Nourredine Mikail, Gavoille Antoine, Lepage Côme, Kassai-Koupai Behrouz, Cucherat Michel, Subtil Fabien
Service de Biostatistique-Bioinformatique, Hospices Civils de Lyon, Lyon, France.
Université Claude Bernard Lyon1, Villeurbanne, France.
Stat Med. 2025 Sep;44(20-22):e70236. doi: 10.1002/sim.70236.
Single-arm control trials are increasingly proposed as a potential approach for treatment evaluation. However, the limitations of this design restrict its methodological acceptability. Regulatory agencies have raised concerns about this approach, although it is sometimes required in applications based solely on such studies. Consequently, the need for accurate indirect treatment comparisons has become critical, especially when constructing external control arms using routinely collected data as outcome measurements may differ from those recorded in the single-arm trial leading to potential misclassification of outcomes. This study aimed to quantify the bias from ignoring misclassification of a binary outcome within unanchored indirect comparisons, through simulations, and to propose a likelihood-based method to correct this bias (i.e., the outcome-corrected model). Simulations demonstrated that ignoring misclassification results in significant bias and poor coverage probabilities. In contrast, the outcome-corrected model reduced bias, improved 95% confidence interval coverage probability and root mean square error in various scenarios. The methodology was applied to two hepatocellular carcinoma trials illustrating a practical application. The findings underscore the importance of addressing outcome misclassification in indirect comparisons. The proposed correction method may improve reliability in unanchored indirect treatment comparisons.
单臂对照试验越来越多地被提议作为一种治疗评估的潜在方法。然而,这种设计的局限性限制了其方法学上的可接受性。监管机构对这种方法表示担忧,尽管在仅基于此类研究的应用中有时需要这种方法。因此,准确的间接治疗比较的需求变得至关重要,尤其是在构建外部对照臂时,因为使用常规收集的数据作为结果测量可能与单臂试验中记录的测量不同,从而导致结果的潜在错误分类。本研究旨在通过模拟量化在无锚定间接比较中忽略二元结果错误分类所产生的偏差,并提出一种基于似然的方法来纠正这种偏差(即结果校正模型)。模拟表明,忽略错误分类会导致显著的偏差和较差的覆盖概率。相比之下,结果校正模型在各种情况下减少了偏差,提高了95%置信区间的覆盖概率和均方根误差。该方法应用于两项肝细胞癌试验,说明了其实际应用。研究结果强调了在间接比较中解决结果错误分类的重要性。所提出的校正方法可能会提高无锚定间接治疗比较的可靠性。