Li Xiaoming, Wang William W B, Liu Guanghan F, Chan Ivan S F
Merck Research Laboratories, North Wales, Pennsylvania, USA.
J Biopharm Stat. 2011 Mar;21(2):294-310. doi: 10.1080/10543406.2011.550111.
In clinical trials, study subjects are usually followed for a period of time after treatment, and the missing data issue is almost inevitable due to various reasons, including early dropout or lost-to-follow-up. It is important to take the missing data into consideration at the study design stage to minimize its occurrence throughout the study and to prospectively account for it in the analyses. There are many methods available in the literature that are designed to handle the missing data issue under various settings. Vaccines are biological products that are primarily designed to prevent infectious diseases, and are different from pharmaceutical products, which traditionally have been chemical products designed to treat or cure diseases. While a lot of similarities exist between clinical trials for vaccines and those for pharmaceutical products, there are some unique issues in vaccine trials, including how to handle the missing data, which calls for special considerations. In this report we present a variety of statistical approaches for analyses of vaccine immunogenicity and safety trials in the presence of missing data. The methods are illustrated with numerical simulations and vaccine trial examples.
在临床试验中,研究对象通常在治疗后会被随访一段时间,由于各种原因,包括提前退出或失访,缺失数据问题几乎不可避免。在研究设计阶段考虑缺失数据很重要,以便在整个研究过程中尽量减少其出现,并在分析中对其进行前瞻性考量。文献中有许多方法可用于处理各种情况下的缺失数据问题。疫苗是主要用于预防传染病的生物制品,与传统上用于治疗或治愈疾病的化学制品的药品不同。虽然疫苗临床试验与药品临床试验有很多相似之处,但疫苗试验存在一些独特问题,包括如何处理缺失数据,这需要特别考虑。在本报告中,我们提出了多种统计方法,用于分析存在缺失数据时的疫苗免疫原性和安全性试验。这些方法通过数值模拟和疫苗试验实例进行说明。