Individualized Tracking of Neurocognitive-State-Dependent Eye-Movement Features Using Mobile Devices

Author:

Lai Hsin-Yu1ORCID,Sodini Charles G.2ORCID,Sze Vivienne2ORCID,Heldt Thomas2ORCID

Affiliation:

1. Harvard University, Cambridge, Massachusetts, USA

2. Massachusetts Institute of Technology, Cambridge, Massachusetts, USA

Abstract

With current clinical techniques, it is difficult to assess a patient's neurodegenerative disease (e.g., Alzheimer's) state accurately and frequently. The most widely used tests are qualitative or only performed intermittently, motivating the need for quantitative, accurate, and unobtrusive metrics to track disease progression. Clinical studies have shown that saccade latency (an eye movement measure of reaction time) and error rate (the proportion of eye movements in the wrong direction) may be significantly affected by neurocognitive diseases. Nevertheless, how these features change over time as a disease progresses is underdeveloped due to the constrained recording setup. In this work, our goal is to first understand how these features change over time in healthy individuals. To do so, we used a mobile app to frequently and accurately measure these features outside of the clinical environment from 80 healthy participants. We analyzed their longitudinal characteristics and designed an individualized longitudinal model using a Gaussian process. With a system that can measure eye-movement features on a much finer timescale in a broader population, we acquired a better understanding of eye-movement features from healthy individuals and provided research directions in understanding whether eye-movement features can be used to track neurocognitive states.

Funder

MIT-IBM Watson AI Lab

MIT?s Aging Brain Initiative

United States Air Force

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference57 articles.

1. Eye movements in patients with neurodegenerative disorders;Anderson T.J.;Nature Reviews Neurology,2013

2. Huntington's disease: Changes in saccades and hand-tapping over 3 years;Antoniades C.A.;Journal of Neurology,2010

3. Individual differences in human eye movements: An oculomotor signature;Bargary G.;Vision Research,2017

4. L. Barrios , P. Oldrati , M. Hilty , D. Lindlbauer , C. Holz , and A. Lutterotti . 2021. Smartphone-Based Tapping Frequency as a Surrogate for Perceived Fatigue: An in-the-Wild Feasibility Study in Multiple Sclerosis Patients . Proc. ACM Interact. Mob. Wearable Ubiquitous Technol. 5, 3, Article 89 ( 2021 ), 30 pages. https://doi.org/10.1145/3478098 10.1145/3478098 L. Barrios, P. Oldrati, M. Hilty, D. Lindlbauer, C. Holz, and A. Lutterotti. 2021. Smartphone-Based Tapping Frequency as a Surrogate for Perceived Fatigue: An in-the-Wild Feasibility Study in Multiple Sclerosis Patients. Proc. ACM Interact. Mob. Wearable Ubiquitous Technol. 5, 3, Article 89 (2021), 30 pages. https://doi.org/10.1145/3478098

5. E.V. Bonilla , K. Chai , and C. Williams . 2008 . Multi-task Gaussian Process Prediction. In Advances in Neural Information Processing Systems , Vol. 20 . E.V. Bonilla, K. Chai, and C. Williams. 2008. Multi-task Gaussian Process Prediction. In Advances in Neural Information Processing Systems, Vol. 20.

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