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Implementation of tripartite estimands using adherence causal estimators under the causal inference framework

机译:在因果推断框架下使用粘附因果估计的三方估计的实施

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Intercurrent events (ICEs) and missing values are inevitable in clinical trials of any size and duration, making it difficult to assess the treatment effect for all patients in randomized clinical trials. Defining the appropriate estimand that is relevant to the clinical research question is the first step in analyzing data. The tripartite estimands, which evaluate the treatment differences in the proportion of patients with ICEs due to adverse events, the proportion of patients with ICEs due to lack of efficacy, and the primary efficacy outcome for those who can adhere to study treatment under the causal inference framework, are of interest to many stakeholders in understanding the totality of treatment effects. In this manuscript, we discuss the details of how to estimate tripartite estimands based on a causal inference framework and how to interpret tripartite estimates through a phase 3 clinical study evaluating a basal insulin treatment for patients with type 1 diabetes.
机译:在任何规模和持续时间的临床试验中,并发事件(ICE)和缺失值都是不可避免的,因此很难在随机临床试验中评估所有患者的治疗效果。定义与临床研究问题相关的适当评估是分析数据的第一步。三方评估评估了因不良事件导致ICEs患者比例、因缺乏疗效导致ICEs患者比例的治疗差异,以及在因果推理框架下能够坚持研究治疗的患者的主要疗效结果,这对许多利益相关者理解总体治疗效果很有意义。在这篇手稿中,我们讨论了如何基于因果推断框架评估三方评估的细节,以及如何通过评估1型糖尿病患者基础胰岛素治疗的3期临床研究来解释三方评估。

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