King Andrew J, Hochheiser Harry, Visweswaran Shyam, Clermont Gilles, Cooper Gregory F
Department of Biomedical Informatics, University of Pittsburgh, Pittsburgh, PA, USA.
Intelligent Systems Program, University of Pittsburgh, Pittsburgh, PA, USA.
AMIA Jt Summits Transl Sci Proc. 2017 Jul 26;2017:512-521. eCollection 2017.
Eye-tracking is a valuable research tool that is used in laboratory and limited field environments. We take steps toward developing methods that enable widespread adoption of eye-tracking and its real-time application in clinical decision support. Eye-tracking will enhance awareness and enable intelligent views, more precise alerts, and other forms of decision support in the Electronic Medical Record (EMR). We evaluated a low-cost eye-tracking device and found the device's accuracy to be non-inferior to a more expensive device. We also developed and evaluated an automatic method for mapping eye-tracking data to interface elements in the EMR (e.g., a displayed laboratory test value). Mapping was 88% accurate across the six participants in our experiment. Finally, we piloted the use of the low-cost device and the automatic mapping method to label training data for a Learning EMR (LEMR) which is a system that highlights the EMR elements a physician is predicted to use.
眼动追踪是一种有价值的研究工具,用于实验室和有限的现场环境。我们采取措施开发相关方法,以使眼动追踪能够广泛应用,并在临床决策支持中实现实时应用。眼动追踪将提高认知度,并在电子病历(EMR)中实现智能视图、更精确的警报以及其他形式的决策支持。我们评估了一种低成本的眼动追踪设备,发现该设备的准确性不低于更昂贵的设备。我们还开发并评估了一种自动方法,用于将眼动追踪数据映射到EMR中的界面元素(例如显示的实验室检查值)。在我们实验的六名参与者中,映射准确率达到了88%。最后,我们试用了低成本设备和自动映射方法,为学习型电子病历(LEMR)标记训练数据,LEMR是一种突出显示预计医生会使用的EMR元素的系统。