Tree-based exploratory identification of predictive biomarkers in observational data

12/16/2022
by   Julia Krzykalla, et al.
0

The idea of "stratified medicine" is an important driver of methodological research on the identification of predictive biomarkers. Most methods proposed so far for this purpose have been developed for the use on randomized data only. However, especially for rare cancers, data from clinical registries or observational studies might be the only available data source. For such data, methods for an unbiased estimation of the average treatment effect are well established. Research on confounder adjustment when investigating the heterogeneity of treatment effects and the variables responsible for this is usually restricted to regression modelling. In this paper, we demonstrate how the predMOB, a tree-based method that specifically searches for predictive factors, can be combined with common strategies for confounder adjustment (covariate adjustment, matching, Inverse Probability of Treatment Weighting (IPTW)). In an extensive simulation study, we show that covariate adjustment allows the correct identification of predictive factors in the presence of confounding whereas IPTW fails in situations in which the true predictive factor is not completely independent of the confounding mechanism. A combination of both, covariate adjustment and IPTW performs as well as covariate adjustment alone, but might be more robust in complex settings. An application to the German Breast Cancer Study Group (GBSG) Trial 2 illustrates these conclusions.

READ FULL TEXT

page 9

page 24

page 25

research
10/24/2019

The covariate-adjusted residual estimator and its use in both randomized trials and observational settings

We often seek to estimate the causal effect of an exposure on a particul...
research
08/12/2020

Predictive-Adjusted Indirect Comparison: A Novel Method for Population Adjustment with Limited Access to Patient-Level Data

Population adjustment methods such as matching-adjusted indirect compari...
research
03/15/2012

On the Validity of Covariate Adjustment for Estimating Causal Effects

Identifying effects of actions (treatments) on outcome variables from ob...
research
04/21/2020

Propensity Score Weighting for Covariate Adjustment in Randomized Clinical Trials

Imbalance in baseline characteristics due to chance is common in randomi...
research
05/11/2022

Leveraging baseline covariates to analyze small cluster-randomized trials with a rare binary outcome

Cluster-randomized trials (CRTs) involve randomizing entire groups of pa...
research
10/04/2022

Purely prognostic variables may modify marginal treatment effects for non-collapsible effect measures

In evidence synthesis, effect measure modifiers are typically described ...
research
12/03/2019

Confounding Adjustment Methods for Multi-level Treatment Comparisons Under Lack of Positivity and Unknown Model Specification

Imbalances in covariates between treatment groups are frequent in observ...

Please sign up or login with your details

Forgot password? Click here to reset