Siddiqui Ohidul
Office of Biostatistics, Office of Translational Sciences, Center for Drug Evaluation and Research, Food and Drug Administration, Silver Spring, Maryland 20993, USA.
J Biopharm Stat. 2009 Sep;19(5):889-99. doi: 10.1080/10543400903105463.
The adverse events data of randomized clinical trials are often analyzed based on either crude incidence rates or exposure-adjusted incidence rates. These rates do not adequately account for an individual patient's profile of adverse events over the study period when an individual may remain in the trial after experiencing one or more events (i.e., occurrence of multiple events of the same kind or different kinds). Moreover, the required statistical assumptions (e.g., constant hazard rate over time) for valid estimates of incidence rates are not likely to be met in practice by adverse events data of clinical trials. A nonparametric approach called the mean cumulative function (MCF) provides a valid statistical inference on recurrent adverse event profiles of drugs in randomized clinical trials. The estimate involves no assumptions about the form of MCF. To demonstrate the applicability and utility of the MCF approach in clinical trial datasets, an adverse event dataset obtained from a clinical trial is analyzed in this article. As compared to the crude or exposure-adjusted incidence rates of adverse events, the MCF estimates facilitate more understanding of safety profiles of a drug in a randomized clinical trial.
随机临床试验的不良事件数据通常基于粗略发病率或暴露调整发病率进行分析。当个体在经历一次或多次事件(即发生同类或不同类的多个事件)后仍留在试验中时,这些发病率并未充分考虑个体患者在研究期间的不良事件情况。此外,临床试验不良事件数据在实际中不太可能满足发病率有效估计所需的统计假设(例如,随时间恒定的风险率)。一种称为平均累积函数(MCF)的非参数方法为随机临床试验中药物的复发性不良事件情况提供了有效的统计推断。该估计不涉及关于MCF形式的假设。为了证明MCF方法在临床试验数据集中的适用性和实用性,本文分析了从一项临床试验获得的不良事件数据集。与不良事件的粗略或暴露调整发病率相比,MCF估计有助于更深入地了解随机临床试验中药物的安全性情况。