意大利注射吸毒者中HCV和HIV感染的联合建模使用重复横断面流行数据

E. Del Fava, Adetayo S Kasim, Muhammad Usman, Z. Shkedy, Niel Hens, M. Aerts, K. Bollaerts, Gianpaolo Scalia Tomba, P. Vickerman, A. J. Sutton, L. Wiessing, M. Kretzschmar
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引用次数: 8

摘要

注射吸毒者(IDUs)在其注射生涯中,由于其注射行为风险因素,如共用注射器或其他含有受感染血液的器具,或性行为风险因素,会暴露于某些感染,如丙型肝炎病毒(HCV)感染和人类免疫缺陷病毒(HIV)感染。如果我们考虑到这些注射吸毒者可能属于这些行为风险因素传播的人群的社会网络,那么HCV和HIV感染可能在个人和群体水平上都有关联。在本文中,我们使用汇总数据在人群水平上研究了HCV和HIV感染之间的关系。我们的目标是定义一个层次结构模型,通过该模型可以调查人群水平上HCV和HIV感染之间的关系以及患病率的时间趋势。论文中分析的数据是“诊断测试数据”,包括1998年至2006年丙型肝炎病毒和艾滋病毒感染的重复横断面流行测量,从意大利20个地区的515个药物治疗中心的样本中获得,受试者在那里进行血清诊断测试。由于我们没有任何个人数据,因此不可能将这些流行率数据与社会人口统计学或行为风险数据联系起来。每个地区都定义了一个集群,其中包含一段时间内丙型肝炎病毒和艾滋病毒感染的重复流行数据。采用了广义线性混合模型(glmm)和层次贝叶斯模型等建模方法。首先,我们测试了不同协方差结构在GLMM背景下的区域特异性随机效应;其次,利用层次贝叶斯模型对最佳GLMM进行重构,得到主感兴趣参数的后验分布;我们发现HCV和HIV在人群水平上的相关性约为0.68,与1998年的情况相比,这两种感染的患病率逐年下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Modeling of HCV and HIV Infections among Injecting Drug Users in Italy Using Repeated Cross-Sectional Prevalence Data
During their injecting career, injecting drug users (IDUs) are exposed to some infections, like hepatitis C virus (HCV) infection and human immunodeficiency virus (HIV) infection, due to their injecting behavioral risk factors, such as sharing syringes or other paraphernalia containing infected blood, or sexual behavior risk factors. If we consider that these IDUs might belong to a social network of people where these behavioral risk factors are spread, then HCV and HIV infections might be associated at both the individual and the population level. In this paper, we study the association between HCV and HIV infection at the population level using aggregate data. Our aim is to define a hierarchy of structured models with which the association between HCV and HIV infection at population level and the time trend of prevalence can be investigated. The data analyzed in the paper are “diagnostic testing data,” which consist of repeated cross-sectional prevalence measurements from 1998 to 2006 for HCV and HIV infection, obtained from a sample of 515 drug treatment centers spread among the 20 regions in Italy, where subjects went for a serum diagnostic test. Since we do not have any individual data, it is not possible to relate these prevalence data to socio-demographic or behavioral risk data. Each region defines a cluster with repeated prevalence data for HCV and HIV infection over time. Several modeling approaches, such as generalized linear mixed models (GLMMs) and hierarchical Bayesian models are applied to the data. First, we test different covariance structures for the region-specific random effects in the GLMM context; second, a hierarchical Bayesian model is used to refit the best GLMM in order to obtain the posterior distribution for the parameters of primary interest. We found that the correlation at population level between HCV and HIV is approximately 0.68 and the prevalence of the two infections generally decreased over the years, compared to the situation in 1998.
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