Anderson Blake, Shyu Chi-Ren
Informatics Institute, University of Missouri, USA.
AMIA Annu Symp Proc. 2011;2011:72-9. Epub 2011 Oct 22.
While eye movements have been used to analyze behaviors for many years, research studies that employ eye tracking technologies are often limited to basic physical features and fixations, which leads to an abundance of data. Because visual behaviors are complex in nature, it can be difficult to make comparisons and conclusions based on subjects' scanpaths. In this study, we analyze visual activities from 15 expert radiographers and 26 novices as they view a series of images to attempt to discover relationships between a large number of features including fixation, region and subject information. We expect that the techniques used in this study will be useful in finding common behaviors in eye tracking data for medical applications. These behaviors could be used to train novices and prevent potential medical errors that occur during visual analysis of medical images.
虽然眼动已被用于分析行为多年,但采用眼动追踪技术的研究通常局限于基本身体特征和注视,这导致了大量数据的产生。由于视觉行为本质上很复杂,基于受试者的扫描路径进行比较和得出结论可能会很困难。在本研究中,我们分析了15名专业放射技师和26名新手在观看一系列图像时的视觉活动,试图发现包括注视、区域和对象信息在内的大量特征之间的关系。我们期望本研究中使用的技术将有助于在医学应用的眼动追踪数据中找到常见行为。这些行为可用于培训新手,并防止在医学图像视觉分析过程中发生潜在的医疗错误。