Leurent Baptiste, Gomes Manuel, Carpenter James R
Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, UK.
Department of Health Services Research and Policy, London School of Hygiene and Tropical Medicine, London, UK.
Health Econ. 2018 Jun;27(6):1024-1040. doi: 10.1002/hec.3654. Epub 2018 Mar 24.
Cost-effectiveness analyses (CEA) conducted alongside randomised trials provide key evidence for informing healthcare decision making, but missing data pose substantive challenges. Recently, there have been a number of developments in methods and guidelines addressing missing data in trials. However, it is unclear whether these developments have permeated CEA practice. This paper critically reviews the extent of and methods used to address missing data in recently published trial-based CEA. Issues of the Health Technology Assessment journal from 2013 to 2015 were searched. Fifty-two eligible studies were identified. Missing data were very common; the median proportion of trial participants with complete cost-effectiveness data was 63% (interquartile range: 47%-81%). The most common approach for the primary analysis was to restrict analysis to those with complete data (43%), followed by multiple imputation (30%). Half of the studies conducted some sort of sensitivity analyses, but only 2 (4%) considered possible departures from the missing-at-random assumption. Further improvements are needed to address missing data in cost-effectiveness analyses conducted alongside randomised trials. These should focus on limiting the extent of missing data, choosing an appropriate method for the primary analysis that is valid under contextually plausible assumptions, and conducting sensitivity analyses to departures from the missing-at-random assumption.
与随机试验同时进行的成本效益分析(CEA)为医疗保健决策提供了关键证据,但数据缺失带来了重大挑战。最近,在处理试验中数据缺失的方法和指南方面有了一些进展。然而,尚不清楚这些进展是否已渗透到CEA实践中。本文批判性地回顾了最近发表的基于试验的CEA中处理数据缺失的程度和所使用的方法。检索了《卫生技术评估》杂志2013年至2015年的各期。确定了52项符合条件的研究。数据缺失非常普遍;具有完整成本效益数据的试验参与者的中位数比例为63%(四分位间距:47%-81%)。主要分析最常用的方法是将分析限制在具有完整数据的人群中(43%),其次是多重填补(30%)。一半的研究进行了某种敏感性分析,但只有2项研究(4%)考虑了可能偏离随机缺失假设的情况。在与随机试验同时进行的成本效益分析中,处理数据缺失还需要进一步改进。这些改进应侧重于限制数据缺失的程度,选择一种在符合实际情况的合理假设下有效的主要分析方法,并针对偏离随机缺失假设的情况进行敏感性分析。