Subgroup Identification Using the personalized Package

09/21/2018
by   Jared D. Huling, et al.
0

A plethora of disparate statistical methods have been proposed for subgroup identification to help tailor treatment decisions for patients. However a majority of them do not have corresponding R packages and the few that do pertain to particular statistical methods or provide little means of evaluating whether meaningful subgroups have been found. Recently, the work of Chen, Tian, Cai, and Yu (2017) unified many of these subgroup identification methods into one general, consistent framework. The goal of the personalized package is to provide a corresponding unified software framework for subgroup identification analyses that provides not only estimation of subgroups, but evaluation of treatment effects within estimated subgroups. The personalized package allows for a variety of subgroup identification methods for many types of outcomes commonly encountered in medical settings. The package is built to incorporate the entire subgroup identification analysis pipeline including propensity score diagnostics, subgroup estimation, analysis of the treatment effects within subgroups, and evaluation of identified subgroups. In this framework, different methods can be accessed with little change in the analysis code. Similarly, new methods can easily be incorporated into the package. Besides familiar statistical models, the package also allows flexible machine learning tools to be leveraged in subgroup identification. Further estimation improvements can be obtained via efficiency augmentation.

READ FULL TEXT

page 16

page 38

page 39

research
07/17/2023

An R package for parametric estimation of causal effects

This article explains the usage of R package CausalModels, which is publ...
research
07/07/2021

MultiColl package and other packages to detect multicollinearity in R

This work presents a guide for the use of some of the functions of the m...
research
10/15/2021

pimeta: an R package of prediction intervals for random-effects meta-analysis

The prediction interval is gaining prominence in meta-analysis as it ena...
research
04/19/2023

Introducing longitudinal modified treatment policies: a unified framework for studying complex exposures

This tutorial discusses a recently developed methodology for causal infe...
research
02/15/2023

SUrvival Control Chart EStimation Software in R: the success package

Monitoring the quality of statistical processes has been of great import...
research
10/19/2020

Modelling Complex Survey Data Using R, SAS, SPSS and Stata: A Comparison Using CLSA Datasets

The R software has become popular among researchers due to its flexibili...
research
09/24/2021

MIIDL: a Python package for microbial biomarkers identification powered by interpretable deep learning

Detecting microbial biomarkers used to predict disease phenotypes and cl...

Please sign up or login with your details

Forgot password? Click here to reset