A digital eye-fixation biomarker using a deep anomaly scheme to classify Parkisonian patterns
Juan Ni\~no, Luis Guayac\'an, Santiago G\'omez, Fabio Mart\'inez

TL;DR
This paper presents a novel one-class anomaly detection method using deep video analysis to identify Parkinsonian eye fixation patterns, achieving high sensitivity and significant discrimination between patients and controls.
Contribution
It introduces a one-class deep anomaly detection framework for Parkinson's biomarkers, reducing data requirements compared to traditional discriminative models.
Findings
Achieved 0.97 sensitivity and 0.63 specificity in classifying Parkinsonian patterns.
Demonstrated significant statistical differences between patient and control groups.
Validated the approach on a dataset of 26 subjects with promising results.
Abstract
Oculomotor alterations constitute a promising biomarker to detect and characterize Parkinson's disease (PD), even in prodromal stages. Currently, only global and simplified eye movement trajectories are employed to approximate the complex and hidden kinematic relationships of the oculomotor function. Recent advances on machine learning and video analysis have encouraged novel characterizations of eye movement patterns to quantify PD. These schemes enable the identification of spatiotemporal segments primarily associated with PD. However, they rely on discriminative models that require large training datasets and depend on balanced class distributions. This work introduces a novel video analysis scheme to quantify Parkinsonian eye fixation patterns with an anomaly detection framework. Contrary to classical deep discriminative schemes that learn differences among labeled classes, the…
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Taxonomy
TopicsClinical Reasoning and Diagnostic Skills · Psychological and Educational Research Studies
