Randomized trials typically estimate average relative treatment effects, but decisions on the benefit of a treatment are possibly better informed by more individualized predictions of the absolute treatment effect. In case of a binary outcome, these predictions of absolute individualized treatment effect require knowledge of the individual's risk without treatment and incorporation of a possibly differential treatment effect (i.e. varying with patient characteristics). In this paper we lay out the causal structure of individualized treatment effect in terms of potential outcomes and describe the required assumptions that underlie a causal interpretation of its prediction. Subsequently, we describe regression models and model estimation techniques that can be used to move from average to more individualized treatment effect predictions. We focus mainly on logistic regression-based methods that are both well-known and naturally provide the required probabilistic estimates. We incorporate key components from both causal inference and prediction research to arrive at individualized treatment effect predictions. While the separate components are well known, their successful amalgamation is very much an ongoing field of research. We cut the problem down to its essentials in the setting of a randomized trial, discuss the importance of a clear definition of the estimand of interest, provide insight into the required assumptions, and give guidance with respect to modeling and estimation options. Simulated data illustrates the potential of different modeling options across scenarios that vary both average treatment effect and treatment effect heterogeneity. Two applied examples illustrate individualized treatment effect prediction in randomized trial data.
翻译:自我调整的试验通常估计平均相对治疗效果,但有关治疗好处的决定可能更清楚地了解对绝对治疗效果的更个别化预测。在二元结果中,对绝对个人化治疗效应的预测要求了解个人的风险而不治疗,并纳入可能的差别待遇效应(即与病人特点不同)。在本文件中,我们从潜在结果的角度阐述个人化治疗效应的因果关系结构,并描述作为其预测因果关系解释基础的必要假设。随后,我们描述了回归模型和模型估计技术,这些模型可用来从平均回归模型向更个别化治疗效果预测转变。我们主要侧重于基于后勤回归法的方法,这些方法既广为人知,又自然地提供了所需的概率估计估计。我们从因果关系推论和预测研究中包括了关键组成部分,以得出个化治疗效果预测。虽然各组成部分是众所周知的,但成功合并是一个持续的研究领域。我们把问题缩小到随机化审判中的基本因素,讨论明确定义模型的随机化处理效果预测的重要性。我们讨论了两次估算结果的精确性,并且自然提供了所需的概率评估选择的精确性,并说明了所需的各种假设。