Antolí Adoración, Rodriguez-Lozano Francisco Javier, Juan Cañas José, Vacas Julia, Cuadrado Fátima, Sánchez-Raya Araceli, Pérez-Dueñas Carolina, Gámez-Granados Juan Carlos
Department of Psychology, University of Córdoba, Córdoba, Spain.
Maimónides Biomedical Research Institute of Córdoba, Córdoba, Spain.
Front Neurosci. 2025 Jun 24;19:1558621. doi: 10.3389/fnins.2025.1558621. eCollection 2025.
Eye-tracking technology has proven to be a valuable tool in detecting visual scanning patterns associated with autism spectrum disorder (ASD). Its advantages in easily obtaining reliable measures of social attention could help overcome many of the current challenges in the assessment of neurodevelopmental disorders. However, the clinical use of this technology has not yet been established. Two key challenges must be addressed: the difficulty in reliably distinguishing between disorders with overlapping features, and the efficient management of eye-tracking data to yield clinically meaningful outcomes.
The aim of this study is to apply explainable machine learning (XML) algorithms to eye-tracking data from social attention tasks involving children with ASD, developmental language disorder (DLD), and typical development (TD), in order to assess classification accuracy and identify the variables that best differentiate between groups.
Ninety-three children participated in a visual preference task that paired social and non-social stimuli, specifically designed to capture features characteristic of ASD. Participants were distributed across three groups: ASD ( = 24), DLD ( = 25), and TD ( = 44). Eye-tracking data were used to generate four datasets, which were then analyzed using XML algorithms to evaluate the accuracy of group classification across all possible combinations.
The model achieved an F1-score of 0.912 in distinguishing DLD from TD, 0.86 for ASD vs. TD, and 0.88 for the combined ASD+DLD group vs. TD. Performance was moderate for ASD vs. DLD, with an F1-score of 0.63. The most informative areas of interest were those broadly grouping social and non-social stimuli, while more specific variables did not improve classification accuracy. Naive Bayes and Logistic Model Trees (LMT) emerged as the most effective algorithms in this study. The resulting model enabled the identification of potential disorder-specific markers, such as the mean duration of visits to objects.
These findings highlight the potential of applying XML techniques to eye-tracking data collected through tasks designed to capture features characteristic of neurodevelopmental conditions. They also underscore the clinical relevance of such approaches for identifying the variables and parameters that differentiate between disorders.
眼动追踪技术已被证明是检测与自闭症谱系障碍(ASD)相关的视觉扫描模式的宝贵工具。其在轻松获取可靠的社会注意力测量方面的优势有助于克服当前神经发育障碍评估中的许多挑战。然而,该技术的临床应用尚未确立。必须解决两个关键挑战:难以可靠地区分具有重叠特征的疾病,以及有效管理眼动追踪数据以产生具有临床意义的结果。
本研究的目的是将可解释机器学习(XML)算法应用于来自涉及自闭症谱系障碍(ASD)、发育性语言障碍(DLD)和典型发育(TD)儿童的社会注意力任务的眼动追踪数据,以评估分类准确性并确定最能区分不同组别的变量。
93名儿童参与了一项视觉偏好任务,该任务将社会刺激和非社会刺激配对,专门设计用于捕捉自闭症谱系障碍的特征。参与者分为三组:自闭症谱系障碍组(n = 24)、发育性语言障碍组(n = 25)和典型发育组(n = 44)。眼动追踪数据用于生成四个数据集,然后使用XML算法进行分析,以评估所有可能组合下的组分类准确性。
该模型在区分发育性语言障碍组与典型发育组时的F1分数为0.912,区分自闭症谱系障碍组与典型发育组时为0.86,区分自闭症谱系障碍组+发育性语言障碍组合并组与典型发育组时为0.88。自闭症谱系障碍组与发育性语言障碍组的表现中等,F1分数为0.63。最具信息量的感兴趣区域是将社会刺激和非社会刺激大致分组的区域,而更具体的变量并未提高分类准确性。朴素贝叶斯和逻辑模型树(LMT)在本研究中是最有效的算法。所得模型能够识别潜在的疾病特异性标志物,例如对物体注视的平均持续时间。
这些发现突出了将XML技术应用于通过旨在捕捉神经发育状况特征的任务收集的眼动追踪数据的潜力。它们还强调了此类方法在识别区分不同疾病的变量和参数方面的临床相关性。