Flynn Terry N, Peters Tim J
Department of Social Medicine, University of Bristol, Bristol, UK.
Int J Technol Assess Health Care. 2005 Summer;21(3):403-9. doi: 10.1017/s0266462305050531.
This work has investigated under what conditions cost-effectiveness data from a cluster randomized trial (CRT) are suitable for analysis using a cluster-adjusted nonparametric bootstrap. The bootstrap's main advantages are in dealing with skewed data and its ability to take correlations between costs and effects into account. However, there are known theoretical problems with a commonly used cluster bootstrap procedure, and the practical implications of these require investigation.
Simulations were used to estimate the coverage of confidence intervals around incremental cost-effectiveness ratios from CRTs using two bootstrap methods.
The bootstrap gave excessively narrow confidence intervals, but there was evidence to suggest that, when the number of clusters per treatment arm exceeded 24, it might give acceptable results. The method that resampled individuals as well as clusters did not perform well when cost and effectiveness data were correlated.
If economic data from such trials are to be analyzed adequately, then there is a need for further investigations of more complex bootstrap procedures. Similarly, further research is required on methods such as the net benefit approach.
本研究探讨了在何种条件下,来自整群随机试验(CRT)的成本效益数据适用于使用整群调整非参数自助法进行分析。自助法的主要优点在于处理偏态数据以及考虑成本与效果之间相关性的能力。然而,常用的整群自助程序存在已知的理论问题,其实际影响需要进行研究。
使用模拟来估计采用两种自助法时CRT中增量成本效益比置信区间的覆盖范围。
自助法给出的置信区间过窄,但有证据表明,当每个治疗组的整群数量超过24时,可能会给出可接受的结果。当成本和效果数据相关时,对个体和整群进行重抽样的方法效果不佳。
如果要对这类试验的经济数据进行充分分析,那么需要进一步研究更复杂的自助程序。同样,对于净效益法等方法也需要进一步研究。