Department of Psychology, College of Charleston, Charleston, SC 29424, USA.
J Health Psychol. 2010 Sep;15(6):871-5. doi: 10.1177/1359105309356985. Epub 2010 May 7.
Health intervention outcomes are often assessed as binomially distributed variables. In designing such interventions it is important to model the pre-intervention rate of the target behavior when performing sample size calculations. Unfortunately, the majority of sample size programs model post-intervention outcomes only, which results in exaggerated sample size estimates. An exception is Yoo and Spoth's (1993) conditional binomial method of sample size determination. This approach explicitly models pre-intervention behavior by focusing on baserate-adjusted post-intervention outcomes, and always results in smaller sample size estimates than conventional approaches. Advantages of the conditional binomial method are discussed and user-friendly software is presented.
健康干预的结果通常被评估为二项分布变量。在设计此类干预措施时,重要的是在进行样本量计算时对目标行为的干预前发生率进行建模。不幸的是,大多数样本量程序仅对干预后结果进行建模,这导致了样本量估计的夸大。一个例外是 Yoo 和 Spoth(1993 年)的条件二项式样本量确定方法。这种方法通过关注基数调整后的干预后结果,明确地对干预前行为进行建模,并且总是比传统方法产生更小的样本量估计。讨论了条件二项式方法的优点,并提出了用户友好的软件。