School of Electrical Engineering, University of Belgrade, Bulevar Kralja Aleksandra 73, 11120 Belgrade, Serbia.
Innovation Center, School of Electrical Engineering in Belgrade, Bulevar Kralja Aleksandra 73, 11120 Belgrade, Serbia.
Sensors (Basel). 2022 Jun 29;22(13):4900. doi: 10.3390/s22134900.
Considering the detrimental effects of dyslexia on academic performance and its common occurrence, developing tools for dyslexia detection, monitoring, and treatment poses a task of significant priority. The research performed in this paper was focused on detecting and analyzing dyslexic tendencies in Serbian children based on eye-tracking measures. The group of 30 children (ages 7-13, 15 dyslexic and 15 non-dyslexic) read 13 different text segments on 13 different color configurations. For each text segment, the corresponding eye-tracking trail was recorded and then processed offline and represented by nine conventional features and five newly proposed features. The features were used for dyslexia recognition using several machine learning algorithms: logistic regression, support vector machine, k-nearest neighbor, and random forest. The highest accuracy of 94% was achieved using all the implemented features and leave-one-out subject cross-validation. Afterwards, the most important features for dyslexia detection (representing the complexity of fixation gaze) were used in a statistical analysis of the individual color effects on dyslexic tendencies within the dyslexic group. The statistical analysis has shown that the influence of color has high inter-subject variability. This paper is the first to introduce features that provide clear separability between a dyslexic and control group in the Serbian language (a language with a shallow orthographic system). Furthermore, the proposed features could be used for diagnosing and tracking dyslexia as biomarkers for objective quantification.
考虑到阅读障碍对学业成绩的不利影响及其常见性,开发用于阅读障碍检测、监测和治疗的工具是一项具有重要优先级的任务。本文的研究重点是基于眼动追踪测量来检测和分析塞尔维亚儿童的阅读障碍倾向。该研究小组由 30 名儿童(年龄 7-13 岁,15 名阅读障碍者和 15 名非阅读障碍者)组成,他们在 13 种不同的颜色配置下阅读了 13 个不同的文本片段。对于每个文本片段,都会记录相应的眼动追踪轨迹,然后离线处理并通过九个常规特征和五个新提出的特征表示。使用几种机器学习算法(逻辑回归、支持向量机、k-最近邻和随机森林)来使用这些特征进行阅读障碍识别。使用所有实现的特征和受试者交叉验证的最高准确率达到了 94%。之后,使用最能代表注视凝视复杂性的重要特征,对阅读障碍组内个别颜色对阅读障碍倾向的影响进行了统计分析。统计分析表明,颜色的影响具有高度的个体间可变性。本文首次在塞尔维亚语(一种浅层正字法系统的语言)中引入了能够明确区分阅读障碍组和对照组的特征。此外,所提出的特征可用于诊断和跟踪阅读障碍,作为客观量化的生物标志物。