Tian Yu, Zhou Tian-Shu, Yao Qin, Zhang Mao, Li Jing-Song
Engineering Research Center of EMR and Intelligent Expert System, Ministry of Education, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, College of Biomedical Engineering and Instrument Science, Zhejiang University, Hangzhou, China.
J Med Syst. 2014 Dec;38(12):149. doi: 10.1007/s10916-014-0149-3. Epub 2014 Oct 30.
Recently, mass casualty incidents (MCIs) have been occurring frequently and have gained international attention. There is an urgent need for scientifically proven and effective emergency responses to MCIs, particularly as the severity of incidents is continuously increasing. The emergency response to MCIs is a multi-dimensional and multi-participant dynamic process that changes in real-time. The evacuation decisions that assign casualties to different hospitals in a region are very important and impact both the results of emergency treatment and the efficiency of medical resource utilization. Previously, decisions related to casualty evacuation were made by an incident commander with emergency experience and in accordance with macro emergency guidelines. There are few decision-supporting tools available to reduce the difficulty and psychological pressure associated with the evacuation decisions an incident commander must make. In this study, we have designed a mobile-based system to collect medical and temporal data produced during an emergency response to an MCI. Using this information, our system's decision-making model can provide personal evacuation suggestions that improve the overall outcome of an emergency response. The effectiveness of our system in reducing overall mortality has been validated by an agent-based simulation model established to simulate an emergency response to an MCI.
近年来,大规模伤亡事件(MCIs)频繁发生并引起了国际关注。迫切需要科学验证且有效的针对大规模伤亡事件的应急响应措施,尤其是随着事件严重程度不断增加的情况下。对大规模伤亡事件的应急响应是一个多维度、多参与方的动态实时变化过程。将伤亡人员分配到一个地区内不同医院的疏散决策非常重要,它会影响紧急救治结果和医疗资源利用效率。以前,与伤亡人员疏散相关的决策由具有应急经验的事件指挥官根据宏观应急指南做出。几乎没有可用的决策支持工具来减轻事件指挥官在做出疏散决策时所面临的困难和心理压力。在本研究中,我们设计了一个基于移动设备的系统,用于收集在大规模伤亡事件应急响应过程中产生的医疗和时间数据。利用这些信息,我们系统的决策模型可以提供个人疏散建议,从而改善应急响应的总体结果。我们系统在降低总体死亡率方面的有效性已通过为模拟大规模伤亡事件应急响应而建立的基于智能体的仿真模型得到验证。