Parallel Operating Rooms: A New Model of Perioperative Nursing Process and Smart Surgical Platform Management
WANG Huizhen1, ZHANG Jie1, YU Yi2, ZHAO Lin1, LI Kuinan1, MA Huiying1, QI Xiaojing1, WANG Jing3, WANG Yutong3, LIN Yilun2, XU Li1, SHEN Le1, LI Hanzhong1, WANG Fei-Yue3,4
1. Peking Union Medical College Hospital, Chinese Academy of Medicine, Beijing 100730;
2. Shanghai Artificial Intelligence Laboratory, Shanghai 200232;
3. The State Key Laboratory for Management and Control of Complex Systems, Institute of Automation, Chinese Academy of Sciences, Beijing 100190;
4. School of Artificial Intelligence, University of Chinese Academy of Sciences, Beijing 100049
With the advancement of medical technology, the operating room is confronted with increasing complexity challenges, especially in the areas of teaching and training, nursing coordination, scientific research innovation and management. In this paper, the concept of a parallel operating room is proposed based on parallel healthcare theory to optimize perioperative nursing processes by artificial intelligence and comprehensive data analysis, thereby improving surgical platform management efficiency. Real systems and virtual systems are integrated in the parallel operating room through online learning, offline computing, and virtual-physical interaction to achieve precise management and control of surgical procedures. The application of parallel operating rooms in clinical nursing and management as well as nursing education and research is discussed in detail, and the potential of parallel operating rooms in future medical fields is prospected. The proposed integrated solution alleviates the problems faced by traditional operating rooms and lays a foundation for the development of smart healthcare, while enhancing safety and operational efficiency in the operating room.
王惠珍, 张捷, 俞怡, 赵琳, 李葵南, 马慧颖, 祁肖静, 王静, 王雨桐, 林懿伦, 许力, 申乐, 李汉忠, 王飞跃. 平行手术室:围术期护理流程与智慧手术平台管理的新模式[J]. 模式识别与人工智能, 2023, 36(10): 867-876.
WANG Huizhen, ZHANG Jie, YU Yi, ZHAO Lin, LI Kuinan, MA Huiying, QI Xiaojing, WANG Jing, WANG Yutong, LIN Yilun, XU Li, SHEN Le, LI Hanzhong, WANG Fei-Yue. Parallel Operating Rooms: A New Model of Perioperative Nursing Process and Smart Surgical Platform Management. Pattern Recognition and Artificial Intelligence, 2023, 36(10): 867-876.
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