Sculpher M J, Pang F S, Manca A, Drummond M F, Golder S, Urdahl H, Davies L M, Eastwood A
Centre for Health Economics, University of York, UK.
Health Technol Assess. 2004 Dec;8(49):iii-iv, 1-192. doi: 10.3310/hta8490.
To review, and to develop further, the methods used to assess and to increase the generalisability of economic evaluation studies.
Electronic databases.
Methodological studies relating to economic evaluation in healthcare were searched. This included electronic searches of a range of databases, including PREMEDLINE, MEDLINE, EMBASE and EconLit, and manual searches of key journals. The case studies of a decision analytic model involved highlighting specific features of previously published economic studies related to generalisability and location-related variability. The case-study involving the secondary analysis of cost-effectiveness analyses was based on the secondary analysis of three economic studies using data from randomised trials.
The factor most frequently cited as generating variability in economic results between locations was the unit costs associated with particular resources. In the context of studies based on the analysis of patient-level data, regression analysis has been advocated as a means of looking at variability in economic results across locations. These methods have generally accepted that some components of resource use and outcomes are exchangeable across locations. Recent studies have also explored, in cost-effectiveness analysis, the use of tests of heterogeneity similar to those used in clinical evaluation in trials. The decision analytic model has been the main means by which cost-effectiveness has been adapted from trial to non-trial locations. Most models have focused on changes to the cost side of the analysis, but it is clear that the effectiveness side may also need to be adapted between locations. There have been weaknesses in some aspects of the reporting in applied cost-effectiveness studies. These may limit decision-makers' ability to judge the relevance of a study to their specific situations. The case study demonstrated the potential value of multilevel modelling (MLM). Where clustering exists by location (e.g. centre or country), MLM can facilitate correct estimates of the uncertainty in cost-effectiveness results, and also a means of estimating location-specific cost-effectiveness. The review of applied economic studies based on decision analytic models showed that few studies were explicit about their target decision-maker(s)/jurisdictions. The studies in the review generally made more effort to ensure that their cost inputs were specific to their target jurisdiction than their effectiveness parameters. Standard sensitivity analysis was the main way of dealing with uncertainty in the models, although few studies looked explicitly at variability between locations. The modelling case study illustrated how effectiveness and cost data can be made location-specific. In particular, on the effectiveness side, the example showed the separation of location-specific baseline events and pooled estimates of relative treatment effect, where the latter are assumed exchangeable across locations.
A large number of factors are mentioned in the literature that might be expected to generate variation in the cost-effectiveness of healthcare interventions across locations. Several papers have demonstrated differences in the volume and cost of resource use between locations, but few studies have looked at variability in outcomes. In applied trial-based cost-effectiveness studies, few studies provide sufficient evidence for decision-makers to establish the relevance or to adjust the results of the study to their location of interest. Very few studies utilised statistical methods formally to assess the variability in results between locations. In applied economic studies based on decision models, most studies either stated their target decision-maker/jurisdiction or provided sufficient information from which this could be inferred. There was a greater tendency to ensure that cost inputs were specific to the target jurisdiction than clinical parameters. Methods to assess generalisability and variability in economic evaluation studies have been discussed extensively in the literature relating to both trial-based and modelling studies. Regression-based methods are likely to offer a systematic approach to quantifying variability in patient-level data. In particular, MLM has the potential to facilitate estimates of cost-effectiveness, which both reflect the variation in costs and outcomes between locations and also enable the consistency of cost-effectiveness estimates between locations to be assessed directly. Decision analytic models will retain an important role in adapting the results of cost-effectiveness studies between locations. Recommendations for further research include: the development of methods of evidence synthesis which model the exchangeability of data across locations and allow for the additional uncertainty in this process; assessment of alternative approaches to specifying multilevel models to the analysis of cost-effectiveness data alongside multilocation randomised trials; identification of a range of appropriate covariates relating to locations (e.g. hospitals) in multilevel models; and further assessment of the role of econometric methods (e.g. selection models) for cost-effectiveness analysis alongside observational datasets, and to increase the generalisability of randomised trials.
回顾并进一步拓展用于评估和提高经济评估研究可推广性的方法。
电子数据库。
检索了与医疗保健经济评估相关的方法学研究。这包括对一系列数据库进行电子检索,如PREMEDLINE、MEDLINE、EMBASE和EconLit,以及对关键期刊进行手工检索。决策分析模型的案例研究涉及突出先前发表的与可推广性和地点相关变异性有关的经济研究的特定特征。涉及成本效益分析二次分析的案例研究基于对三项使用随机试验数据的经济研究的二次分析。
在不同地点间经济结果产生变异性的最常被提及的因素是与特定资源相关的单位成本。在基于患者层面数据分析的研究中,回归分析被倡导作为一种考察不同地点间经济结果变异性的方法。这些方法普遍认为资源使用和结果的某些组成部分在不同地点间是可互换的。近期研究还在成本效益分析中探索了类似于临床试验中使用的异质性检验的应用。决策分析模型一直是将成本效益从试验地点应用到非试验地点的主要手段。大多数模型聚焦于分析成本方面的变化,但很明显效果方面在不同地点间也可能需要调整。应用成本效益研究在报告的某些方面存在不足。这些可能会限制决策者判断一项研究与他们特定情况相关性的能力。案例研究展示了多水平建模(MLM)的潜在价值。当存在按地点聚类的情况(如中心或国家)时,多水平建模可以促进对成本效益结果不确定性的正确估计,并提供一种估计特定地点成本效益的方法。基于决策分析模型的应用经济研究综述表明,很少有研究明确指出其目标决策者/司法管辖区。综述中的研究通常在确保成本投入针对其目标司法管辖区方面比在确保效果参数针对目标司法管辖区方面付出了更多努力。标准敏感性分析是处理模型中不确定性的主要方式,尽管很少有研究明确考察不同地点间的变异性。建模案例研究说明了如何使效果和成本数据具有地点特异性。特别是在效果方面,该示例展示了特定地点基线事件与相对治疗效果合并估计值的分离,其中后者假定在不同地点间是可互换的。
文献中提到了大量可能预期会导致不同地点间医疗保健干预成本效益产生差异的因素。几篇论文展示了不同地点间资源使用的数量和成本差异,但很少有研究考察结果的变异性。在基于试验的应用成本效益研究中,很少有研究为决策者提供足够证据以确定研究的相关性或将研究结果调整到他们感兴趣的地点。极少有研究正式使用统计方法评估不同地点间结果的变异性。在基于决策模型的应用经济研究中,大多数研究要么指明了其目标决策者/司法管辖区,要么提供了足够信息以从中推断出目标决策者/司法管辖区。相比于临床参数,确保成本投入针对目标司法管辖区的倾向更大。在与基于试验和建模的研究相关的文献中,已广泛讨论了评估经济评估研究可推广性和变异性方面的方法。基于回归的方法可能会提供一种系统的方法来量化患者层面数据的变异性。特别是,多水平建模有潜力促进成本效益估计,既能反映不同地点间成本和结果的差异,又能直接评估不同地点间成本效益估计的一致性。决策分析模型在将成本效益研究结果应用于不同地点间仍将发挥重要作用。进一步研究的建议包括:开发证据综合方法,对不同地点间数据的可互换性进行建模,并考虑此过程中的额外不确定性;评估在多地点随机试验的同时,用于分析成本效益数据的指定多水平模型的替代方法;确定多水平模型中与地点(如医院)相关的一系列合适协变量;以及进一步评估计量经济学方法(如选择模型)在观察性数据集的成本效益分析中的作用,以提高随机试验的可推广性。