确定初级护士经历的工作场所暴力的最关键预测因素:可解释的机器学习视角

IF 3.7 2区 医学 Q2 MANAGEMENT
Lanjun Luo, Yuze Wu, Siyuan Li, Fengling Li, Xueyan Wang, Xuemei Wei
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引用次数: 0

摘要

背景:职场暴力被定义为任何对员工的破坏性行为或威胁,严重威胁着初级护士。与高级护士相比,初级护士由于经验不足、专业认可度低、心理弹性有限,更容易受到职场暴力的伤害。然而,缺乏对初级护士工作场所暴力风险的研究,特别是缺乏对多重影响中的关键因素的分析,缺乏有针对性的风险预测模型。目的:考虑到初级护士面临的多重影响因素,本研究旨在利用可解释的机器学习模型预测工作场所暴力风险,识别关键影响因素及其非线性效应。设计:观察性横断面研究设计。研究对象:四川省90家三级医院的5663名初级注册护士。方法:资料采用问卷调查法。结合了一个可解释的机器学习框架,包括光梯度增强机(LightGBM)模型和两种事后可解释方法,累积局部效应和形状可加解释(SHAP)。结果:LightGBM模型比其他机器学习方法更准确,在工作场所暴力预测任务上,接受者工作特征曲线下面积为0.761,Brier得分为0.198。在输入预测模型的数十个潜在影响因素中,就诊投诉、心理需求、职业认同等是最重要的工作场所暴力预测因素。结论:提出的lightgbm - shape - ale方法动态有效地识别了工作场所暴力高危护士,为及时发现和干预提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identifying the Most Critical Predictors of Workplace Violence Experienced by Junior Nurses: An Interpretable Machine Learning Perspective

Identifying the Most Critical Predictors of Workplace Violence Experienced by Junior Nurses: An Interpretable Machine Learning Perspective

Background: Workplace violence, defined as any disruptive behavior or threat to employees, seriously threatens junior nurses. Compared with senior nurses, junior nurses are more vulnerable to workplace violence due to inexperience, low professional recognition, and limited mental resilience. However, there is an absence of research discussing the workplace violence risk of junior nurses, in particular, the lack of analysis of critical factors within the multiple influences and the lack of targeted risk prediction models.

Objective: Considering the multiple influencing factors faced by junior nurses, this study aims to predict the risk of workplace violence using interpretable machine learning models and identify the critical influencing factors and their nonlinear effects.

Design: An observational, cross-sectional study design.

Participants: A total of 5663 junior registered nurses in 90 tertiary hospitals in Sichuan Province, China.

Methods: Data are all obtained through a questionnaire survey. An interpretable machine learning framework, including the Light Gradient Boosting Machine (LightGBM) model and two post hoc interpretable methods, Accumulate Local Effect and SHapely Additive exPlanations (SHAP), are conjoined.

Results: The LightGBM model is more accurate than other machine learning methods, achieving an area under the receiver operating characteristic curve of 0.761 and a Brier score of 0.198 on the workplace violence prediction task. Among the dozens of potential influences input into the predictive model, seeing medical complaints, psychological demands, professional identity, etc., are the most critical predictors of workplace violence.

Conclusions: The proposed LightGBM-SHAP-ALE approach dynamically and effectively identifies junior nurses at high risk of workplace violence, providing a foundation for timely detection and intervention.

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来源期刊
CiteScore
9.40
自引率
14.50%
发文量
377
审稿时长
4-8 weeks
期刊介绍: The Journal of Nursing Management is an international forum which informs and advances the discipline of nursing management and leadership. The Journal encourages scholarly debate and critical analysis resulting in a rich source of evidence which underpins and illuminates the practice of management, innovation and leadership in nursing and health care. It publishes current issues and developments in practice in the form of research papers, in-depth commentaries and analyses. The complex and rapidly changing nature of global health care is constantly generating new challenges and questions. The Journal of Nursing Management welcomes papers from researchers, academics, practitioners, managers, and policy makers from a range of countries and backgrounds which examine these issues and contribute to the body of knowledge in international nursing management and leadership worldwide. The Journal of Nursing Management aims to: -Inform practitioners and researchers in nursing management and leadership -Explore and debate current issues in nursing management and leadership -Assess the evidence for current practice -Develop best practice in nursing management and leadership -Examine the impact of policy developments -Address issues in governance, quality and safety
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