<div><p>We consider a setting in which we have a treatment and a potentially large number of covariates for a set of observations, and wish to model their relationship with an outcome of interest. We propose a simple method for modeling interactions between the treatment and covariates. The idea is to modify the covariate in a simple way, and then fit a standard model using the modified covariates and no main effects. We show that coupled with an efficiency augmentation procedure, this method produces clinically meaningful estimators in a variety of settings. It can be useful for practicing personalized medicine: determining from a large set of biomarkers, the subset of patients that can potentially benefit from a treatment. We apply the me...
Before embarking on an individual participant data meta-analysis (IPDMA) project, researchers and fu...
Clinical studies are usually designed to provide information on the average intervention effect. The...
Wester RA, Rubel J, Mayer A. Covariate Selection for Estimating Individual Treatment Effects in Psyc...
There is increasing interest in the medical world in the possibility of tailoring treatment to the i...
In this text, the methodology developed by Tian et al. is verified by the author via a number of num...
A new approach to modelling interactions between treatment and continuous covariates in clinical tri...
Abstract Background To individualize treatment decisions based on patient characteristics, identific...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
We introduce the subpopulation treatment effect pattern plot (STEPP) method, designed to facilitate ...
Precision medicine research often searches for treatment-covariate interactions, which refers to whe...
With advances in medicine, many drugs and treatments become available. On the one hand, polydrug use...
Interaction effect is an important scientific interest for many areas of research. Common approach f...
For time-to-event data in a randomized clinical trial, we proposed two new methods for selecting an ...
Many statistical methods have recently been developed for identifying subgroups of patients who may ...
We discuss the practice of examining patterns of treatment effects across overlapping patient subpop...
Before embarking on an individual participant data meta-analysis (IPDMA) project, researchers and fu...
Clinical studies are usually designed to provide information on the average intervention effect. The...
Wester RA, Rubel J, Mayer A. Covariate Selection for Estimating Individual Treatment Effects in Psyc...
There is increasing interest in the medical world in the possibility of tailoring treatment to the i...
In this text, the methodology developed by Tian et al. is verified by the author via a number of num...
A new approach to modelling interactions between treatment and continuous covariates in clinical tri...
Abstract Background To individualize treatment decisions based on patient characteristics, identific...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
We introduce the subpopulation treatment effect pattern plot (STEPP) method, designed to facilitate ...
Precision medicine research often searches for treatment-covariate interactions, which refers to whe...
With advances in medicine, many drugs and treatments become available. On the one hand, polydrug use...
Interaction effect is an important scientific interest for many areas of research. Common approach f...
For time-to-event data in a randomized clinical trial, we proposed two new methods for selecting an ...
Many statistical methods have recently been developed for identifying subgroups of patients who may ...
We discuss the practice of examining patterns of treatment effects across overlapping patient subpop...
Before embarking on an individual participant data meta-analysis (IPDMA) project, researchers and fu...
Clinical studies are usually designed to provide information on the average intervention effect. The...
Wester RA, Rubel J, Mayer A. Covariate Selection for Estimating Individual Treatment Effects in Psyc...