心理干预
预先护理计划
护理部
定性研究
医学
肿瘤科
缓和医疗
定性性质
临终关怀
心理学
社会科学
机器学习
社会学
计算机科学
作者
Yi‐An Shih,Cheng Wang,Ali Ali,Xia Huang,Qian Lü
摘要
ABSTRACT Aims This study aims to explore the practice of advance care planning (ACP) among Chinese oncology nurses and identify challenges influencing care provision. Design A sequential explanatory mixed‐method design was employed, comprising a quantitative phase to assess communication practices, followed by a qualitative phase to explore the challenges faced in ACP. Methods The study employed convenience sampling, including 532 oncology nurses from seven hospitals in northern China. Quantitative data were collected through a cross‐sectional survey and the ACP communication index from December 2021 to January 2022. The qualitative phase consisted of 19 interviews conducted between May and July 2022, which were thematically analysed to elucidate the challenges in ACP practices. Results Quantitative findings revealed a low frequency of ACP communication among Chinese oncology nurses. Qualitative analysis identified four themes: lack of optimal timing, passive engagement of patients or families, reluctance of healthcare professionals and unsupported policies. Conclusion The study concluded that identified challenges compromise the effectiveness of ACP practices among Chinese oncology nurses. Inadequate communication, limited interdisciplinary collaboration and policy gaps contribute to nonstandardised ACP processes. Implications for the Profession and/or Patient Care The findings underscore the need for targeted interventions to enhance nurses' communication skills, foster interdisciplinary collaboration and provide policy support. Such interventions are pivotal to optimising end‐of‐life care in oncology settings and facilitating the integration of ACP into routine nursing practices. Reporting Methods This study adhered to the Mixed Methods Article Reporting Standards. Patient or Public Contribution No contributions from patients or the public were involved in this study.
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