A prediction interval covers a future observation from a random process in repeated sampling, and is typically constructed by identifying a pivotal quantity that is also an ancillary statistic. Analogously, a tolerance interval covers a population percentile in repeated sampling and is often based on a pivotal quantity. One approach we consider in non-normal models leverages a link function resulting in a pivotal quantity that is approximately normally distributed. In settings where this normal approximation does not hold we consider a second approach for tolerance and prediction based on a confidence interval for the mean. These methods are intuitive, simple to implement, have proper operating characteristics, and are computationally efficient compared to Bayesian, re-sampling, and machine learning methods. This is demonstrated in the context of multi-site clinical trial recruitment with staggered site initiation, real-world time on treatment, and end-of-study success for a clinical endpoint.
翻译:一个预测间隔期涵盖从反复抽样随机过程得出的未来观测,通常通过确定一个关键数量来构建,而该数量也是一个辅助性统计。类推,一个容忍间隔期涵盖重复抽样中的人口百分位,而且往往基于一个关键数量。一种在非正常模型中我们所考虑的方法利用了一个链接功能,导致一个关键数量大致正常分布。在这种正常近似不认为我们考虑基于该平均值信任间隔的另一种容忍和预测方法的情况下,这些方法直观、简单、易于执行、具有适当的操作特征,并且与巴耶西亚、再抽样和机器学习方法相比,具有计算效率。这在多点临床试验的征聘中表现为错开的现场启动、实际治疗时间和临床终点研究结束时的成功。