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首页> 外文期刊>Geospatial Health >Spatiotemporal mapping and detection of mortality cluster due to cardiovascular disease with Bayesian hierarchical framework using integrated nested Laplace approximation: A discussion of suitable statistic applications in Kersa, Oromia, Ethiopia
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Spatiotemporal mapping and detection of mortality cluster due to cardiovascular disease with Bayesian hierarchical framework using integrated nested Laplace approximation: A discussion of suitable statistic applications in Kersa, Oromia, Ethiopia

机译:使用集成嵌套拉普拉斯近似方法的贝叶斯分级框架,利用贝叶斯分级框架对时空图和心血管疾病导致的死亡率簇进行检测:在埃塞俄比亚克尔萨(Kersa),奥罗米亚(Oromia),埃塞俄比亚的适当统计应用的讨论

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Cardiovascular diseases (CVDs) are the leading cause of death globally and the number one cause of death globally. Over 75% of CVD deaths take place in low- and middle-income countries. Hence, comprehensive information about the spatio-temporal distribution of mortality due to cardio vascular disease is of interest. We fitted different spatio-temporal models within Bayesian hierarchical framework allowing different space-time interaction for mortality mapping with integrated nested Laplace approximations to analyze mortality data extracted from the health and demographic surveillance system in Kersa District in Hararege, Oromia Region, Ethiopia. The result indicates that non-parametric time trends models perform better than linear models. Among proposed models, one with non-parametric trend, type II interaction and second order random walk but without unstructured time effect was found to perform best according to our experience and. simulation study. An application based on real data revealed that, mortality due to CVD increased during the study period, while administrative regions in northern and south-eastern part of the study area showed a significantly elevated risk. The study highlighted distinct spatiotemporal clusters of mortality due to CVD within the study area. The study is a preliminary assessment step in prioritizing areas for further and more comprehensive research raising questions to be addressed by detailed investigation. Underlying contributing factors need to be identified and accurately quantified.
机译:心血管疾病(CVD)是全球主要的死亡原因,也是全球第一大死亡原因。 CVD死亡的75%以上发生在中低收入国家。因此,关于由于心血管疾病引起的死亡率的时空分布的综合信息是令人感兴趣的。我们在贝叶斯等级框架内拟合了不同的时空模型,从而允许使用集成的嵌套拉普拉斯近似值进行死亡率映射的不同时空相互作用,以分析从埃塞俄比亚奥罗米亚地区哈拉雷格市克萨区卫生与人口监测系统中提取的死亡率数据。结果表明,非参数时间趋势模型的性能优于线性模型。在提出的模型中,根据我们的经验,发现具有非参数趋势,II型交互作用和二阶随机游动但没有非结构化时间效应的模型表现最佳。模拟研究。根据真实数据进行的一项应用显示,在研究期间,由于CVD引起的死亡率增加,而在研究区域的北部和东南部的行政区域则显示出明显升高的风险。这项研究强调了研究区域内由于CVD引起的死亡率的独特时空集群。这项研究是初步评估步骤,旨在为进一步和更全面的研究确定优先领域,从而提出了需要通过详细调查解决的问题。需要确定潜在的影响因素并进行准确量化。

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