PLoS ONE (Jan 2023)

An analysis of Chinese nursing electronic medical records to predict violence in psychiatric inpatients using text mining and machine learning techniques.

  • Ya-Han Hu,
  • Jeng-Hsiu Hung,
  • Li-Yu Hu,
  • Sheng-Yun Huang,
  • Cheng-Che Shen

DOI
https://doi.org/10.1371/journal.pone.0286347
Journal volume & issue
Vol. 18, no. 6
p. e0286347

Abstract

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BackgroundThe prevalence of violence in acute psychiatric wards is a critical concern. According to a meta-analysis investigating violence in psychiatric inpatient units, researchers estimated that approximately 17% of inpatients commit one or more acts of violence during their stay. Inpatient violence negatively affects health-care providers and patients and may contribute to high staff turnover. Therefore, predicting which psychiatric inpatients will commit violence is of considerable clinical significance.ObjectiveThe present study aimed to estimate the violence rate for psychiatric inpatients and establish a predictive model for violence in psychiatric inpatients.MethodsWe collected the structured and unstructured data from Chinese nursing electronic medical records (EMRs) for the violence prediction. The data was obtained from the psychiatry department of a regional hospital in southern Taiwan, covering the period between January 2008 and December 2018. Several text mining and machine learning techniques were employed to analyze the data.ResultsThe results demonstrated that the rate of violence in psychiatric inpatients is 19.7%. The patients with violence in psychiatric wards were generally younger, had a more violent history, and were more likely to be unmarried. Furthermore, our study supported the feasibility of predicting aggressive incidents in psychiatric wards by using nursing EMRs and the proposed method can be incorporated into routine clinical practice to enable early prediction of inpatient violence.ConclusionsOur findings may provide clinicians with a new basis for judgment of the risk of violence in psychiatric wards.