Health Economics and Health Technology Assessment, Institute of Health and Wellbeing, University of Glasgow, Glasgow, UK.
MRC/CSO Social and Public Health Sciences Unit, Institute of Health and Wellbeing, University of Glasgow, Glasgow, UK.
J Epidemiol Community Health. 2018 Aug;72(8):673-678. doi: 10.1136/jech-2017-210106. Epub 2018 Apr 13.
Many public health interventions cannot be evaluated using randomised controlled trials so they rely on the assessment of observational data. Techniques for evaluating public health interventions using observational data include interrupted time series analysis, panel data regression-based approaches, regression discontinuity and instrumental variable approaches. The inclusion of a counterfactual improves causal inference for approaches based on time series analysis, but the selection of a suitable counterfactual or control area can be problematic. The synthetic control method builds a counterfactual using a weighted combination of potential control units.
We explain the synthetic control method, summarise its use in health research to date, set out its advantages, assumptions and limitations and describe its implementation through a case study of life expectancy following German reunification.
Advantages of the synthetic control method are that it offers an approach suitable when there is a small number of treated units and control units and it does not rely on parallel preimplementation trends like difference in difference methods. The credibility of the result relies on achieving a good preimplementation fit for the outcome of interest between treated unit and synthetic control. If a good preimplementation fit is established over an extended period of time, a discrepancy in the outcome variable following the intervention can be interpreted as an intervention effect. It is critical that the synthetic control is built from a pool of potential controls that are similar to the treated unit. There is currently no consensus on what constitutes a 'good fit' or how to judge similarity. Traditional statistical inference is not appropriate with this approach, although alternatives are available. From our review, we noted that the synthetic control method has been underused in public health.
Synthetic control methods are a valuable addition to the range of approaches for evaluating public health interventions when randomisation is impractical. They deserve to be more widely applied, ideally in combination with other methods so that the dependence of findings on particular assumptions can be assessed.
许多公共卫生干预措施无法通过随机对照试验进行评估,因此它们依赖于观察性数据的评估。使用观察性数据评估公共卫生干预措施的技术包括中断时间序列分析、面板数据回归方法、回归不连续性和工具变量方法。纳入反事实可以提高基于时间序列分析的方法的因果推断,但选择合适的反事实或对照区域可能会有问题。合成控制法使用潜在对照单位的加权组合构建反事实。
我们解释了合成控制法,总结了它在迄今为止的健康研究中的应用,阐述了它的优点、假设和局限性,并通过德国统一后预期寿命的案例研究描述了它的实施。
合成控制法的优点是,当处理单位和对照单位数量较少时,它提供了一种合适的方法,并且它不像差异方法那样依赖于平行的预先实施趋势。结果的可信度取决于在处理单位和合成控制之间为感兴趣的结果实现良好的预先实施拟合。如果在较长时间内建立了良好的预先实施拟合,那么干预后结果变量的差异可以解释为干预效果。从类似处理单位的潜在对照池中构建合成对照是至关重要的。目前,对于什么构成“良好拟合”或如何判断相似性,还没有共识。虽然有替代方案,但这种方法不适合传统的统计推断。从我们的综述中,我们注意到合成控制法在公共卫生领域的应用不足。
当随机化不切实际时,合成控制方法是评估公共卫生干预措施的一系列方法的有价值的补充。它们应该得到更广泛的应用,理想情况下与其他方法结合使用,以便可以评估发现对特定假设的依赖性。