Deep Learning in Mild Cognitive Impairment Diagnosis using Eye Movements and Image Content in Visual Memory Tasks
Journal:
arXiv
Published Date:
Jun 28, 2025
Abstract
The global prevalence of dementia is projected to double by 2050,
highlighting the urgent need for scalable diagnostic tools. This study utilizes
digital cognitive tasks with eye-tracking data correlated with memory processes
to distinguish between Healthy Controls (HC) and Mild Cognitive Impairment
(MCI), a precursor to dementia. A deep learning model based on VTNet was
trained using eye-tracking data from 44 participants (24 MCI, 20 HCs) who
performed a visual memory task. The model utilizes both time series and spatial
data derived from eye-tracking. It was modified to incorporate scan paths, heat
maps, and image content. These modifications also enabled testing parameters
such as image resolution and task performance, analyzing their impact on model
performance. The best model, utilizing $700\times700px$ resolution heatmaps,
achieved 68% sensitivity and 76% specificity. Despite operating under more
challenging conditions (e.g., smaller dataset size, shorter task duration, or a
less standardized task), the model's performance is comparable to an
Alzheimer's study using similar methods (70% sensitivity and 73% specificity).
These findings contribute to the development of automated diagnostic tools for
MCI. Future work should focus on refining the model and using a standardized
long-term visual memory task.