Edinburgh Clinical Trials Unit, Usher Institute, University of Edinburgh, Edinburgh, UK.
Pharm Stat. 2022 Jan;21(1):55-68. doi: 10.1002/pst.2152. Epub 2021 Jul 30.
Surrogate evaluation is an important topic in clinical trials research, the use of a surrogate in place of a primary endpoint of interest is a common occurrence but also a contentious issue that is much debated. Statistical techniques to assess potential surrogates are closely scrutinised by the research community given the complexities of such an assessment. One such technique is the information theory surrogate evaluation approach which is well-established, practical and theoretically sound. In the context of discrete outcomes, we investigated issues of bias due to inefficiency, overfitting and separation (sparse data) that have not been recognised or addressed previously. The most serious cause of bias is separation in trial information. We outline the concerns surrounding this bias and conduct a simulation study to investigate whether a penalised likelihood technique provides an appropriate solution. We found that removing trials with separation from surrogacy evaluation resulted in a large amount of discarded data. Conversely, the penalised likelihood technique allows retention of all trial information and enables precise and reliable surrogate estimation. The information theory approach is a critical tool for conducting surrogate evaluation. This work strengthens the practical application of the information theory approach, allowing analyses to be adapted or the results summarised with appropriate caution to mitigate the biases highlighted. This is especially true where separation occurs. The adoption of the penalised likelihood technique into information theory surrogate evaluation is a useful addition that solves an issue likely to arise frequently in the context of categorical endpoints.
替代评估是临床试验研究中的一个重要课题,使用替代指标替代感兴趣的主要终点是一种常见但也有争议的做法,备受争议。由于这种评估的复杂性,研究界会仔细审查评估潜在替代指标的统计技术。信息论替代评估方法就是一种经过充分验证的实用且理论上合理的技术。在离散结局的情况下,我们研究了由于效率低下、过拟合和分离(稀疏数据)而导致的偏差问题,这些问题以前没有被认识到或解决。造成偏差的最严重原因是试验信息的分离。我们概述了围绕这种偏差的问题,并进行了一项模拟研究,以调查惩罚似然技术是否提供了适当的解决方案。我们发现,从替代评估中删除具有分离的试验会导致大量数据被丢弃。相反,惩罚似然技术允许保留所有试验信息,并能够进行精确和可靠的替代估计。信息论方法是进行替代评估的关键工具。这项工作加强了信息论方法的实际应用,允许对分析进行调整或总结结果时保持谨慎,以减轻突出的偏差。在出现分离的情况下尤其如此。将惩罚似然技术纳入信息论替代评估是一个有用的补充,它解决了在分类结局的情况下可能经常出现的问题。