Towards Automated Analysis of Gaze Behavior from Consumer VR Devices for Neurological Diagnosis
Authored by Lio Schmitz, Markus Plack, Berkan Koyak, Muhammad Ehsan Ullah, Ahmad Aziz, Reinhard Klein, Zorah Lähner, Hannah Dröge
                Published in Pacific Symposium on Biocomputing (PSB) 2026 
                
 
 
Abstract
Recent studies have demonstrated that eye tracking is a valuable tool in the detection, classification and staging of neurodegenerative diseases such as Parkinson’s Disease(PD). However, traditional methods for capturing gaze data often rely on expensive and non-engaging clinical equipment such as video-oculography, limiting their accessibility and scalability. In this work, we investigate the feasibility of using eye tracking data collected via consumer-grade virtual reality (VR) headsets to support neurological diagnostics in a more accessible and user-friendly manner. This approach enables large-scale, low-cost, and remote assessments, which are particularly valuable in early detection and monitoring of neurodegenerative conditions. We show that relevant oculomotor features extracted from VR-based eye tracking can be used for predictive assessment. Despite the inherent noise and lower precision of consumer devices, careful preprocessing and robust feature engineering, including deep learning embeddings, mitigate these limitations. Our results demonstrate that both handcrafted and learned features from gaze behavior enable promising levels of classification performance. This research represents an important step towards scalable, automated, and accessible diagnostic tools for neurodegenerative diseases using ubiquitous VR technology.
Resources
The paper has been accepted at PSB 2026 (Pacific Symposium on Biocomputing), a link to the paper and git will be added as soon as it is published.
Bibtex
    @inproceedings{ schmitz2026eyetracking, 
    		author 	= { Lio Schmitz and Markus Plack and Berkan Koyak and Muhammad Ehsan Ullah and Ahmad Aziz and Reinhard Klein and Zorah Lähner and Hannah Dröge },
        	title 	= { Towards Automated Analysis of  Gaze Behavior from Consumer VR Devices  for Neurological Diagnosis },
       		booktitle = { Pacific Symposium on Biocomputing (PSB) },
        	year 	= { 2026 },
    	}