LGIRAPSep 27, 2021

Heterogeneous Treatment Effect Estimation using machine learning for Healthcare application: tutorial and benchmark

arXiv:2109.12769v527 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental tutorial that aims to bridge HTE methodology from machine learning to biomedical informatics for personalized drug effectiveness.

The paper introduces heterogeneous treatment effect (HTE) estimation methods to healthcare for drug repurposing, using benchmark experiments on administrative claim data to demonstrate feasibility and interpretation.

Developing new drugs for target diseases is a time-consuming and expensive task, drug repurposing has become a popular topic in the drug development field. As much health claim data become available, many studies have been conducted on the data. The real-world data is noisy, sparse, and has many confounding factors. In addition, many studies have shown that drugs effects are heterogeneous among the population. Lots of advanced machine learning models about estimating heterogeneous treatment effects (HTE) have emerged in recent years, and have been applied to in econometrics and machine learning communities. These studies acknowledge medicine and drug development as the main application area, but there has been limited translational research from the HTE methodology to drug development. We aim to introduce the HTE methodology to the healthcare area and provide feasibility consideration when translating the methodology with benchmark experiments on healthcare administrative claim data. Also, we want to use benchmark experiments to show how to interpret and evaluate the model when it is applied to healthcare research. By introducing the recent HTE techniques to a broad readership in biomedical informatics communities, we expect to promote the wide adoption of causal inference using machine learning. We also expect to provide the feasibility of HTE for personalized drug effectiveness.

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