Stat Med. 2026 May;45(10-12):e70575. doi: 10.1002/sim.70575.
ABSTRACT
Bang and Zhao address an important methodological gap by proposing meta-analytic methods for cost-effectiveness analysis (CEA) based on separate pooling of incremental costs (ΔC) and incremental effectiveness (ΔE), with summaries displayed on the cost-effectiveness plane. We share the aim of expanding the toolkit for CEA synthesis; however, we believe that several issues need clarification before the proposal can serve as a general blueprint. First, the two motivating examples appear not to satisfy the key combinability criteria described by Shields and Elvidge. Second, the proposal does not incorporate the data harmonization steps recommended for the meta-analysis of economic evaluations by Bagepally et al. Third, separate univariate pooling does not retain the within-study association between ΔC and ΔE, which complicates the joint interpretation of the pooled ICER and its uncertainty. As a possible way forward, we propose a two-stage framework in which a structured combinability assessment and data harmonization precede any quantitative synthesis, and discuss why joint modeling of (ΔC, ΔE) is preferable to separate univariate pooling. In our view, such a framework provides a more defensible route to pooled ICERs, joint uncertainty summaries, and decision-relevant quantities such as cost-effectiveness acceptability curves (CEACs).
PMID:42153314 | DOI:10.1002/sim.70575