Estimating the Expected Value of Sample Information across Different Sample Sizes using Moment Matching and Non-Linear Regression
Anna Heath, Ioanna Manolopoulou, Gianluca Baio

TL;DR
This paper introduces a fast, accurate method using moment matching and non-linear regression to estimate the EVSI across various sample sizes, aiding optimal trial design in health economics.
Contribution
It extends the moment matching approach with Bayesian non-linear regression to efficiently compute EVSI for multiple sample sizes simultaneously.
Findings
The method is fast and accurate in realistic health economic models.
It enables comparison of different trial designs based on EVSI.
The approach reduces computational costs compared to traditional methods.
Abstract
Background: The Expected Value of Sample Information (EVSI) determines the economic value of any future study with a specific design aimed at reducing uncertainty in 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 optimising over a large number of different designs. Methods: This paper 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 optimise over different sample sizes for the underlying trial with a similar computational cost to a single EVSI estimate. This extension calculates posterior variances across the alternative sample sizes and then uses…
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