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General-Purpose Retrieval-Enhanced Medical Prediction Model Using Near-Infinite History

Retrieval-Enhanced Medical prediction model (REMed) automates the feature selection and observation window adjustment for clinical prediction models, outperforming contemporary architectures in 27 clinical tasks across two cohorts and aligning with medical expert preferences.

Year
2023
Venue
arXiv 2023
Authors
7
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arxiv.org/abs/2310.20204v4ARXIV-DEFAULT
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Abstract

Machine learning (ML) has recently shown promising results in medical predictions using electronic health records (EHRs). However, since ML models typically have a limited capability in terms of input sizes, selecting specific medical events from EHRs for use as input is necessary. This selection process, often relying on expert opinion, can cause bottlenecks in development. We propose Retrieval-Enhanced Medical prediction model (REMed) to address such challenges. REMed can essentially evaluate unlimited medical events, select the relevant ones, and make predictions. This allows for an unrestricted input size, eliminating the need for manual event selection. We verified these properties through experiments involving 27 clinical prediction tasks across four independent cohorts, where REMed outperformed the baselines. Notably, we found that the preferences of REMed align closely with those of medical experts. We expect our approach to significantly expedite the development of EHR prediction models by minimizing clinicians' need for manual involvement.

Authors

7