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首页> 外文期刊>Statistics in medicine >A Bayesian hierarchical model for the estimation of two incomplete surveillance data sets.
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A Bayesian hierarchical model for the estimation of two incomplete surveillance data sets.

机译:用于估计两个不完整监视数据集的贝叶斯层次模型。

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摘要

A model-based approach to analyze two incomplete disease surveillance datasets is described. Such data typically consist of case counts, each originating from a specific geographical area. A Bayesian hierarchical model is proposed for estimating the total number of cases with disease while simultaneously adjusting for spatial variation. This approach explicitly accounts for model uncertainty and can make use of covariates.The method is applied to two surveillance datasets maintained by the Centers for Disease Control and Prevention on Rocky Mountain spotted fever (RMSF). An inference is drawn using Markov Chain Monte Carlo simulation techniques in a fully Bayesian framework. The central feature of the model is the ability to calculate and estimate the total number of cases and disease incidence for geographical regions where RMSF is endemic.The information generated by this model could significantly reduce the public health impact of RMSF and other vector-borne zoonoses, as well as other infectious or chronic diseases, by improving knowledge of the spatial distribution of disease risk of public health officials and medical practitioners. More accurate information on populations at high risk would focus attention and resources on specific areas, thereby reducing the morbidity and mortality caused by some of the preventable and treatable diseases.
机译:描述了一种基于模型的方法来分析两个不完整的疾病监测数据集。此类数据通常由案件计数组成,每个案件计数都来自特定的地理区域。提出了一种贝叶斯分层模型,用于估计疾病病例总数,同时针对空间变​​化进行调整。这种方法明确地说明了模型的不确定性,可以利用协变量。该方法应用于落基山斑疹热病(RMSF)疾病控制与预防中心维护的两个监视数据集。在完全的贝叶斯框架中使用马尔可夫链蒙特卡罗模拟技术得出一个推论。该模型的主要特征是能够计算和估计RMSF流行地区的病例总数和疾病发生率,该模型生成的信息可以显着降低RMSF和其他媒介传播的人畜共患病对公共卫生的影响以及其他传染性或慢性病,方法是提高对公共卫生官员和医生的疾病风险空间分布的认识。关于高危人群的更准确的信息将把注意力和资源集中在特定领域,从而减少某些可预防和治疗的疾病引起的发病率和死亡率。

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