论文标题
使用VAER的不良事件丰富测试
Adverse event enrichment tests using VAERS
论文作者
论文摘要
疫苗接种安全对于个人和公共卫生至关重要。许多现有方法已用于使用VAER(疫苗不良事件报告系统)数据库进行安全研究。但是,这些方法经常确定许多不良事件(AE)信号,并且在生物学环境中通常很难解释。 AE本体论通过连接类似的AE来将生物学上有意义的结构引入VAERS数据库,该结构为基础安全问题提供了有意义的解释。在本文中,我们开发了严格的统计方法,以通过执行AE富集分析来识别“有趣”的AE组。我们将现有的基因富集测试扩展到进行AE富集分析。与连续的基因表达数据不同,AE数据是计数。因此,AE数据具有许多零和联系。我们提出了两个富集测试,Aefisher和Aeks。 AEFISHER是基于预先选择的显着AE的改良Fisher的精确测试,而AEKS基于修改后的Kolmogorov-Smirnov统计量。两种测试都包含AE数据的特殊功能。使用仿真研究评估了所提出的方法,并在两项使用VAERS数据的研究中进一步说明了该方法。通过适当地解决AE计数数据中的关系和过度零的问题,我们的富集测试的表现很好,可以通过模拟研究和对VAERS数据的分析进行了很好的证明。所提出的方法是在r软件包aeenrich中实现的,可以从综合的R档案网络Cran中安装。
Vaccination safety is critical for individual and public health. Many existing methods have been used to conduct safety studies with the VAERS (Vaccine Adverse Event Reporting System) database. However, these methods frequently identify many adverse event (AE) signals and they are often hard to interpret in a biological context. The AE ontology introduces biologically meaningful structures to the VAERS database by connecting similar AEs, which provides meaningful interpretation for the underlying safety issues. In this paper, we develop rigorous statistical methods to identify "interesting" AE groups by performing AE enrichment analysis. We extend existing gene enrichment tests to perform AE enrichment analysis. Unlike the continuous gene expression data, AE data are counts. Therefore, AE data has many zeros and ties. We propose two enrichment tests, AEFisher and AEKS. AEFisher is a modified Fisher's exact test based on pre-selected significant AEs, while AEKS is based on a modified Kolmogorov-Smirnov statistic. Both tests incorporate the special features of the AE data. The proposed methods were evaluated using simulation studies and were further illustrated on two studies using VAERS data. By appropriately addressing the issues of ties and excessive zeros in AE count data, our enrichment tests performed well as demonstrated by simulation studies and analyses of VAERS data. The proposed methods were implemented in R package AEenrich and can be installed from the Comprehensive R Archive Network, CRAN.