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Coefficient of Variation Masking: A Volatility-Aware Strategy for EHR Foundation Models

MCML Authors

Link to Profile Peter Schüffler

Peter Schüffler

Prof. Dr.

Associate

Abstract

Masked autoencoders (MAEs) are increasingly applied to electronic health records (EHR) for learning general-purpose representations that support diverse clinical tasks. However, existing approaches typically rely on uniform random masking, implicitly assuming all features are equally predictable. In reality, laboratory tests exhibit substantial heterogeneity in volatility: some biomarkers (e.g., sodium) remain stable, while others (e.g., lactate) fluctuate considerably and are more difficult to model. Clinically, volatile biomarkers often signal acute pathophysiology and require more sophisticated modeling to capture their complex temporal patterns. We propose a volatility-aware pretraining strategy, Coefficient of Variation Masking (CV-Masking), that adaptively adjusts masking probabilities according to the intrinsic variability of each feature. Combined with a value-only masking objective aligned with clinical workflows, CV-Masking yields systematic improvements over random and variance-based strategies. Experiments on a large panel of laboratory tests show that CV-Masking enhances reconstruction, improves downstream predictive performance, and accelerates convergence, producing more robust and clinically meaningful EHR representations.

inproceedings FAR+25


ML4H 2025

Machine Learning for Health Symposium. San Diego, CA, USA, Dec 01-02, 2025. To be published. Preprint available.

Authors

R. Fani • R. Al Attrach • D. Restrepo • Y. Jia • L. A. Celi • P. J. Schüffler

Links

arXiv

Research Area

 C1 | Medicine

BibTeXKey: FAR+25

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