Deep learning models can predict violence and threats against healthcare providers using clinical notes

Violence, verbal abuse, threats, and sexual harassment of healthcare providers by patients is a major challenge for healthcare organizations around the world, contributing to staff turnover, distress, absenteeism, reduced job satisfaction, and worsening mental and physical health. To enable interven...

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Veröffentlicht in:Npj mental health research 2024-12, Vol.3 (1), p.61-8, Article 61
Hauptverfasser: Dobbins, Nicholas J., Chipkin, Jacqueline, Byrne, Tim, Ghabra, Omar, Siar, Julia, Sauder, Mitchell, Huijon, R. Michael, Black, Taylor M.
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Sprache:eng
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Zusammenfassung:Violence, verbal abuse, threats, and sexual harassment of healthcare providers by patients is a major challenge for healthcare organizations around the world, contributing to staff turnover, distress, absenteeism, reduced job satisfaction, and worsening mental and physical health. To enable interventions prior to possible violent episodes, we trained two deep learning models to predict violence against healthcare workers 3 days prior to violent events for case and control patients. The first model is a document classification model using clinical notes, and the second is a baseline regression model using largely structured data. Our document classification model achieved an F 1 score of 0.75 while our model using structured data achieved an F 1 of 0.72, both exceeding the predictive performance of a psychiatry team who reviewed the same documents (0.5 F 1). To aid in the explainability and understanding of risk factors for violent events, we additionally trained a named entity recognition classifier on annotations of the same corpus, which achieved an overall F 1 of 0.7. This study demonstrates the first deep learning model capable of predicting violent events within healthcare settings using clinical notes, surpassing the first published baseline of human experts. We anticipate our methods can be generalized and extended to enable intervention at other hospital systems.
ISSN:2731-4251
2731-4251
DOI:10.1038/s44184-024-00105-7