The early warning paradox

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Abstract

Machine learning models in healthcare aim to predict critical outcomes but often overlook existing Early Warning Systems’ impact. Using data from King’s College Hospital, we demonstrate how current evaluation methods can lead to paradoxical results. We discuss challenges in developing ML models from retrospective data and propose a novel approach focused on identifying when patients enter a ‘risk state’ through latent health representations, potentially transforming clinical decision-making.

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Logan Ellis, H., Palmer, E., Teo, J. T., Whyte, M., Rockwood, K., & Ibrahim, Z. (2025, December 1). The early warning paradox. Npj Digital Medicine. Nature Research. https://doi.org/10.1038/s41746-024-01408-x

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