Department of Health Sciences, Faculty of Science, Vrije Universiteit Amsterdam, Amsterdam Movement Sciences Research Institute, Amsterdam, the Netherlands.
Department of Epidemiology and Biostatistics, Amsterdam UMC, Vrije Universiteit Amsterdam, Amsterdam Movement Sciences Research Institute, Amsterdam, the Netherlands.
BMC Health Serv Res. 2021 May 19;21(1):475. doi: 10.1186/s12913-021-06513-1.
Baseline imbalances, skewed costs, the correlation between costs and effects, and missing data are statistical challenges that are often not adequately accounted for in the analysis of cost-effectiveness data. This study aims to illustrate the impact of accounting for these statistical challenges in trial-based economic evaluations.
Data from two trial-based economic evaluations, the REALISE and HypoAware studies, were used. In total, 14 full cost-effectiveness analyses were performed per study, in which the four statistical challenges in trial-based economic evaluations were taken into account step-by-step. Statistical approaches were compared in terms of the resulting cost and effect differences, ICERs, and probabilities of cost-effectiveness.
In the REALISE study and HypoAware study, the ICER ranged from 636,744€/QALY and 90,989€/QALY when ignoring all statistical challenges to - 7502€/QALY and 46,592€/QALY when accounting for all statistical challenges, respectively. The probabilities of the intervention being cost-effective at 0€/ QALY gained were 0.67 and 0.59 when ignoring all statistical challenges, and 0.54 and 0.27 when all of the statistical challenges were taken into account for the REALISE study and HypoAware study, respectively.
Not accounting for baseline imbalances, skewed costs, correlated costs and effects, and missing data in trial-based economic evaluations may notably impact results. Therefore, when conducting trial-based economic evaluations, it is important to align the statistical approach with the identified statistical challenges in cost-effectiveness data. To facilitate researchers in handling statistical challenges in trial-based economic evaluations, software code is provided.
基线不平衡、成本偏倚、成本与效果的相关性以及缺失数据是在成本效益数据分析中经常未得到充分考虑的统计挑战。本研究旨在说明在基于试验的经济评估中考虑这些统计挑战的影响。
REALISE 和 HypoAware 两项基于试验的经济评估的数据被用于研究。每项研究都进行了 14 项全成本效益分析,逐步考虑基于试验的经济评估中的四项统计挑战。比较了统计方法在成本效果差异、增量成本效果比(ICER)和成本效果概率方面的结果。
在 REALISE 研究和 HypoAware 研究中,忽略所有统计挑战时的 ICER 范围从 636744 欧元/QALY 到 90989 欧元/QALY,而考虑所有统计挑战时的 ICER 范围从 -7502 欧元/QALY 到 46592 欧元/QALY。忽略所有统计挑战时,干预措施在 0 欧元/QALY 获益的概率为 0.67 和 0.59,而当考虑 REALISE 研究和 HypoAware 研究中的所有统计挑战时,干预措施在 0 欧元/QALY 获益的概率为 0.54 和 0.27。
在基于试验的经济评估中不考虑基线不平衡、成本偏倚、成本与效果的相关性以及缺失数据,可能会显著影响结果。因此,在进行基于试验的经济评估时,重要的是要使统计方法与成本效益数据中确定的统计挑战保持一致。为了帮助研究人员处理基于试验的经济评估中的统计挑战,提供了软件代码。