Quantifying surprise in clinical care: Detecting highly informative events in electronic health records with foundation models

Burkhart, Michael C., Ramadan, Bashar, Solo, Luke, Parker, William F., Beaulieu-Jones, Brett K.

arXiv.org Artificial Intelligence 

We present a foundation model-derived method to identify highly informative tokens and events in electronic health records. Our approach considers incoming data in the entire context of a patient's hospitalization and so can flag anomalous events that rule-based approaches would consider within a normal range. We demonstrate that the events our model flags are significant for predicting downstream patient outcomes and that a fraction of events identified as carrying little information can safely be dropped. Additionally, we show how informativeness can help interpret the predictions of prognostic models trained on foundation model-derived representations.