Evaluating Meta-Learners to Analyze Treatment Heterogeneity in Survival Data: Application to Electronic Health Records of Pediatric Asthma Care in COVID-19 Pandemic.

Publication date: Feb 10, 2025

An important aspect of precision medicine focuses on characterizing diverse responses to treatment due to unique patient characteristics, also known as heterogeneous treatment effects (HTE) or individualized treatment effects (ITE), and identifying beneficial subgroups with enhanced treatment effects. Estimating HTE with right-censored data in observational studies remains challenging. In this paper, we propose a pseudo-ITE-based framework for analyzing HTE in survival data, which includes a group of meta-learners for estimating HTE, a variable importance metric for identifying predictive variables to HTE, and a data-adaptive procedure to select subgroups with enhanced treatment effects. We evaluate the finite sample performance of the framework under various observational study settings. Furthermore, we applied the proposed methods to analyze the treatment heterogeneity of a written asthma action plan (WAAP) on time-to-ED (Emergency Department) return due to asthma exacerbation using a large asthma electronic health records dataset with visit records expanded from pre- to post-COVID-19 pandemic. We identified vulnerable subgroups of patients with poorer asthma outcomes but enhanced benefits from WAAP and characterized patient profiles. Our research provides valuable insights for healthcare providers on the strategic distribution of WAAP, particularly during disruptive public health crises, ultimately improving the management and control of pediatric asthma.

Concepts Keywords
Covid Asthma
Expanded Child
Pandemic COVID-19
Pediatric COVID‐19 pandemic
Therapy EHR data
Electronic Health Records
Emergency Service, Hospital
heterogeneous treatment effects
Humans
meta‐learner
Pandemics
precision asthma care
SARS-CoV-2
subgroup analysis
Survival Analysis

Semantics

Type Source Name
disease MESH Asthma
pathway KEGG Asthma
disease MESH COVID-19 Pandemic
disease MESH Emergency

Original Article

(Visited 1 times, 1 visits today)