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Estimating the expected value of partial perfect information in health economic evaluations using integrated nested Laplace approximation

机译:使用集成的嵌套拉普拉斯近似值估计卫生经济评估中部分完美信息的期望值

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摘要

The Expected Value of Perfect Partial Information (EVPPI) is a decision‐theoretic measure of the ‘cost’ of parametric uncertainty in decision making used principally in health economic decision making. Despite this decision‐theoretic grounding, the uptake of EVPPI calculations in practice has been slow. This is in part due to the prohibitive computational time required to estimate the EVPPI via Monte Carlo simulations. However, recent developments have demonstrated that the EVPPI can be estimated by non‐parametric regression methods, which have significantly decreased the computation time required to approximate the EVPPI. Under certain circumstances, high‐dimensional Gaussian Process (GP) regression is suggested, but this can still be prohibitively expensive. Applying fast computation methods developed in spatial statistics using Integrated Nested Laplace Approximations (INLA) and projecting from a high‐dimensional into a low‐dimensional input space allows us to decrease the computation time for fitting these high‐dimensional GP, often substantially. We demonstrate that the EVPPI calculated using our method for GP regression is in line with the standard GP regression method and that despite the apparent methodological complexity of this new method, R functions are available in the package BCEA to implement it simply and efficiently. © 2016 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
机译:完美部分信息的期望值(EVPPI)是一种决策理论量度,主要用于卫生经济决策中的决策不确定性“成本”。尽管有这种决策理论基础,但实际中对EVPPI计算的采用仍很缓慢。这部分是由于通过蒙特卡洛模拟估算EVPPI所需的计算时间过长。但是,最近的发展表明,可以通过非参数回归方法来估计EVPPI,这大大减少了近似EVPPI所需的计算时间。在某些情况下,建议使用高维高斯过程(GP)回归,但这仍然可能会非常昂贵。应用在使用集成嵌套拉普拉斯近似(INLA)的空间统计中开发的快速计算方法,并从高维投影到低维输入空间,使我们可以减少通常适合于这些高维GP的计算时间。我们证明,使用我们的GP回归方法计算出的EVPPI与标准GP回归方法一致,并且尽管这种新方法的方法学看起来很复杂,但BCEA软件包中仍提供了R函数,可以简单有效地实现该功能。 ©2016作者。 John Wiley&Sons Ltd.发布的医学统计资料。

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