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Medical students' cognitive load in volumetric image interpretation: Insights from human-computer interaction and eye movements

机译:医学生在体积图像解释中的认知负荷:人机交互和眼球运动的见解

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摘要

Medical image interpretation is moving from using 2D- to volumetric images, thereby changing the cognitive and perceptual processes involved. This is expected to affect medical students' experienced cognitive load, while learning image interpretation skills. With two studies this explorative research investigated whether measures inherent to image interpretation, i.e. human-computer interaction and eye tracking, relate to cognitive load. Subsequently, it investigated effects of volumetric image interpretation on second-year medical students' cognitive load. Study 1 measured human-computer interactions of participants during two volumetric image interpretation tasks. Using structural equation modelling, the 'latent variable 'volumetric image information' was identified from the data, which significantly predicted self-reported mental effort as a measure of cognitive load. Study 2 measured participants' eye movements during multiple 20 and volumetric image interpretation tasks. Multilevel analysis showed that time to locate a relevant structure in an image was significantly related to pupil dilation, as a proxy for cognitive load. It is discussed how combining human-computer interaction and eye tracking allows for comprehensive measurement of cognitive load. Combining such measures in a single model would allow for disentangling unique sources of cognitive load, leading to recommendations for implementation of volumetric image interpretation in the medical education curriculum. (c) 2016 Elsevier Ltd. All rights reserved.
机译:医学图像解释正在从使用2D图像过渡到体积图像,从而改变了涉及的认知和感知过程。预计这将影响医学生在学习图像解释技能时的认知能力。通过两项研究,该探索性研究调查了图像解释固有的措施(即人机交互和眼睛跟踪)是否与认知负荷有关。随后,研究了体积图像解释对二年级医学生认知能力的影响。研究1测量了两个体积图像解释任务期间参与者的人机交互。使用结构方程模型,从数据中识别出“潜在变量”体积图像信息”,从而显着预测了自我报告的心理努力,以此作为认知负荷的量度。研究2测量了参与者在多个20和体积图像解释任务中的眼球运动。多级分析显示,在图像中定位相关结构的时间与瞳孔扩张显着相关,可以作为认知负荷的代表。讨论了如何将人机交互与眼睛跟踪相结合来全面衡量认知负荷。在单个模型中组合这些度量将允许解开认知负荷的独特来源,从而为在医学教育课程中实施体积图像解释提供建议。 (c)2016 Elsevier Ltd.保留所有权利。

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