Sequential Multiple-Assignment Randomized Trials (SMARTs) play an increasingly important role in psychological and behavioral health research. This experimental approach enables researchers to answer scientific questions about how to sequence and match interventions to the unique, changing needs of individuals. A variety of sample size planning resources for SMART studies have been developed in recent years; these enable researchers to plan SMARTs for addressing different types of scientific questions. However, relatively limited attention has been given to planning SMARTs with binary (dichotomous) outcomes, which often require higher sample sizes relative to continuous outcomes. Existing resources for estimating sample size requirements for SMARTs with binary outcomes do not consider the potential to improve power by including a baseline measurement and/or multiple repeated outcome measurements. The current paper addresses this issue by providing sample size simulation code and approximate formulas for two-wave repeated measures binary outcomes (i.e., two measurement times for the outcome variable, before and after receiving the intervention). The simulation results agree well with the formulas. We also discuss how to use simulations to calculate power for studies with more than two outcome measurement occasions. The results show that having at least one repeated measurement of the outcome can substantially improve power under certain conditions.
翻译:在心理和行为健康研究中,这种实验方法使研究人员能够回答关于如何对干预进行排序和使干预与个人独特和不断变化的需要相匹配的科学问题。近年来,为SMART研究开发了各种抽样规模规划资源;使研究人员能够对SMART研究进行规划,以解决不同类型的科学问题。然而,对规划具有二进制(二进制)结果的SMART(SMART)的SMART(SMART)工作给予了相对有限的关注,这种结果往往要求比连续结果的样本规模要高。现有用于估算具有二进制结果的SMART的样本规模要求的资源并不考虑通过包括基线测量和/或多次重复结果测量来提高能力的潜力。本文通过提供两波重复测量二进制结果的样本规模模拟代码和近似似公式(即对结果变量进行两次测量)来解决这一问题。模拟结果结果结果与公式一致。我们还讨论了如何在两次以上结果测量结果时至少使用模拟来计算能力。结果的反复测量结果显示,在两次测量中,结果可以有一次以上。