El Hmimdi Alae Eddine, Ward Lindsey M, Palpanas Themis, Sainte Fare Garnot Vivien, Kapoula Zoï
Orasis Eye Analytics and Rehabilitation, CNRS Spinoff up, 12 rue Lacretelle, 75015 Paris, France.
LIPADE, French University Institute (IUF), Laboratoire d'Informatique Paris Descartes, University of Paris, 45 Rue Des Saints-Pères, 75006 Paris, France.
Brain Sci. 2022 Aug 3;12(8):1031. doi: 10.3390/brainsci12081031.
It is known that dyslexics present eye movement abnormalities. Previously, we have shown that eye movement abnormalities during reading or during saccade and vergence testing can predict dyslexia successfully. The current study further examines this issue focusing on eye movements during free exploration of paintings; the dataset was provided by a study in our laboratory carried by Ward and Kapoula. Machine learning (ML) classifiers were applied to eye movement features extracted by the software AIDEAL: a velocity threshold analysis reporting amplitude speed and disconjugacy of horizontal saccades. In addition, a new feature was introduced that concerns only the very short periods during which the eyes were moving, one to the left the other to the right; such periods occurred mostly during fixations between saccades; we calculated a global index of the frequency of such disconjugacy segments, of their duration and their amplitude. Such continuous evaluation of disconjugacy throughout the time series of eye movements differs from the disconjugacy feature that describes inequality of the saccade amplitude between the two eyes. The results show that both AIDEAL features, and the Disconjugacy Global Index (DGI) enable successful categorization of dyslexics from non-dyslexics, at least when applying this analysis to the specific paintings used in the present study. We suggest that this high power of predictability arises from both the content of the paintings selected and the physiologic relevance of eye movement features extracted by the AIDEAL and the DGI.
众所周知,诵读困难症患者存在眼球运动异常。此前,我们已经表明,阅读过程中或扫视和聚散测试期间的眼球运动异常能够成功预测诵读困难症。当前的研究进一步探讨了这个问题,重点关注在自由欣赏绘画作品时的眼球运动;该数据集由沃德和卡普拉在我们实验室进行的一项研究提供。机器学习(ML)分类器被应用于由软件AIDEAL提取的眼球运动特征:一种速度阈值分析,报告水平扫视的幅度、速度和非共轭性。此外,还引入了一个新特征,该特征仅涉及眼睛向一侧移动而另一只眼睛向另一侧移动的非常短的时间段;这些时间段大多发生在扫视之间的注视过程中;我们计算了这种非共轭片段的频率、持续时间和幅度的全局指数。这种在眼球运动时间序列中对非共轭性的连续评估不同于描述两眼之间扫视幅度不平等的非共轭性特征。结果表明,至少在将这种分析应用于本研究中使用的特定绘画作品时,AIDEAL特征和非共轭性全局指数(DGI)都能够成功地将诵读困难症患者与非诵读困难症患者区分开来。我们认为这种高预测能力源于所选绘画作品的内容以及AIDEAL和DGI提取的眼球运动特征的生理相关性。