Attention-deficit/hyperactivity disorder (ADHD) is a neurodevelopmental disorder that is highly prevalent and requires clinical specialists to diagnose. It is known that an individual's viewing behavior, reflected in their eye movements, is directly related to attentional mechanisms and higher-order cognitive processes. We therefore explore whether ADHD can be detected based on recorded eye movements together with information about the video stimulus in a free-viewing task. To this end, we develop an end-to-end deep learning-based sequence model which we pre-train on a related task for which more data are available. We find that the method is in fact able to detect ADHD and outperforms relevant baselines. We investigate the relevance of the input features in an ablation study. Interestingly, we find that the model's performance is closely related to the content of the video, which provides insights for future experimental designs.
翻译:注意力缺陷/高能障碍(ADHD)是一种神经发育障碍,非常普遍,需要临床专家诊断。众所周知,个人眼部运动中反映的观察行为与注意力机制和更高层次的认知过程直接相关。因此,我们探讨是否可以根据记录的眼睛运动以及自由观看任务中视频刺激信息来检测ADHD。为此,我们开发了一个基于尾端至端深层次学习的序列模型,用于对相关任务进行预先培训,而相关任务又有更多数据。我们发现,该方法事实上能够检测ADHD,并超越相关基线。我们调查了通缩研究中输入特征的相关性。有趣的是,我们发现该模型的性能与视频内容密切相关,为未来的实验设计提供了洞察力。