LGMay 11

Conditional anomaly detection methods for patient-management alert systems

arXiv:2605.1084726.45 citations
AI Analysis

This work addresses the need for accurate anomaly detection in clinical decision support, though the methods are incremental adaptations of existing techniques.

The paper develops instance-based conditional anomaly detection methods for patient-management alert systems, demonstrating improved detection of unusual medical patterns such as atypical pneumonia admissions and abnormal HPF4 test orders.

Anomaly detection methods can be very useful in identifying unusual or interesting patterns in data. A recently proposed conditional anomaly detection framework extends anomaly detection to the problem of identifying anomalous patterns on a subset of attributes in the data. The anomaly always depends (is conditioned) on the value of remaining attributes. The work presented in this paper focuses on instance-based methods for detecting conditional anomalies. The methods rely on the distance metric to identify examples in the dataset that are most critical for detecting the anomaly. We investigate various metrics and metric learning methods to optimize the performance of the instance-based anomaly detection methods. We show the benefits of the instance-based methods on two real-world detection problems: detection of unusual admission decisions for patients with the community-acquired pneumonia and detection of unusual orders of an HPF4 test that is used to confirm Heparin induced thrombocytopenia - a life-threatening condition caused by the Heparin therapy.

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