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基于机器学习的中国护理实习生同情疲劳预测模型的开发与验证:一项利用潜在剖面分析的横断面研究

Development and validation of a machine learning-based predictive model for compassion fatigue in Chinese nursing interns: a cross-sectional study utilizing latent profile analysis.

作者信息

Yi Lijuan, Shuai Ting, Zhou Jingjing, Cheng Liang, Jiménez-Herrera Maria F, Tian Xu

机构信息

Department of Nursing, Hunan Traditional Chinese Medical College, Zhuzhou, China.

Nursing Department, Universitat Rovira i Virgili, Tarragona, Spain.

出版信息

BMC Med Educ. 2024 Dec 19;24(1):1495. doi: 10.1186/s12909-024-06505-9.

Abstract

BACKGROUND

Compassion fatigue is a significant issue in nursing, affecting both registered nurses and nursing students, potentially leading to burnout and reduced quality of care. During internships, compassion fatigue can shape nursing students' career trajectories and intent to stay in the profession. Identifying those at high risk is crucial for timely interventions, yet existing tools often fail to account for within-group variability, limiting their ability to accurately predict compassion fatigue risk.

OBJECTIVES

This study aimed to develop and validate a predictive model for detecting the risk of compassion fatigue among nursing students during their placement.

DESIGN

A cross-sectional study was used to capture the prevalence and associations of compassion fatigue among nursing interns, as it allows for timely assessment of key influencing factors without requiring long-term follow-up.

METHODS

A convenience sampling strategy was used to recruit 2256 nursing students from all ten public junior colleges in Hunan province in China between December 2021 and June 2022. Participants completed questionnaires assessing compassion fatigue, professional identity, self-efficacy, social support, psychological resilience, coping styles, and demographic characteristics. Predictors were selected based on prior literature and theoretical frameworks related to compassion fatigue in nursing. Latent profile analysis was used to classify compassion fatigue levels, and potential predictors were identified through univariate analysis and least absolute shrinkage and selection operator (LASSO) regression. Eight machine learning algorithms were applied to predict compassion fatigue, with performance assessed through cross-validation, calibration, and discrimination metrics. The best-performing model was further validated to ensure robustness.

RESULTS

A three-profile model best fits the data, identifying low (55.73%), moderate (32.17%), and severe (12.10%) profiles for compassion fatigue. Generally, an area under the curve (AUC) above 0.700 is acceptable, and above 0.800 indicates good predictive performance. The AUC values for the eight machine learning models ranged from 0.644 to 0.826 for the training set and 0.651 to 0.757 for the test set, indicating moderate to good discriminatory ability. The eXtreme Gradient Boosting (XGBoost) performed best, with AUC values of 0.840, 0.768, and 0.731 in the training, validation, and test sets, respectively. Shapley Additive Explanation (SHAP) analysis interpreted the model by quantifying the contribution of each variable to the prediction, revealing that psychological resilience, professional identity, and social support were the key contributors to the risk of compassion fatigue. A user-friendly, web-based prediction tool for calculating the risk of compassion fatigue was developed.

CONCLUSIONS

The XGBoosting classifier demonstrates excellent performance, and implementing the online tool can help nursing administrators manage compassion fatigue effectively. It holds practical value for nursing education and practice by supporting early detection and intervention. Future research should validate its use across settings, and longitudinal studies could assess its long-term impact.

摘要

背景

同情疲劳是护理领域的一个重要问题,影响着注册护士和护理专业学生,可能导致职业倦怠和护理质量下降。在实习期间,同情疲劳会影响护理专业学生的职业轨迹和留在该行业的意愿。识别高危人群对于及时干预至关重要,但现有工具往往未能考虑组内差异,限制了它们准确预测同情疲劳风险的能力。

目的

本研究旨在开发并验证一种预测模型,以检测护理专业学生实习期间同情疲劳的风险。

设计

采用横断面研究来获取护理实习生同情疲劳的患病率及相关因素,因为它允许及时评估关键影响因素,而无需长期随访。

方法

2021年12月至2022年6月期间,采用便利抽样策略从中国湖南省的所有十所公立专科学校招募了2256名护理专业学生。参与者完成了评估同情疲劳、职业认同、自我效能感、社会支持、心理韧性、应对方式和人口统计学特征的问卷。根据先前与护理中同情疲劳相关的文献和理论框架选择预测因素。采用潜在剖面分析对同情疲劳水平进行分类,并通过单变量分析和最小绝对收缩和选择算子(LASSO)回归确定潜在预测因素。应用八种机器学习算法预测同情疲劳,并通过交叉验证、校准和区分度指标评估性能。对表现最佳的模型进行进一步验证以确保稳健性。

结果

一个三剖面模型最适合数据,识别出同情疲劳的低(55.73%)、中(32.17%)、高(12.10%)水平。一般来说,曲线下面积(AUC)大于0.700是可接受的,大于0.800表明具有良好的预测性能。八个机器学习模型在训练集的AUC值范围为0.644至0.826,在测试集的AUC值范围为0.651至0.757,表明具有中等至良好的区分能力。极端梯度提升(XGBoost)表现最佳,在训练集、验证集和测试集的AUC值分别为0.840、0.768和0.731。Shapley加法解释(SHAP)分析通过量化每个变量对预测的贡献来解释模型,揭示心理韧性、职业认同和社会支持是同情疲劳风险的关键因素。开发了一个用于计算同情疲劳风险的用户友好的基于网络的预测工具。

结论

XGBoosting分类器表现出色,实施在线工具可帮助护理管理人员有效管理同情疲劳。它通过支持早期检测和干预对护理教育和实践具有实际价值。未来的研究应在不同环境中验证其应用,纵向研究可评估其长期影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dd7c/11656937/4f6d1f51678c/12909_2024_6505_Fig1_HTML.jpg

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