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人工智能在护理质量管理中的应用进展

来源:中华护理杂志 发布日期:2024-12-14

摘要: 护理质量管理是保障患者安全和提高医疗质量的重要环节,而人工智能为实现护理质量管理的现代化、科学化、精细化提供了支持。该文对人工智能及其在护理质量管理中的应用进行综述,分析目前存在的挑战并提出应对策略,为今后人工智能技术在护理质量管理中的进一步发展提供参考。

Abstract: Nursing quality management is an important segment in ensuring patients’ safety and improving medical quality. Artificial intelligence supports for achieving modernization,scientization and refinement of nursing quality management. This review aims to provide an overview of artificial intelligence and its current application status in the field of nursing quality management,pointing out the challenges and coping strategies in its application,providing suggestions for the application of artificial intelligence in the field of nursing quality management.

Key words:

Artificial Intelligence,

Nursing Administration Research,

Quality of Care,

Review

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