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首页> 外文期刊>Medical decision making: An international journal of the Society for Medical Decision Making >Estimating the Expected Value of Sample Information across Different Sample Sizes Using Moment Matching and Nonlinear Regression
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Estimating the Expected Value of Sample Information across Different Sample Sizes Using Moment Matching and Nonlinear Regression

机译:使用时刻匹配和非线性回归估算不同样本大小跨不同样本尺寸的预期值

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Background. The expected value of sample information (EVSI) determines the economic value of any future study with a specific design aimed at reducing uncertainty about the parameters underlying a health economic model. This has potential as a tool for trial design; the cost and value of different designs could be compared to find the trial with the greatest net benefit. However, despite recent developments, EVSI analysis can be slow, especially when optimizing over a large number of different designs. Methods. This article develops a method to reduce the computation time required to calculate the EVSI across different sample sizes. Our method extends the moment-matching approach to EVSI estimation to optimize over different sample sizes for the underlying trial while retaining a similar computational cost to a single EVSI estimate. This extension calculates the posterior variance of the net monetary benefit across alternative sample sizes and then uses Bayesian nonlinear regression to estimate the EVSI across these sample sizes. Results. A health economic model developed to assess the cost-effectiveness of interventions for chronic pain demonstrates that this EVSI calculation method is fast and accurate for realistic models. This example also highlights how different trial designs can be compared using the EVSI. Conclusion. The proposed estimation method is fast and accurate when calculating the EVSI across different sample sizes. This will allow researchers to realize the potential of using the EVSI to determine an economically optimal trial design for reducing uncertainty in health economic models. Limitations. Our method involves rerunning the health economic model, which can be more computationally expensive than some recent alternatives, especially in complex models.
机译:背景。样品信息(EVSI)的预期价值决定了任何未来研究的经济价值,具体设计旨在减少卫生经济模式下面的参数的不确定性。这具有潜力作为试验设计的工具;可以比较不同设计的成本和价值,以找到具有最大净利益的试验。然而,尽管最近的发展,EVSI分析可能很慢,特别是在优化大量不同的设计时。方法。本文开发了一种方法来减少计算在不同样本大小上计算EVSI所需的计算时间。我们的方法扩展了EVSI估计的矩匹配方法,以优化不同的样本尺寸,以便在潜在的试验中保留与单个EVSI估计相似的计算成本。该扩展计算替代样本尺寸的净货币益处的后差,然后使用贝叶斯非线性回归来估计这些样本大小的EVSI。结果。为评估慢性疼痛干预措施的成本效益而开发的卫生经济模式表明,该EVSI计算方法对于现实模型来说是快速准确的。此示例还突出显示如何使用EVSI比较不同的试验设计。结论。在不同样本尺寸计算EVSI时,所提出的估计方法是快速准确的。这将使研究人员能够实现使用EVSI来确定经济上最佳试验设计,以减少卫生经济模型的不确定性。限制。我们的方法涉及重新运行卫生经济模式,这可能比最近的一些替代方案更昂贵,特别是在复杂的模型中。

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