首页> 外文期刊>Medical decision making: An international journal of the Society for Medical Decision Making >Efficient Research Design: Using Value-of-Information Analysis to Estimate the Optimal Mix of Top-down and Bottom-up Costing Approaches in an Economic Evaluation alongside a Clinical Trial
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Efficient Research Design: Using Value-of-Information Analysis to Estimate the Optimal Mix of Top-down and Bottom-up Costing Approaches in an Economic Evaluation alongside a Clinical Trial

机译:高效的研究设计:使用信息价值分析来估算经济评估和临床试验中自上而下和自下而上的成本核算方法的最佳组合

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摘要

In designing economic evaluations alongside clinical trials, analysts are frequently faced with alternative methods of collecting the same data, the extremes being top-down (gross costing) and bottom-up (micro-costing) approaches. A priori, bottom-up approaches may be considered superior to top-down approaches but are also more expensive to collect and analyze. In this article, we use value-of-information analysis to estimate the efficient mix of observations on each method in a proposed clinical trial. By assigning a prior bivariate distribution to the 2 data collection processes, the predicted posterior (i.e., preposterior) mean and variance of the superior process can be calculated from proposed samples using either process. This is then used to calculate the preposterior mean and variance of incremental net benefit and hence the expected net gain of sampling. We apply this method to a previously collected data set to estimate the value of conducting a further trial and identifying the optimal mix of observations on drug costs at 2 levels: by individual item (process A) and by drug class (process B). We find that substituting a number of observations on process A for process B leads to a modest 35,000 pound increase in expected net gain of sampling. Drivers of the results are the correlation between the 2 processes and their relative cost. This method has potential use following a pilot study to inform efficient data collection approaches for a subsequent full-scale trial. It provides a formal quantitative approach to inform trialists whether it is efficient to collect resource use data on all patients in a trial or on a subset of patients only or to collect limited data on most and detailed data on a subset.
机译:在与临床试验一起设计经济评估时,分析师经常面临收集相同数据的替代方法,其中极端的方法是自上而下(总成本)和自下而上(微成本)方法。先验的,自下而上的方法可能被认为优于自上而下的方法,但收集和分析的成本也更高。在本文中,我们使用信息价值分析来估计拟议的临床试验中每种方法的有效观察结果组合。通过为2个数据收集过程分配一个先验的双变量分布,可以使用任何一个过程从建议的样本中计算出上位过程的预测后验(即后验)均值和方差。然后将其用于计算增量净收益的后验均值和方差,从而计算出样本的预期净收益。我们将此方法应用于先前收集的数据集,以估算进行进一步试验并确定药物成本观察值的最佳组合的价值,该水平分为2个级别:按单个项目(过程A)和按药物类别(过程B)。我们发现,将对过程A的大量观察结果替换为过程B,可导致预期的采样净收益增加35,000磅。结果的驱动因素是两个过程及其相对成本之间的相关性。在初步研究之后,该方法具有潜在用途,可为随后的全面试验提供有效的数据收集方法。它提供了一种正式的定量方法来告知临床医师,是否有效地收集试验中所有患者或仅一部分患者的资源使用数据,或者收集关于大部分和详细数据的有限数据是有效的。

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