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.
@article{arxiv.2605.05124,
title = {Conditional outlier detection for clinical alerting},
author = {Milos Hauskrecht and Michal Valko and Shyam Visweswaran and Iyad Batal and Gilles Clermont and Gregory Cooper},
journal= {arXiv preprint arXiv:2605.05124},
year = {2026}
}
Comments
AMIA 2010 Annual Symposium proceedings, pp. 286-290. Homer R. Warner Best Paper Award