Generalized Bayes inference on a linear personalized minimum clinically important difference

08/26/2022
by   Pei-Shien Wu, et al.
0

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.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/08/2020

Gibbs posterior concentration rates under sub-exponential type losses

Bayesian posterior distributions are widely used for inference, but thei...
research
06/10/2020

A different approach for choosing a threshold in peaks over threshold

Abstract In Extreme Value methodology the choice of threshold plays an i...
research
03/06/2013

Diagnosis of Multiple Faults: A Sensitivity Analysis

We compare the diagnostic accuracy of three diagnostic inference models:...
research
10/12/2022

A Bayesian nonparametric approach to personalized treatment selection

Precision medicine is an approach for disease treatment that defines tre...
research
12/21/2020

A comparison of learning rate selection methods in generalized Bayesian inference

Generalized Bayes posterior distributions are formed by putting a fracti...
research
07/24/2017

Accelerating Approximate Bayesian Computation with Quantile Regression: Application to Cosmological Redshift Distributions

Approximate Bayesian Computation (ABC) is a method to obtain a posterior...
research
09/23/2019

Tuning parameter calibration for prediction in personalized medicine

Personalized medicine has become an important part of medicine, for inst...

Please sign up or login with your details

Forgot password? Click here to reset