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Hospitalization Length of Stay Prediction using Patient Event Sequences (2303.11042v1)
Published 20 Mar 2023 in cs.LG and cs.AI
Abstract: Predicting patients hospital length of stay (LOS) is essential for improving resource allocation and supporting decision-making in healthcare organizations. This paper proposes a novel approach for predicting LOS by modeling patient information as sequences of events. Specifically, we present a transformer-based model, termed Medic-BERT (M-BERT), for LOS prediction using the unique features describing patients medical event sequences. We performed empirical experiments on a cohort of more than 45k emergency care patients from a large Danish hospital. Experimental results show that M-BERT can achieve high accuracy on a variety of LOS problems and outperforms traditional nonsequence-based machine learning approaches.
- Emil Riis Hansen (1 paper)
- Thomas Dyhre Nielsen (9 papers)
- Thomas Mulvad (1 paper)
- Mads Nibe Strausholm (1 paper)
- Tomer Sagi (4 papers)
- Katja Hose (24 papers)