Finnish Institute of Occupational Health, Helsinki, Finland
Finnish Institute of Occupational Health, Helsinki, Finland.
BMJ Open. 2023 Aug 29;13(8):e075489. doi: 10.1136/bmjopen-2023-075489.
To develop a risk prediction algorithm for identifying work units with increased risk of violence in the workplace.
Prospective cohort study.
Public sector employees in Finland.
18 540 nurses, social and youth workers, and teachers from 4276 work units who completed a survey on work characteristics, including prevalence and frequency of workplace violence/threat of violence at baseline in 2018-2019 and at follow-up in 2020-2021. Those who reported daily or weekly exposure to violence or threat of violence daily at baseline were excluded.
Mean scores of responses to 87 survey items at baseline were calculated for each work unit, and those scores were then assigned to each employee within that work unit. The scores measured sociodemographic characteristics and work characteristics of the work unit.
Increase in workplace violence between baseline and follow-up (0=no increase, 1=increase).
A total of 7% (323/4487) of the registered nurses, 15% (457/3109) of the practical nurses, 5% of the social and youth workers (162/3442) and 5% of the teachers (360/7502) reported more frequent violence/threat of violence at follow-up than at baseline. The area under the curve values estimating the prediction accuracy of the prediction models were 0.72 for social and youth workers, 0.67 for nurses, and 0.63 for teachers. The risk prediction model for registered nurses included five work unit characteristics associated with more frequent violence at follow-up. The model for practical nurses included six characteristics, the model for social and youth workers seven characteristics and the model for teachers included four characteristics statistically significantly associated with higher likelihood of increased violence.
The generated risk prediction models identified employees working in work units with high likelihood of future workplace violence with reasonable accuracy. These survey-based algorithms can be used to target interventions to prevent workplace violence.
开发一种风险预测算法,以识别工作场所暴力风险增加的工作单位。
前瞻性队列研究。
芬兰公共部门员工。
4276 个工作单位的 18540 名护士、社工和青年工作者以及教师,他们在 2018-2019 年基线时完成了一项关于工作特征的调查,包括工作场所暴力/暴力威胁的流行率和频率,并在 2020-2021 年随访时再次完成调查。那些报告在基线时每天或每周都接触到暴力或暴力威胁的人被排除在外。
为每个工作单位计算了基线时对 87 项调查项目的平均得分,然后将这些得分分配给该工作单位内的每位员工。这些分数衡量了工作单位的社会人口统计学特征和工作特征。
工作场所暴力在基线和随访之间的增加(0=无增加,1=增加)。
注册护士中有 7%(323/4487)、执业护士中有 15%(457/3109)、社工中有 5%(162/3442)和教师中有 5%(360/7502)报告在随访时比基线时更频繁地发生暴力/暴力威胁。估计预测模型预测准确性的曲线下面积值为社工 0.72、护士 0.67、教师 0.63。注册护士的风险预测模型包括与随访时更频繁暴力相关的五个工作单位特征。执业护士的模型包括六个特征,社工的模型包括七个特征,教师的模型包括四个与增加暴力可能性显著相关的特征。
生成的风险预测模型以合理的准确性识别出在未来工作场所暴力中可能性较高的员工所在的工作单位。这些基于调查的算法可用于针对干预措施,以预防工作场所暴力。