可视化时空凝视特征用于临床胎儿超声扫描的探索性数据分析。

Clare Teng, Harshita Sharma, Lior Drukker, Aris T Papageorghiou, Alison J Noble
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引用次数: 1

摘要

可视化模式在临床医生的眼球运动,同时解释胎儿超声成像视频是具有挑战性的。由于胎儿的位置、运动和超声技术的不同,在视频之间和视频内,感兴趣区域(aoi)的大小和位置存在差异。目前,aoi是手动标记或识别使用眼动仪制造商的规格,而不是研究特定的。我们建议使用无监督聚类来识别有意义的aoi和双轮廓图来可视化时空凝视特征。我们使用基于层次密度的带噪声应用空间聚类(HDBSCAN)来识别AOI,并使用其相应的图像来捕获每个AOI内的颗粒变化。然后我们可视化超声师读取的aoi内部和aoi之间的转换。我们将我们的方法与标准化的眼动追踪制造商算法进行比较。我们的方法捕获了注视特征的颗粒变化,否则这些变化不会显示出来。我们的方法适用于涉及多个参与者和aoi的眼动追踪数据的探索性数据分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Visualising Spatio-Temporal Gaze Characteristics for Exploratory Data Analysis in Clinical Fetal Ultrasound Scans.

Visualising Spatio-Temporal Gaze Characteristics for Exploratory Data Analysis in Clinical Fetal Ultrasound Scans.

Visualising Spatio-Temporal Gaze Characteristics for Exploratory Data Analysis in Clinical Fetal Ultrasound Scans.

Visualising Spatio-Temporal Gaze Characteristics for Exploratory Data Analysis in Clinical Fetal Ultrasound Scans.

Visualising patterns in clinicians' eye movements while interpreting fetal ultrasound imaging videos is challenging. Across and within videos, there are differences in size an d position of Areas-of-Interest (AOIs) due to fetal position, movement and sonographer skill. Currently, AOIs are manually labelled or identified using eye-tracker manufacturer specifications which are not study specific. We propose using unsupervised clustering to identify meaningful AOIs and bi-contour plots to visualise spatio-temporal gaze characteristics. We use Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN) to identify the AOIs, and use their corresponding images to capture granular changes within each AOI. Then we visualise transitions within and between AOIs as read by the sonographer. We compare our method to a standardised eye-tracking manufacturer algorithm. Our method captures granular changes in gaze characteristics which are otherwise not shown. Our method is suitable for exploratory data analysis of eye-tracking data involving multiple participants and AOIs.

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