Volume 38, Issue 8
RESEARCH ARTICLE

A full Bayesian model to handle structural ones and missingness in economic evaluations from individual‐level data

Andrea Gabrio

Corresponding Author

E-mail address: ucakgab@ucl.ac.uk

Department of Statistical Science, University College London, London, UK

Andrea Gabrio, Department of Statistical Science, University College London, London WC1E 6BT, UK.

Email: ucakgab@ucl.ac.uk

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Alexina J. Mason

Department of Health Services Research and Policy, London School of Hygiene & Tropical Medicine, London, UK

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Gianluca Baio

Department of Statistical Science, University College London, London, UK

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First published: 22 November 2018
Citations: 3

Abstract

Economic evaluations from individual‐level data are an important component of the process of technology appraisal, with a view to informing resource allocation decisions. A critical problem in these analyses is that both effectiveness and cost data typically present some complexity (eg, nonnormality, spikes, and missingness) that should be addressed using appropriate methods. However, in routine analyses, standardised approaches are typically used, possibly leading to biassed inferences. We present a general Bayesian framework that can handle the complexity. We show the benefits of using our approach with a motivating example, the MenSS trial, for which there are spikes at one in the effectiveness and missingness in both outcomes. We contrast a set of increasingly complex models and perform sensitivity analysis to assess the robustness of the conclusions to a range of plausible missingness assumptions. We demonstrate the flexibility of our approach with a second example, the PBS trial, and extend the framework to accommodate the characteristics of the data in this study. This paper highlights the importance of adopting a comprehensive modelling approach to economic evaluations and the strategic advantages of building these complex models within a Bayesian framework.

Number of times cited according to CrossRef: 3

  • The Effects of Model Misspecification in Unanchored Matching-Adjusted Indirect Comparison (MAIC): Results of a Simulation Study, Value in Health, 10.1016/j.jval.2020.02.008, (2020).
  • Reference‐based multiple imputation for missing data sensitivity analyses in trial‐based cost‐effectiveness analysis, Health Economics, 10.1002/hec.3963, 29, 2, (171-184), (2019).
  • A Bayesian parametric approach to handle missing longitudinal outcome data in trial‐based health economic evaluations, Journal of the Royal Statistical Society: Series A (Statistics in Society), 10.1111/rssa.12522, 183, 2, (607-629), (2019).

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