Online Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 165 - SLDS CSpeed 2
Type: Contributed
Date/Time: Tuesday, August 10, 2021 : 10:00 AM to 11:50 AM
Sponsor: Section on Statistical Learning and Data Science
Abstract #317703
Title: A Tree-Based Federated Learning Approach for Personalized Treatment Effect Estimation from Heterogeneous Data Sources
Author(s): Xiaoqing Ellen Tan* and Chung-Chou H. Chang and Lu Tang
Companies: University of Pittsburgh and University of Pittsburgh and University of Pittsburgh
Keywords: Conditional average treatment effect; Data integration; Heterogeneous data sources; Individualized treatment rule; Meta-analysis
Abstract:

Federated learning is an appealing framework for analyzing sensitive data from distributed health data networks due to its protection of data privacy. Under this framework, data partners at local sites collaboratively build an analytical model under the orchestration of a coordinating site, while keeping the data decentralized. However, existing federated learning methods mainly assume data across sites are homogeneous samples of the global population, hence failing to properly account for the extra variability across sites in estimation and inference. Drawing on a multi-hospital electronic health records network, we develop an efficient and interpretable tree-based ensemble of personalized treatment effect estimators to join results across hospital sites, while actively modeling for the heterogeneity in data sources through site partitioning. The efficiency of our method is demonstrated by a study of causal effects of oxygen saturation on hospital mortality and backed up by comprehensive numerical results.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2021 program