Quantitative methods for benefit-risk analysis help to condense complex decisions into a univariate metric describing the overall benefit relative to risk. One approach is to use the multi-criteria decision analysis framework (MCDA), as in Mussen, Salek, and Walker (2007) <doi:10.1002/pds.1435>. Bayesian benefit-risk analysis incorporates uncertainty through posterior distributions which are inputs to the benefit-risk framework. The brisk package provides functions to assist with Bayesian benefit-risk analyses, such as MCDA. Users input posterior samples, utility functions, weights, and the package outputs quantitative benefit-risk scores. The posterior of the benefit-risk scores for each group can be compared. Some plotting capabilities are also included.
Package details |
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Author | Richard Payne [aut, cre], Sai Dharmarajan [rev], Eli Lilly and Company [cph] |
Maintainer | Richard Payne <paynestatistics@gmail.com> |
License | MIT + file LICENSE |
Version | 0.1.0 |
URL | https://rich-payne.github.io/brisk/ |
Package repository | View on CRAN |
Installation |
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