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Generalized Bayes inference on a linear personalized minimum clinically important difference

Methodology 2022-08-29 v1

Abstract

Inference on the minimum clinically important difference, or MCID, is an important practical problem in medicine. The basic idea is that a treatment being statistically significant may not lead to an improvement in the patients' well-being. The MCID is defined as a threshold such that, if a diagnostic measure exceeds this threshold, then the patients are more likely to notice an improvement. Typical formulations use an underspecified model, which makes a genuine Bayesian solution out of reach. Here, for a challenging personalized MCID problem, where the practically-significant threshold depends on patients' profiles, we develop a novel generalized posterior distribution, based on a working binary quantile regression model, that can be used for estimation and inference. The advantage of this formulation is two-fold: we can theoretically control the bias of the misspecified model and it has a latent variable representation which we can leverage for efficient Gibbs sampling. To ensure that the generalized Bayes inferences achieve a level of frequentist reliability, we propose a variation on the so-called generalized posterior calibration algorithm to suitably tune the spread of our proposed posterior.

Keywords

Cite

@article{arxiv.2208.12565,
  title  = {Generalized Bayes inference on a linear personalized minimum clinically important difference},
  author = {Pei-Shien Wu and Ryan Martin},
  journal= {arXiv preprint arXiv:2208.12565},
  year   = {2022}
}

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R2 v1 2026-06-25T01:59:57.798Z