Identification of Critical Variables and Critical Gap Variables in Hospital Nurses' Job Satisfaction During the Dynamic Adjustment Phase of COVID-19 Prevention in China: A Hybrid Machine Learning and Decision Analysis Approach

基于混合机器学习和决策分析方法的中国新冠肺炎疫情防控动态调整阶段医院护士工作满意度关键变量和关键差距变量识别

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Abstract

PURPOSE: This study aims to analyze the critical variables and gap variables affecting hospital nurses' job satisfaction and propose improvement strategies based on the knowledge domains of nursing decision-makers. METHODS: This study, conducted between September and October 2022 during the dynamic adjustment phase of COVID-19 prevention and control in China, was based on the McCloskey/Mueller Satisfaction Scale (MMSS) and developed a hybrid machine learning and decision analysis tool model. The random forest (RF) method was used to estimate the importance of each variable in the data, and the importance-performance analysis (IPA) was used to identify critical gap variables and propose improvement strategies. RESULTS: The RF analysis (OOB error rate = 17.93%) identified "Decision-making" (C(30), importance score = 0.053) and "Control-work conditions" (C(29), importance score = 0.067) as the most influential factors (critical variables) in determining nurses' job satisfaction. The IPA analysis identified C(30) as the most critical gap variable, indicating a significant need to improve nurses' involvement in hospital decision-making processes. CONCLUSIONS: To improve nurse job satisfaction and retention, hospital decision-makers and nursing departments should implement policies that enhance nurses' involvement in decision-making, particularly those with experience in pandemic-related healthcare challenges. Addressing these factors could foster a more supportive and resilient nursing work environment.

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