利用基于视频的眼动跟踪提取眼球移动、瞳孔和眨眼参数的自动分析管道。

Q2 Medicine
Brian C Coe, Jeff Huang, Donald C Brien, Brian J White, Rachel Yep, Douglas P Munoz
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引用次数: 0

摘要

随着视频眼动跟踪技术的广泛应用,收集数千名参与者的眼动跟踪数据成为可能。手动检测和分类眼球移动以及试验分类(如正确与不正确)的传统程序对于正在收集的大型数据集来说并不可行。此外,基于视频的眼动仪还可以分析瞳孔反应和眨眼行为。在此,我们详细介绍了我们收集、存储和清理数据以及组织参与者代码的流程,这些流程相当具有实验室特色,但却是建立标准化流程的重要先行步骤。更重要的是,我们还介绍了囊视、眨眼、"眨眼"(在囊视过程中发生的眨眼)和回旋囊视(两个几乎同时向相反方向的囊视,基于速度的算法无法将它们分开)的自动检测和分类。此外,我们还介绍了有关后回旋摆动的新发现,并提供了一种方法来更准确地估计回旋终点。最后,我们介绍了交错前/反囊回任务(IPAST)的自动行为分类,这是一项探测自主和抑制控制的任务。我们使用从 592 名年龄在 5 到 93 岁之间的人类参与者收集的数据对该管道进行了评估,使其足以处理大型临床患者数据集。总之,该管道已经过优化,可以持续处理从不同研究队列(即发育、老龄化、临床)获得的大型数据集,并可在多个实验室站点收集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Analysis Pipeline for Extracting Saccade, Pupil, and Blink Parameters Using Video-Based Eye Tracking.

The tremendous increase in the use of video-based eye tracking has made it possible to collect eye tracking data from thousands of participants. The traditional procedures for the manual detection and classification of saccades and for trial categorization (e.g., correct vs. incorrect) are not viable for the large datasets being collected. Additionally, video-based eye trackers allow for the analysis of pupil responses and blink behaviors. Here, we present a detailed description of our pipeline for collecting, storing, and cleaning data, as well as for organizing participant codes, which are fairly lab-specific but nonetheless, are important precursory steps in establishing standardized pipelines. More importantly, we also include descriptions of the automated detection and classification of saccades, blinks, "blincades" (blinks occurring during saccades), and boomerang saccades (two nearly simultaneous saccades in opposite directions where speed-based algorithms fail to split them), This is almost entirely task-agnostic and can be used on a wide variety of data. We additionally describe novel findings regarding post-saccadic oscillations and provide a method to achieve more accurate estimates for saccade end points. Lastly, we describe the automated behavior classification for the interleaved pro/anti-saccade task (IPAST), a task that probes voluntary and inhibitory control. This pipeline was evaluated using data collected from 592 human participants between 5 and 93 years of age, making it robust enough to handle large clinical patient datasets. In summary, this pipeline has been optimized to consistently handle large datasets obtained from diverse study cohorts (i.e., developmental, aging, clinical) and collected across multiple laboratory sites.

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来源期刊
Vision (Switzerland)
Vision (Switzerland) Health Professions-Optometry
CiteScore
2.30
自引率
0.00%
发文量
62
审稿时长
11 weeks
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