Carroll Kevin J
AstraZeneca Pharmaceuticals, CMOs Office, Alderley Park, Macclesfield, UK.
Pharm Stat. 2009 Oct-Dec;8(4):333-45. doi: 10.1002/pst.362.
Time to event outcome trials in clinical research are typically large, expensive and high-profile affairs. Such trials are commonplace in oncology and cardiovascular therapeutic areas but are also seen in other areas such as respiratory in indications like chronic obstructive pulmonary disease. Their progress is closely monitored and results are often eagerly awaited. Once available, the top line result is often big news, at least within the therapeutic area in which it was conducted, and the data are subsequently fully scrutinized in a series of high-profile publications. In such circumstances, the statistician has a vital role to play in the design, conduct, analysis and reporting of the trial. In particular, in drug development it is incumbent on the statistician to ensure at the outset that the sizing of the trial is fully appreciated by their medical, and other non-statistical, drug development team colleagues and that the risk of delivering a statistically significant but clinically unpersuasive result is minimized. The statistician also has a key role in advising the team when, early in the life of an outcomes trial, a lower than anticipated event rate appears to be emerging. This paper highlights some of the important features relating to outcome trial sample sizing and makes a number of simple recommendations aimed at ensuring a better, common understanding of the interplay between sample size and power and the final result required to provide a statistically positive and clinically persuasive outcome.
临床研究中的事件发生时间结果试验通常规模大、成本高且备受瞩目。此类试验在肿瘤学和心血管治疗领域很常见,但在其他领域如呼吸系统的慢性阻塞性肺疾病等适应症中也可见到。它们的进展受到密切监测,结果往往备受期待。一旦结果可用,初步结果通常是重大新闻,至少在进行试验的治疗领域内是如此,随后数据会在一系列备受瞩目的出版物中得到充分审查。在这种情况下,统计学家在试验的设计、实施、分析和报告中起着至关重要的作用。特别是在药物开发中,统计学家有责任从一开始就确保其医学和其他非统计的药物开发团队同事充分理解试验规模,并且将得出具有统计学显著性但临床说服力不足的结果的风险降至最低。在结果试验早期,当出现低于预期的事件发生率时,统计学家在为团队提供建议方面也起着关键作用。本文强调了与结果试验样本量确定相关的一些重要特征,并提出了一些简单建议,旨在确保对样本量与检验效能之间的相互作用以及提供具有统计学阳性和临床说服力结果所需的最终结果有更好的、共同的理解。