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Randomization to Randomization Probability: Estimating Treatment Effects Under Actual Conditions of Use

机译:从随机化到随机化概率:估计实际使用条件下的治疗效果

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摘要

Blinded randomized controlled trials (RCT) require participants to be uncertain if they are receiving a treatment or placebo. Although uncertainty is ideal for isolating the treatment effect from all other potential effects, it is poorly suited for estimating the treatment effect under actual conditions of intended use—when individuals are certain that they are receiving a treatment. We propose an experimental design, Randomization to Randomization Probabilities (R2R), which significantly improves estimates of treatment effects under actual conditions of use by manipulating participant expectations about receiving treatment. In the R2R design, participants are first randomized to a value, π, denoting their probability of receiving treatment (vs placebo). Subjects are then told their value of π and randomized to either treatment or placebo with probabilities π and 1-π, respectively. Analysis of the treatment effect includes statistical controls for π (necessary for causal inference) and typically a π-by-treatment interaction. Random assignment of subjects to π and disclosure of its value to subjects manipulates subject expectations about receiving the treatment without deception. This method offers a better treatment effect estimate under actual conditions of use than does a conventional RCT. Design properties, guidelines for power analyses, and limitations of the approach are discussed. We illustrate the design by implementing an RCT of caffeine effects on mood and vigilance and show that some of the actual effects of caffeine differ by the expectation that one is receiving the active drug.
机译:盲法随机对照试验(RCT)要求参与者不确定他们是否正在接受治疗或安慰剂。尽管不确定性是理想的将治疗效果与所有其他潜在效果区分开的理想方法,但不确定性不适合在预期的实际使用条件下(当个人确定他们正在接受治疗时)估计治疗效果。我们提出了一项实验设计,即“随机化到随机概率(R2R)”,它通过操纵参与者对接受治疗的期望,大大改善了在实际使用条件下的治疗效果估计。在R2R设计中,首先将参与者随机化为一个值π,以表示他们接受治疗的可能性(相对于安慰剂)。然后告知受试者其π的值,并分别随机分为概率为π和1-π的治疗或安慰剂。对治疗效果的分析包括π(因果推断所必需)的统计控制,通常包括π-逐次交互作用。将对象随机分配给π并将其值公开给对象会操纵对象对接受治疗而没有欺骗的期望。该方法在实际使用条件下提供了比常规RCT更好的治疗效果估计。讨论了设计属性,功耗分析准则以及该方法的局限性。我们通过实施咖啡因作用对情绪和警觉性的RCT来说明该设计,并表明咖啡因的某些实际作用因期望接受活性药物而有所不同。

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