In evidence synthesis, effect measure modifiers are typically described as variables that induce treatment effect heterogeneity at the individual level, through treatment-covariate interactions in an outcome model parametrized at such level. As such, effect modification is defined with respect to a conditional measure. However, marginal effect estimates are required for population-level decisions in health technology assessment. For non-collapsible effect measures, purely prognostic variables that do not predict response to treatment at the individual level may modify marginal treatment effects at the population level. This has important implications for recommended practices for evidence synthesis. Firstly, unadjusted indirect comparisons of marginal effects may be biased in the absence of individual-level treatment effect heterogeneity. Secondly, covariate adjustment may be necessary to account for cross-study imbalances in purely prognostic variables. Popular summary measures in meta-analysis such as odds ratios and hazard ratios are non-collapsible. Collapsible measures would facilitate the transportability of marginal effects between studies by: (1) removing dependence on model-based covariate adjustment when there is treatment effect homogeneity at the individual level; and (2) facilitating the selection of baseline characteristics for covariate adjustment when there is heterogeneity.
翻译:在证据综合中,效果计量的改变通常被描述为通过结果模型在这种水平上相互平衡的结果模型中进行治疗效应不同变异相互作用,在个人层次上引起治疗效应异化的变量,因此,对效果的修改是有条件的,但是,在健康技术评估中,对人口层次的决定需要进行边际估计;对于非混合效应措施,纯粹预测性变量,不预测对个人层次治疗的反应,可能会改变人口层次上的边际治疗影响,这对建议的证据综合做法具有重要影响。首先,在缺乏个人层次的治疗效果时,对边际效应进行未经调整的间接比较可能会有偏向。第二,可能需要对差异性调整,以说明纯粹预测性变量中跨研究不平衡的原因。在元分析中,如概率比率和危险比率等流行性概括性措施是不可相互重叠的。