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Estimating hepatitis C prevalence in England and Wales by synthesizing evidence from multiple data sources. Assessing data conflict and model fit

机译:通过综合来自多个数据源的证据,估算英格兰和威尔士的丙型肝炎患病率。评估数据冲突和模型拟合

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Multiparameter evidence synthesis is becoming widely used as a way of combining evidence from multiple and often disparate sources of information concerning a number of parameters. Synthesizing data in one encompassing model allows propagation of evidence and learning. We demonstrate the use of such an approach in estimating the number of people infected with the hepatitis C virus (HCV) in England and Wales. Data are obtained from seroprevalence studies conducted in different subpopulations. Each subpopulation is modeled as a composition of 3 main HCV risk groups (current injecting drug users (IDUs), ex-IDUs, and non-IDUs). Further, data obtained on the prevalence (size) of each risk group provide an estimate of the prevalence of HCV in the whole population. We simultaneously estimate all model parameters through the use of Bayesian Markov chain Monte Carlo techniques. The main emphasis of this paper is the assessment of evidence consistency and investigation of the main drivers for model inferences. We consider a cross-validation technique to reveal data conflict and leverage when each data source is in turn removed from the model.
机译:多参数证据合成正被广泛用作一种将来自多个且常常是不同的信息源的证据组合在一起的方法,这些信息涉及许多参数。在一个涵盖模型中综合数据可以传播证据和学习。我们证明了使用这种方法来估算英格兰和威尔士感染丙型肝炎病毒(HCV)的人数。数据是从在不同亚人群中进行的血清阳性率研究获得的。每个亚群均以3个主要的HCV风险组(当前注射吸毒者(IDU),IDU之前和非IDU)组成。此外,从每个风险组的患病率(规模)获得的数据可以估算出整个人群中HCV的患病率。我们通过使用贝叶斯马尔可夫链蒙特卡洛技术同时估算所有模型参数。本文的主要重点是评估证据的一致性和调查模型推论的主要驱动力。当每个数据源又从模型中删除时,我们考虑使用交叉验证技术来揭示数据冲突和利用。

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