Department of Medical Education, Instituto Nacional de Ciencias Médicas y Nutrición Salvador Zubirán, Vasco de Quiroga #15, Belisario Domínguez Sección XVI, Mexico City CP 14080, Mexico; Division of Postgraduate Studies, Faculty of Medicine, Universidad Nacional Autónoma de México, Mexico City, Mexico.
Bethesda, MD, USA.
Contemp Clin Trials. 2024 Oct;145:107641. doi: 10.1016/j.cct.2024.107641. Epub 2024 Jul 27.
Randomized controlled trials are the gold standard for determining treatment efficacy in medicine. To deter harmful practices such as p-hacking and hypothesizing after the results are known, any analysis of subgroups and secondary outcomes must be documented and pre-specified. However, they can still introduce bias (and routinely do) if they are not treated with the same consideration as the primary analysis.
We describe several sources of bias that affect subgroup and secondary outcome analyses using published randomized trials and causal directed acyclic graphs (DAGs).
We use the RECOVERY and START trials to elucidate sources of bias in analyses of subgroups and secondary outcomes. Chance imbalance can occur if the distribution of prognostic variables is not sought for any given subgroup analysis as for the main analysis. This differential distribution of prognostic variables can also occur in analyses of secondary outcomes. Selection bias can occur if the subgroup variable is causally related to staying in the trial. Given loss to follow up is not normally addressed in subgroups, attrition bias can pass unnoticed in these cases. In every case, the solution is to take the same considerations for these analyses as we do for primary analyses.
Approval of treatments and clinical decisions can occur based on results from subgroup or secondary outcome analyses. Thus, it is important to give them the same treatment as primary analyses to avoid preventable biases.
随机对照试验是医学中确定治疗效果的金标准。为了防止事后猜测和有害的 p 值操纵等做法,任何亚组分析和次要结局分析都必须记录并预先指定。然而,如果不对其进行与主要分析相同的考虑,它们仍然会引入偏差(并且经常会这样做)。
我们使用已发表的随机试验和因果有向无环图(DAG)描述了影响亚组和次要结局分析的几种偏差来源。
我们使用 RECOVERY 和 START 试验来说明亚组和次要结局分析中存在的偏差来源。如果对于任何给定的亚组分析,不寻求主要分析中预后变量的分布,则可能会发生机会性不平衡。这种预后变量的差异分布也可能出现在次要结局分析中。如果亚组变量与留在试验中有关,则可能会发生选择偏差。由于通常不会在亚组中解决失访问题,因此在这些情况下,可能会忽略失依性偏差。在每种情况下,解决方法都是对这些分析采用与主要分析相同的考虑因素。
可以根据亚组或次要结局分析的结果批准治疗和临床决策。因此,为了避免可预防的偏差,必须对其进行与主要分析相同的处理。