统计的
灵敏度(控制系统)
缺少数据
计量经济学
点估计
引爆点(物理)
计算机科学
推论
插补(统计学)
统计推断
统计
点(几何)
数学
人工智能
电气工程
几何学
电子工程
工程类
作者
C. Torres,Gregory Levin,Daniel B. Rubin,William Koh,Rebecca Chiu,Thomas Permutt
摘要
It is critical to evaluate the sensitivity of conclusions from a clinical trial to potential violations in the missing data assumptions of the statistical analysis. Sensitivity analyses should not consist of a few methods that might have been reasonable alternatives to the chosen analysis method, nor should they explore only a limited space of violations in the assumptions of the analysis. Instead, sensitivity analyses should target the same estimand as that targeted in the main analysis, and they should systematically and comprehensively explore the space of possible assumptions to evaluate whether the key conclusions hold up under all plausible scenarios. In a randomized, controlled trial, this can be achieved by tipping point analyses that vary assumptions about missing outcomes on the experimental and control arms to identify and discuss the plausibility of scenarios under which there is no longer evidence of a treatment effect. We introduce a simple, novel tipping point approach in which, for a variable that is quantitative or can be analyzed as if it is quantitative, inference on the treatment effect is based on the observed data and two sensitivity parameters, with minimal assumptions and no need for imputation. The sensitivity parameters to be varied are the mean differences between outcomes in dropouts and outcomes in completers on each of the two treatment arms. We derive the asymptotic properties of the proposed statistic and illustrate the utility of such an approach with two examples of drug reviews in which the methodology was utilized to inform regulatory decision-making.
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