出声思维法
认知
协议分析
构造(python库)
概念框架
心理学
优先次序
定性研究
协议(科学)
医学教育
应用心理学
医学
计算机科学
人机交互
管理科学
替代医学
可用性
认识论
认知科学
社会科学
经济
程序设计语言
病理
神经科学
社会学
哲学
作者
Teresa M. Chan,Mathew Mercuri,Kenneth Van Dewark,Jonathan Sherbino,Alan Schwartz,Geoff Norman,Matthew Lineberry
出处
期刊:Academic Medicine
[Ovid Technologies (Wolters Kluwer)]
日期:2017-11-28
卷期号:93 (5): 786-793
被引量:29
标识
DOI:10.1097/acm.0000000000002081
摘要
Purpose Emergency physicians (EPs) regularly manage multiple patients simultaneously, often making time-sensitive decisions around priorities for multiple patients. Few studies have explored physician cognition in multipatient scenarios. The authors sought to develop a conceptual framework to describe how EPs think in busy, multipatient environments. Method From July 2014 to May 2015, a qualitative study was conducted at McMaster University, using a think-aloud protocol to examine how 10 attending EPs and 10 junior residents made decisions in multipatient environments. Participants engaged in the think-aloud exercise for five different simulated multipatient scenarios. Transcripts from recorded interviews were analyzed inductively, with an iterative process involving two independent coders, and compared between attendings and residents. Results The attending EPs and junior residents used similar processes to prioritize patients in these multipatient scenarios. The think-aloud processes demonstrated a similar process used by almost all participants. The cognitive task of patient prioritization consisted of three components: a brief overview of the entire cohort of patients to determine a general strategy; an individual chart review, whereby the participant created a functional patient story from information available in a file (i.e., vitals, brief clinical history); and creation of a relative priority list. Compared with residents, the attendings were better able to construct deeper and more complex patient stories. Conclusions The authors propose a conceptual framework for how EPs prioritize care for multiple patients in complex environments. This study may be useful to teachers who train physicians to function more efficiently in busy clinical environments.
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