Eye Tracking Area of Interest in the Context of Working Memory Capacity Tasks

Gavindya Jayawardena, Anne M. P. Michalek, S. Jayarathna
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引用次数: 11

Abstract

Adults diagnosed with Attention-Deficit / Hyperactivity Disorder (ADHD) have reduced working memory capacity, indicating attention control deficits. Such deficits affect the characteristic movements of human gaze, thus making it a potential avenue to investigate attention disorders. This paper presents a converging operations approach toward the objective detection of neurocognitive indices of ADHD symptomatology that is grounded in the cognitive neuroscience literature of ADHD. The development of these objective measures of ADHD will facilitate its diagnosis. We hypothesize that the characteristic movements of human gaze within specific areas of interests (AOIs) may be used to estimate psychometric measures and that distinct eye movement scan patterns can be used to better understand ADHD. The results of this feasibility study confirm the utility of a combination of fixation and saccade feature set captured within specific AOIs indexing Working Memory Capacity (WMC) as a predictor of a diagnosis of ADHD in adults. Tree-based classifiers performed best in-terms of predicting ADHD with 86% percent accuracy using physiological measures of sustained visual attention during a WMC task.
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工作记忆容量任务背景下的眼动追踪兴趣区域
被诊断为注意力缺陷/多动障碍(ADHD)的成年人工作记忆能力下降,表明注意力控制缺陷。这种缺陷会影响人类凝视的特征运动,从而使其成为研究注意力障碍的潜在途径。本文以认知神经科学文献为基础,提出了一种针对ADHD症状学神经认知指标客观检测的会聚操作方法。这些ADHD的客观测量方法的发展将有助于其诊断。我们假设,在特定兴趣区域(aoi)内,人类凝视的特征运动可以用来估计心理测量值,而独特的眼球运动扫描模式可以用来更好地理解ADHD。这项可行性研究的结果证实了在特定aoi中捕获的固定和扫视特征集的组合的实用性,这些特征集索引工作记忆容量(WMC)作为成人ADHD诊断的预测因子。基于树的分类器在预测ADHD方面表现最好,在WMC任务中使用持续视觉注意力的生理测量,准确率为86%。
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