2024
DOI: 10.3389/fneur.2024.1342108
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Feasibility of video-based real-time nystagmus tracking: a lightweight deep learning model approach using ocular object segmentation

Changje Cho,
Sejik Park,
Sunmi Ma
et al.

Abstract: BackgroundEye movement tests remain significantly underutilized in emergency departments and primary healthcare units, despite their superior diagnostic sensitivity compared to neuroimaging modalities for the differential diagnosis of acute vertigo. This underutilization may be attributed to a potential lack of awareness regarding these tests and the absence of appropriate tools for detecting nystagmus. This study aimed to develop a nystagmus measurement algorithm using a lightweight deep-learning model that r… Show more

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