Avrunin George S, Clarke Lori A, Conboy Heather M, Osterweil Leon J, Dias Roger D, Yule Steven J, Goldman Julian M, Zenati Marco A
University of Massachusetts Amherst, Massachusetts, USA.
Brigham and Women's Hospital Boston, Massachusetts, USA.
Softw Eng Healthc Syst SEHS IEEE ACM Int Workshop. 2018 May;2018:2-9. doi: 10.1145/3194696.3194705.
This paper summarizes the accomplishments and recent directions of our medical safety project. Our process-based approach uses a detailed, rigorously-defined, and carefully validated process model to provide a dynamically updated, context-aware and thus, "Smart" Checklist to help process performers understand and manage their pending tasks [7]. This paper focuses on support for teams of performers, working independently as well as in close collaboration, in stressful situations that are life critical. Our recent work has three main thrusts: provide effective real-time guidance for closely collaborating teams; develop and evaluate techniques for measuring cognitive load based on biometric observations and human surveys; and, using these measurements plus analysis and discrete event process simulation, predict cognitive load throughout the process model and propose process modifications to help performers better manage high cognitive load situations. This project is a collaboration among software engineers, surgical team members, human factors researchers, and medical equipment instrumentation experts. Experimental prototype capabilities are being built and evaluated based upon process models of two cardiovascular surgery processes, Aortic Valve Replacement (AVR) and Coronary Artery Bypass Grafting (CABG). In this paper we describe our approach for each of the three research thrusts by illustrating our work for heparinization, a common subprocess of both AVR and CABG. Heparinization is a high-risk error-prone procedure that involves complex team interactions and thus highlights the importance of this work for improving patient outcomes.
本文总结了我们医学安全项目的成果及近期方向。我们基于流程的方法使用详细、严格定义且经过精心验证的流程模型,以提供动态更新、情境感知的“智能”检查表,帮助流程执行者理解和管理其待办任务[7]。本文重点关注在危及生命的紧张情况下,对独立工作以及密切协作的执行者团队的支持。我们近期的工作有三个主要方向:为密切协作的团队提供有效的实时指导;开发并评估基于生物特征观察和人员调查来测量认知负荷的技术;利用这些测量结果以及分析和离散事件过程模拟,预测整个流程模型中的认知负荷,并提出流程修改建议,以帮助执行者更好地管理高认知负荷情况。该项目是软件工程师、手术团队成员、人因研究人员和医疗设备仪器专家之间的合作。正在基于两种心血管手术流程(主动脉瓣置换术(AVR)和冠状动脉旁路移植术(CABG))的流程模型构建并评估实验原型功能。在本文中,我们通过阐述我们在肝素化(AVR和CABG的常见子流程)方面的工作,来描述我们针对三个研究方向中每个方向所采用的方法。肝素化是一个高风险且容易出错的过程,涉及复杂的团队互动,因此凸显了这项工作对于改善患者预后的重要性。