Vankipuram Mithra, Kahol Kanav, Cohen Trevor, Patel Vimla L
Center for Decision Making and Cognition, Arizona State University, Phoenix, AZ, USA.
AMIA Annu Symp Proc. 2009 Nov 14;2009:662-6.
Critical care environments are inherently complex and dynamic. Assessment of workflow in such environments is not trivial. While existing approaches for workflow analysis such as ethnographic observations and interviewing provide contextualized information about the overall workflow, they are limited in their ability to capture the workflow from all perspectives. This paper presents a tool for automated activity recognition that can provide an additional point of view. Using data captured by Radio Identification (RID) tags and Hidden Markov Models (HMMs), key activities in the environment can be modeled and recognized. The proposed method leverages activity recognition systems to provide a snapshot of workflow in critical care environments. The activities representing the workflow can be extracted and replayed using virtual reality environments for further analysis.
重症监护环境本质上是复杂且动态的。对此类环境中的工作流程进行评估并非易事。虽然现有的工作流程分析方法,如实况观察和访谈,能提供有关整体工作流程的情境化信息,但它们从所有视角捕捉工作流程的能力有限。本文提出了一种用于自动活动识别的工具,它能提供另一种视角。利用通过射频识别(RID)标签和隐马尔可夫模型(HMM)捕获的数据,可以对环境中的关键活动进行建模和识别。所提出的方法利用活动识别系统来提供重症监护环境中工作流程的快照。代表工作流程的活动可以使用虚拟现实环境进行提取和回放,以便进一步分析。