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arxiv 2410.03725 v1 pith:RH7PQOTC submitted 2024-09-29 cs.CL

Realtime, multimodal invasive ventilation risk monitoring using language models and BoXHED

classification cs.CL
keywords monitoringclinicalrisklanguagemodelsnotesrealtimecare
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Objective: realtime monitoring of invasive ventilation (iV) in intensive care units (ICUs) plays a crucial role in ensuring prompt interventions and better patient outcomes. However, conventional methods often overlook valuable insights embedded within clinical notes, relying solely on tabular data. In this study, we propose an innovative approach to enhance iV risk monitoring by incorporating clinical notes into the monitoring pipeline through using language models for text summarization. Results: We achieve superior performance in all metrics reported by the state-of-the-art in iV risk monitoring, namely: an AUROC of 0.86, an AUC-PR of 0.35, and an AUCt of up to 0.86. We also demonstrate that our methodology allows for more lead time in flagging iV for certain time buckets. Conclusion: Our study underscores the potential of integrating clinical notes and language models into realtime iV risk monitoring, paving the way for improved patient care and informed clinical decision-making in ICU settings.

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