Polish-Japanese Academy of Information Technology, The Faculty of Information Technology, 86 Koszykowa Street, 02-008 Warsaw, Poland.
Department of Neurology, University of Massachusetts Medical School, 65 Lake Avenue, Worcester, MA 01655, USA.
Sensors (Basel). 2023 Feb 14;23(4):2145. doi: 10.3390/s23042145.
Humans are a vision-dominated species; what we perceive depends on where we look. Therefore, eye movements (EMs) are essential to our interactions with the environment, and experimental findings show EMs are affected in neurodegenerative disorders (ND). This could be a reason for some cognitive and movement disorders in ND. Therefore, we aim to establish whether changes in EM-evoked responses can tell us about the progression of ND, such as Alzheimer's (AD) and Parkinson's diseases (PD), in different stages. In the present review, we have analyzed the results of psychological, neurological, and EM (saccades, antisaccades, pursuit) tests to predict disease progression with machine learning (ML) methods. Thanks to ML algorithms, from the high-dimensional parameter space, we were able to find significant EM changes related to ND symptoms that gave us insights into ND mechanisms. The predictive algorithms described use various approaches, including granular computing, Naive Bayes, Decision Trees/Tables, logistic regression, C-/Linear SVC, KNC, and Random Forest. We demonstrated that EM is a robust biomarker for assessing symptom progression in PD and AD. There are navigation problems in 3D space in both diseases. Consequently, we investigated EM experiments in the virtual space and how they may help find neurodegeneration-related brain changes, e.g., related to place or/and orientation problems. In conclusion, EM parameters with clinical symptoms are powerful precision instruments that, in addition to their potential for predictions of ND progression with the help of ML, could be used to indicate the different preclinical stages of both diseases.
人类是一个以视觉为主导的物种;我们所感知的取决于我们看的地方。因此,眼动(EM)对于我们与环境的互动至关重要,实验结果表明,在神经退行性疾病(ND)中,EM 会受到影响。这可能是 ND 中一些认知和运动障碍的原因。因此,我们旨在确定 EM 诱发反应的变化是否可以告诉我们 ND 的进展情况,例如阿尔茨海默病(AD)和帕金森病(PD)在不同阶段的情况。在本综述中,我们分析了心理学、神经病学和 EM(扫视、反扫视、追踪)测试的结果,以使用机器学习(ML)方法预测疾病进展。得益于 ML 算法,我们能够从高维参数空间中找到与 ND 症状相关的显著 EM 变化,这些变化使我们深入了解 ND 机制。描述的预测算法使用了各种方法,包括粒度计算、朴素贝叶斯、决策树/表、逻辑回归、C-/线性 SVC、KNC 和随机森林。我们证明 EM 是评估 PD 和 AD 症状进展的有力生物标志物。在这两种疾病中,在 3D 空间中都存在导航问题。因此,我们研究了虚拟空间中的 EM 实验,以及它们如何帮助发现与神经退行性变相关的大脑变化,例如与位置或/和方向问题相关的变化。总之,具有临床症状的 EM 参数是强大的精密仪器,除了通过 ML 帮助预测 ND 进展的潜力外,还可以用于指示这两种疾病的不同临床前阶段。