基于可解释性机器学习的儿科护士付出-回报失衡风险预测模型的构建OA
Construction of the risk prediction model for pediatric nurses'effort-reward imbalance based on interpretable machine learning
目的:基于可解释性机器学习构建儿科护士付出-回报失衡的风险预测模型,比较不同模型的预测性能,并采用SHAP对最优模型结果进行解释.方法:采用便利抽样法,于2025年6月选取安徽省、山西省、江西省、湖南省6所医院儿科护士414人作为研究对象,按照7∶3随机分为训练集和验证集.采用护士压力量表、付出-回报失衡量表进行调查.采用LASSO回归对特征变量进行筛选,得出重要预测因子.将重要预测因子纳入机器学习中,构建儿科护士付出-回报失衡的Logistic回归模型、极端梯度提升模型、随机森林模型3种风险预测模型,比较模型的受试者工作特征曲线下面积(AUC)、准确度、灵敏度、F1分数,评价模型的预测性能,筛选最优模型,采用SHAP对最优模型进行解释.结果:LASSO回归筛选出每个月夜班数、工作量与时间分配、学历3个重要因子.Logistic回归模型、极端梯度提升模型、随机森林模型 3种预测模型的 AUC 分别是 0.725,0.890,0.903,准确度为 0.673,0.794,0.801,灵敏度为0.421,0.731,0.813,F1分数为0.547,0.773,0.798.SHAP结果显示影响因素重要性排序为每个月夜班数、护士工作量与时间分配、学历.结论:通过随机森林构建的儿科护士付出-回报失衡风险预测模型性能优于Logistic回归、极端梯度提升模型.应根据护士每个月夜班数、工作量与时间分配、学历进行个性化预测,为其付出-回报失衡的早期识别、制定个性化干预措施提供参考.
Objective:To construct the risk prediction model for pediatric nurses'effort-reward imbalance based on interpretable machine learning,and to compare the predictive performance of different models.To explain the results of the optimal model using SHAP interpretation.Methods:Using the convenience sampling method,a total of 414 pediatric nurses from 6 hospitals in Anhui province,Shanxi province,Jiangxi province and Hunan province in June 2025 were selected as the research subjects.They were randomly divided into training set and validation set at a ratio of 7∶3.The Chinese Nurse Stressor Scale and the Effort-Reward Imbalance Questionnaire scale were used for investigation.LASSO regression was employed to screen the characteristic variables and identify the important predictors.The important predictors were incorporated into the machine learning model to construct three risk prediction models for pediatric nurses'effort-reward imbalance:Logistic regression model,Extreme Gradient Boosting model,and Random Forest model.The areas under the receiver operating characteristic curves(AUC),accuracy,sensitivity,and F1 score of the models were compared to evaluate the predictive performance of the models and select the optimal model.The SHAP explanation was used to interpret the optimal model.Results:LASSO regression identified three important factors:the number of night shifts per month,workload and time allocation,and educational background.The AUC values of the three prediction models(Logistic regression model,Extreme Gradient Boosting model,and Random Forest model)were 0.725,0.890,and 0.903 respectively,with accuracies of 0.673,0.794,and 0.801,sensitivities of 0.421,0.731,and 0.813,and F1 scores of 0.547,0.773,and 0.798.The SHAP explanation results showed that the importance ranking of the influencing factors were the number of night shifts per month,workload and time allocation,and educational background.Conclusions:The risk prediction model for pediatric nurses'effort-reward imbalance based on interpretable machine learning constructed by Random Forest has better performance than Logistic regression and Extreme Gradient Boosting model.Personalized predictions should be made based on the number of night shifts each nurse takes per month,workload and time allocation,and educational backgroun.It provides a reference for the early identification of the imbalance between effort and reward for the nurses and the formulation of personalized intervention measures.
陈正菊;张秀梅;邵鹏
安徽医科大学第一附属医院,安徽 230022安徽医科大学第一附属医院,安徽 230022安徽医科大学第一附属医院,安徽 230022
儿科护士付出-回报失衡机器学习LASSO回归分析影响因素
pediatric nurseseffort-reward imbalancemachine learningLASSO regression analysisinfluencing factors
《护理研究》 2026 (8)
1289-1297,9
2024年度安徽医科大学省级质量工程项目,编号:2024jyxm0732
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