零和异质性的计数数据中,以量化亚哈兰非洲患者的艾滋病毒患病率的区域变异国家。 方法 >数据来自三个国家进行的最新一轮人口和健康调查(DHS)(埃塞俄比亚 - 2011年,肯尼亚 - 2009年和卢旺达-2010)使用两级集群采样设计。结果是每个国家/地区每个人口普查枚举区域的HIV病例的总计计数。结果数据的特征在于由于聚类而产生过量的零和异质性。我们将比较加权零充气负二进制型与无随机效应,以解释零充气,复杂的调查设计和聚类。最后,我们提供了来自最佳零充气的负二进制型估计的边缘化率比估计。 <标题>结果 >最佳拟合零充气负二进制模型是为三个国家进行加权和常见的随机拦截。最终模型的率估计结果表明,艾滋病毒患病率与年龄和性别分布,艾滋病毒验收,艾滋病毒知识以及其区域变异与离婚率,性传播疾病和农村住所的负担有关。 结论 >比例加权零膨胀的负二项式,随机效果的适当建模被证明是来自复杂调查设计的计数数据的最佳模型,其特征在于零零和额外异质性。在我们的数据示例中,最终率比率估计显示出与HIV患病率相关的因素的显着区域变异,表明HIV干预策略应根据每个国家/地区发现的独特因素量身定制。

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