DS1 spectrogram: Conditional outlier detection for clinical alerting

Conditional outlier detection for clinical alerting

May 6, 20262605.05124

Authors

Gilles Clermont,Gregory Cooper,Milos Hauskrecht,Michal Valko,Shyam Visweswaran

Abstract

We develop and evaluate a data-driven approach for detecting unusual (anomalous) patient-management actions using past patient cases stored in an electronic health record (EHR) system. Our hypothesis is that patient-management actions that are unusual with respect to past patients may be due to a potential error and that it is worthwhile to raise an alert if such a condition is encountered.

We evaluate this hypothesis using data obtained from the electronic health records of 4,486 post-cardiac surgical patients. We base the evaluation on the opinions of a panel of experts.

The results support that anomaly-based alerting can have reasonably low false alert rates and that stronger anomalies are correlated with higher alert rates.

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