Clare Teng, Lior Drukker, Aris T Papageorghiou, J Alison Noble
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引用次数: 0
摘要
我们介绍了一种根据超声技师的眼动追踪和瞳孔数据对人类胎儿超声扫描技能进行分类的方法。针对这项临床任务的人类技能特征描述通常会根据专业经验年限对临床医生的技能进行分组,如专家和初学者;专家通常拥有 10 年以上的专业经验,初学者则在 0-5 年之间。在某些情况下,他们还包括尚未完全获得专业资格的受训人员。之前的工作考虑了眼球运动,这就需要将眼球跟踪数据分离成眼球运动,如定点和眼球移动。我们的方法不使用关于工作年限之间关系的先验假设,也不需要分离眼动跟踪数据。我们性能最好的技能分类模型在专家和学员类别中的 F1 分数分别达到了 98% 和 70%。我们还表明,作为技能的直接衡量标准,工作经验年限与超声波技师的专业技能有显著相关性。
Skill, or Style? Classification of Fetal Sonography Eye-Tracking Data.
We present a method for classifying human skill at fetal ultrasound scanning from eye-tracking and pupillary data of sonographers. Human skill characterization for this clinical task typically creates groupings of clinician skills such as expert and beginner based on the number of years of professional experience; experts typically have more than 10 years and beginners between 0-5 years. In some cases, they also include trainees who are not yet fully-qualified professionals. Prior work has considered eye movements that necessitates separating eye-tracking data into eye movements, such as fixations and saccades. Our method does not use prior assumptions about the relationship between years of experience and does not require the separation of eye-tracking data. Our best performing skill classification model achieves an F1 score of 98% and 70% for expert and trainee classes respectively. We also show that years of experience as a direct measure of skill, is significantly correlated to the expertise of a sonographer.