Interuniversity Institute for Biostatistics and Statistical Bioinformatics (I-BioStat), Hasselt University, Agoralaan, Diepenbeek, Belgium.
Epidemics. 2012 Aug;4(3):124-31. doi: 10.1016/j.epidem.2012.05.001. Epub 2012 May 11.
The analysis of post-vaccination serological data poses nontrivial issues to the epidemiologists and policy makers who want to assess the effects of immunisation programmes. This is especially true for infections on the path to elimination as is the case for measles. We address these problems by using Bayesian Normal mixture models fitted to antibody counts data. This methodology allows us to estimate the seroprevalence of measles by age and, in contrast to conventional methods based on fixed cut-off points, to also distinguish between groups of individuals with different degrees of immunisation. We applied our methodology to two serological samples collected in Tuscany (Italy) in 2003 and in 2005-2006 respectively, i.e., before and after a large vaccination campaign targeted to school-age children. Besides showing the impact of the campaign, we were able to accurately identify a large pocket of susceptible individuals aged about 13-14 in 2005-2006, and a larger group of weakly immune individuals aged about 20 in 2005-2006. These cohorts therefore represent possible targets for further interventions towards measles elimination.
对希望评估免疫规划效果的流行病学家和政策制定者来说,对疫苗接种后血清学数据进行分析带来了不小的挑战。对于那些正在被消除的传染病来说更是如此,例如麻疹。我们通过使用贝叶斯正态混合模型拟合抗体计数数据来解决这些问题。这种方法允许我们按年龄估计麻疹的血清流行率,并且与基于固定临界点的传统方法不同,还可以区分具有不同免疫程度的个体群体。我们将该方法应用于分别于 2003 年和 2005-2006 年(即在针对学龄儿童的大规模疫苗接种运动之前和之后)在意大利托斯卡纳采集的两个血清学样本。除了显示该运动的影响之外,我们还能够在 2005-2006 年准确识别出一个约 13-14 岁的大量易感人群,以及一个约 20 岁的免疫较弱的人群。因此,这些群体是针对消除麻疹的进一步干预措施的潜在目标。