预测医生的目光在临床设置使用光流和定位

A. Govindaswamy, E. Montague, D. Raicu, J. Furst
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引用次数: 1

摘要

电子健康记录系统用于临床设置,以促进知情决策,影响医生和病人之间的动态在临床互动。病人和医生之间的互动可以影响病人的满意度和整体健康结果。在医患互动过程中,凝视被发现会影响医患关系,是对人类和技术关注的重要衡量标准。这项研究的目的是自动标记医生的注视视频互动,通常使用大量的人类编码来测量。在本研究中,使用光流和身体定位坐标作为图像特征,在录制的视频交互过程中随时预测医生的凝视。研究结果表明,医生凝视的预测准确率超过83%。我们的方法突出了模型作为注释工具的潜力,它减少了为医生的目光注释视频的大量人力劳动。这些相互作用可以进一步与患者评分联系起来,以更好地了解患者的结果。
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Predicting physician gaze in clinical settings using optical flow and positioning
Electronic health record systems used in clinical settings to facilitate informed decision making, affects the dynamics between the physician and the patient during clinical interactions. The interaction between the patient and the physician can impact patient satisfaction, and overall health outcomes. Gaze during patient-doctor interactions was found to impact patient-physician relationship and is an important measure of attention towards humans and technology. This study aims to automatically label physician gaze for video interactions which is typically measured using extensive human coding. In this study, physicians’ gaze is predicted at any time during the recorded video interaction using optical flow and body positioning coordinates as image features. Findings show that physician gaze could be predicted with an accuracy of over 83%. Our approach highlights the potential for the model to be an annotation tool which reduces the extensive human labor of annotating the videos for physician’s gaze. These interactions can further be connected to patient ratings to better understand patient outcomes.
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