A Bayesian Framework for Patient-Level Partitioned Survival Cost-Utility Analysis.
Andrea GabrioPublished in: Medical decision making : an international journal of the Society for Medical Decision Making (2021)
Patient-level health economic data collected alongside clinical trials are an important component of the process of technology appraisal. For end-of-life treatments, the modeling of cost-effectiveness data may involve some form of partitioned survival analysis, in which measures of quality of life and survival for pre- and postprogression periods are combined to generate aggregate measures of clinical benefits (e.g., quality-adjusted survival). In addition, resource use data are often collected and costs are calculated for each type of health service (e.g., treatment, hospital, or adverse events costs). A critical problem in these analyses is that effectiveness and cost data present some complexities, such as nonnormality, spikes, and missingness, which should be addressed using appropriate methods to avoid biased results. This article proposes a general Bayesian framework that takes into account the complexities of trial-based partitioned survival cost-utility data to provide more adequate evidence for policy makers. Our approach is motivated by, and applied to, a working example based on data from a trial assessing the cost-effectiveness of a new treatment for patients with advanced non-small-cell lung cancer.[Box: see text].
Keyphrases
- electronic health record
- clinical trial
- big data
- advanced non small cell lung cancer
- healthcare
- public health
- randomized controlled trial
- free survival
- case report
- phase iii
- study protocol
- phase ii
- emergency department
- mental health
- epidermal growth factor receptor
- data analysis
- artificial intelligence
- deep learning
- smoking cessation