Groznik Vida, Možina Martin, Lazar Timotej, Georgiev Dejan, Semeja Aleš, Sadikov Aleksander
NEUS Diagnostics, d.o.o., Ljubljana, Slovenia.
Faculty of Computer and Information Science, University of Ljubljana, Ljubljana, Slovenia.
Sci Rep. 2025 Apr 14;15(1):12834. doi: 10.1038/s41598-025-94583-0.
Mild cognitive impairment (MCI) is a neurocognitive disorder that precedes Alzheimer's disease, but also other types of dementia. The use of reading tasks, when paired with eye-tracking technology, has been suggested as an effective biomarker for identifying MCI and distinguishing it from healthy individuals. The objective of this study was twofold: (1) to explore the disparities in eye movements during reading between individuals with MCI and healthy controls and train a predictive model to detect MCI, and (2) to validate these findings on a large independent dataset. We developed features for a model designed to automatically detect cognitive impairment based on the data of 115 subjects; 62 cognitively impaired and 53 healthy controls. Each subject was subjected to a neurological evaluation, a thorough psychological analysis, and completed a brief reading exercise while their eye movements were monitored using an eye-tracker. Their eye movements were characterised by patterns of saccades and fixations and were analysed across both groups. Several characteristics showed very high statistical significance, indicating differences in gaze behaviour between the groups. These characteristics were then employed to develop a machine learning model that differentiates cognitively impaired individuals from healthy controls. For the validation purposes, we ran a separate study with 99 new subjects using the same experimental design. The model reached about 75% AUROC. These results confirm that reading tasks can serve as a basis for early detection of MCI; however, complementary eye-tracking tasks are needed to further increase the detection accuracy.
轻度认知障碍(MCI)是一种先于阿尔茨海默病以及其他类型痴呆症出现的神经认知障碍。有人提出,将阅读任务与眼动追踪技术相结合,可作为识别MCI并将其与健康个体区分开来的有效生物标志物。本研究的目的有两个:(1)探讨MCI患者与健康对照者在阅读过程中眼动的差异,并训练一个预测模型来检测MCI;(2)在一个大型独立数据集上验证这些发现。我们基于115名受试者的数据开发了一个旨在自动检测认知障碍的模型的特征;其中62名认知障碍者和53名健康对照者。每位受试者都接受了神经学评估、全面的心理分析,并在使用眼动仪监测其眼动的同时完成了一项简短的阅读练习。他们的眼动以扫视和注视模式为特征,并在两组中进行了分析。几个特征显示出非常高的统计学显著性,表明两组之间注视行为存在差异。然后利用这些特征开发了一个机器学习模型,以区分认知障碍个体和健康对照者。为了进行验证,我们使用相同的实验设计对99名新受试者进行了另一项研究。该模型的曲线下面积(AUROC)约为75%。这些结果证实,阅读任务可作为早期检测MCI的基础;然而,需要补充眼动追踪任务以进一步提高检测准确性。