Zheng Jie, Feng Shengya, Feng Yaping, Wang Luoyan, Gao Rong, Xue Bowen
School of Nursing, Shanxi Medical University, Taiyuan, Shanxi, China.
Affiliated Hospital of Hangzhou Normal University, Hangzhou, Zhejiang, China.
BMC Nurs. 2024 Dec 18;23(1):921. doi: 10.1186/s12912-024-02624-2.
Nurse burnout and turnover intention significantly impact global healthcare systems, especially intensified by the COVID-19 pandemic. This study employs network analysis to explore these phenomena, providing insights into the interdependencies and potential intervention points within the constructs of burnout and turnover intention among nurses.
A cross-sectional study was conducted with 560 nurses from three tertiary hospitals in Hangzhou, China. Data were collected via online questionnaires, including the Maslach Burnout Inventory-General Survey (MBI-GS) and the Turnover Intention Questionnaire (TIQ). Network analysis was performed using Gaussian graphical models to construct the network model and calculate related metrics.
The network analysis revealed that items related to personal accomplishment and emotional exhaustion were central, indicating significant roles in influencing nurses' turnover intentions. Specifically, perceived meaningful work and self-efficacy emerged as pivotal nodes, suggesting that enhancing these can mitigate turnover intentions. The network's stability and accuracy were confirmed through bootstrapping methods, emphasizing the robustness of the findings.
The study underscores the importance of addressing nurse burnout by focusing on core elements like personal accomplishment and self-efficacy to reduce turnover intentions. These insights facilitate targeted interventions that could improve nurse retention and stability within healthcare systems. Future research should expand to multi-center studies to enhance the generalizability of these findings.
护士职业倦怠和离职意愿对全球医疗系统产生重大影响,在新冠疫情的影响下这种情况尤其加剧。本研究采用网络分析来探究这些现象,深入了解护士职业倦怠和离职意愿结构中的相互依存关系及潜在干预点。
对来自中国杭州三家三级医院的560名护士进行了横断面研究。通过在线问卷收集数据,包括马氏职业倦怠量表通用版(MBI-GS)和离职意愿问卷(TIQ)。使用高斯图形模型进行网络分析,以构建网络模型并计算相关指标。
网络分析表明,与个人成就感和情感耗竭相关的项目处于核心地位,表明在影响护士离职意愿方面发挥着重要作用。具体而言,感知到的有意义工作和自我效能感成为关键节点,这表明增强这些方面可以减轻离职意愿。通过自助法证实了网络的稳定性和准确性,强调了研究结果的稳健性。
该研究强调了通过关注个人成就感和自我效能感等核心要素来解决护士职业倦怠问题以降低离职意愿的重要性。这些见解有助于开展有针对性的干预措施,从而提高医疗系统中护士的留用率和稳定性。未来的研究应扩展到多中心研究,以提高这些发现的普遍性。