Distillation to Enhance the Portability of Risk Models Across Institutions with Large Patient Claims Database
Steve Nyemba, Chao Yan, Ziqi Zhang, Amol Rajmane, Pablo Meyer,, Prithwish Chakraborty, Bradley Malin

TL;DR
This paper explores the challenge of transferring machine learning models for 30-day readmission risk prediction across different healthcare institutions, proposing a transfer learning method to improve portability and generalization.
Contribution
It introduces a novel transfer learning approach based on born-again network training to enhance the portability of readmission prediction models across institutions.
Findings
Transfer learning with BAN improves model performance across sites.
Direct application of models trained at one site performs poorly at another.
Single retraining with BAN yields consistent improvements across datasets.
Abstract
Artificial intelligence, and particularly machine learning (ML), is increasingly developed and deployed to support healthcare in a variety of settings. However, clinical decision support (CDS) technologies based on ML need to be portable if they are to be adopted on a broad scale. In this respect, models developed at one institution should be reusable at another. Yet there are numerous examples of portability failure, particularly due to naive application of ML models. Portability failure can lead to suboptimal care and medical errors, which ultimately could prevent the adoption of ML-based CDS in practice. One specific healthcare challenge that could benefit from enhanced portability is the prediction of 30-day readmission risk. Research to date has shown that deep learning models can be effective at modeling such risk. In this work, we investigate the practicality of model portability…
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Taxonomy
TopicsMachine Learning in Healthcare · Artificial Intelligence in Healthcare · Chronic Disease Management Strategies
