Deep Learning-Based Detection of Learning Disorders on a Large Scale Dataset of Eye Movement Records

Alae Eddine El Hmimdi, Zoï Kapoula, Vivien Sainte Fare Garnot
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Abstract

Early detection of dyslexia and learning disorders is vital for avoiding a learning disability, as well as supporting dyslexic students by tailoring academic programs to their needs. Several studies have investigated using supervised algorithms to screen dyslexia vs control subjects; however, the data size and the conditions of data acquisition were their most significant limitation. In the current study, we leverage a large dataset, containing 4243 time series of eye movement records from children across Europe. These datasets were derived from various tests such as saccade, vergence, and reading tasks. Furthermore, our methods were evaluated with realistic test data, including real-life biases such as noise, eye tracking misalignment, and similar pathologies among non-scholar difficulty classes. In addition, we present a novel convolutional neural network architecture, adapted to our time series classification problem, that is intended to generalize on a small annotated dataset and to handle a high-resolution signal (1024 point). Our architecture achieved a precision of 80.20% and a recall of 75.1%, when trained on the vergence dataset, and a precision of 77.2% and a recall of 77.5% when trained on the saccade dataset. Finally, we performed a comparison using our ML approach, a second architecture developed for a similar problem, and two other methods that we investigated that use deep learning algorithms to predict dyslexia.
基于深度学习的大规模眼动记录数据集学习障碍检测
及早发现阅读障碍和学习障碍,对于避免学习障碍,以及通过为有阅读障碍的学生量身定制学习计划来为他们提供支持至关重要。有几项研究调查了使用监督算法筛查阅读障碍与对照受试者的情况;然而,数据规模和数据采集条件是这些研究的最大局限。在本研究中,我们利用了一个大型数据集,其中包含来自欧洲儿童的 4243 条眼球运动时间序列记录。这些数据集来自于各种测试,例如眼跳、辐辏和阅读任务。此外,我们还使用真实的测试数据对我们的方法进行了评估,其中包括现实生活中的偏差,如噪音、眼动跟踪失准以及非学者难度等级中的类似病症。此外,我们还提出了一种新颖的卷积神经网络架构,该架构适用于我们的时间序列分类问题,旨在对小型注释数据集进行泛化,并处理高分辨率信号(1024 点)。当在辐辏数据集上进行训练时,我们的架构达到了 80.20% 的精确度和 75.1% 的召回率;当在囊状动作数据集上进行训练时,我们的架构达到了 77.2% 的精确度和 77.5% 的召回率。最后,我们使用我们的 ML 方法、针对类似问题开发的第二种架构以及我们调查过的使用深度学习算法预测阅读障碍的其他两种方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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0.00%
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