Estimation of Optimal Dynamic Treatment Regimes via Gaussian Process Emulation: A Technical Report

05/25/2021
by   Daniel Rodriguez Duque, et al.
0

Causal inference of treatment effects is a challenging undertaking in it of itself; inference for sequential treatments leads to even more hurdles. In precision medicine, one additional ambitious goal may be to infer about effects of dynamic treatment regimes (DTRs) and to identify optimal DTRs. Conventional methods for inferring about DTRs involve powerful semi-parametric estimators. However, these are not without their strong assumptions. Dynamic Marginal Structural Models (MSMs) are one semi-parametric approach used to infer about optimal DTRs in a family of regimes. To achieve this, investigators are forced to model the expected outcome under adherence to a DTR in the family; relatively straightforward models may lead to bias in the optimum. One way to obviate this difficulty is to perform a grid search for the optimal DTR. Unfortunately, this approach becomes prohibitive as the complexity of regimes considered increases. In recently developed Bayesian methods for dynamic MSMs, computational challenges may be compounded by the fact that at each grid point, a posterior mean must be calculated. We propose a manner by which to alleviate modelling difficulties for DTRs by using Gaussian process optimization. More precisely, we show how to pair this optimization approach with robust estimators for the causal effect of adherence to a DTR to identify optimal DTRs. We examine how to find the optimum in complex, multi-modal settings which are not generally addressed in the DTR literature. We further evaluate the sensitivity of the approach to a variety of modeling assumptions in the Gaussian process.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/27/2023

Bayesian inference for optimal dynamic treatment regimes in practice

In this work, we examine recently developed methods for Bayesian inferen...
research
04/15/2020

A Practical Introduction to Bayesian Estimation of Causal Effects: Parametric and Nonparametric Approaches

Substantial advances in Bayesian methods for causal inference have been ...
research
10/19/2021

Addressing Positivity Violations in Causal Effect Estimation using Gaussian Process Priors

In observational studies, causal inference relies on several key identif...
research
03/06/2022

Optimal regimes for algorithm-assisted human decision-making

We introduce optimal regimes for algorithm-assisted human decision-makin...
research
08/13/2018

Semiparametric Bayesian causal inference using Gaussian process priors

We develop a semiparametric Bayesian approach for estimating the mean re...
research
11/04/2022

Bayesian Sequential Experimental Design for a Partially Linear Model with a Gaussian Process Prior

We study the problem of sequential experimental design to estimate the p...
research
06/23/2021

Optimal estimation of coarse structural nested mean models with application to initiating ART in HIV infected patients

Coarse structural nested mean models are used to estimate treatment effe...

Please sign up or login with your details

Forgot password? Click here to reset