Bayesian Signal Detection of Square-Wave Jerk from Video-Oculographic Recordings

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Identifier 20220213_nanos_posters_322
Title Bayesian Signal Detection of Square-Wave Jerk from Video-Oculographic Recordings
Creator Todd Hudson; John-Ross Rizzo; Laura Balcer; Steven Galetta; Janet Rucker
Affiliation (TH) (JRR) (LB) (SG) (JR) New York University Grossman School of Medicine, New York, NY
Subject Diagnostic Tests (ERG, VER, OCT, HRT, mfERG, etc); Ocular Motility; Neuro-ophthalmology & Systemic Disease (eg. MS, MG, Thyroid)
Description The statistical properties of saccadic intrusions such as square-wave jerks (SWJ) assist with diagnostic assessment of pathological conditions, such as progressive supranuclear palsy. Here, we introduce a novel Bayesian method of detecting square-wave jerks in eye movement traces, and compare it to the current state-of-the-art algorithm1 using a likelihood- based approach. The difference between the two methods consists in their use of information describing non-SWJ saccade pairs. Likelihood-based algorithms rely solely on computing the extent of match between the data and what is theoretically expected from a square-wave saccade pair, where a good (i.e., high likelihood) match is treated as a detection. The Bayesian approach2 takes this a step further, and compares (a) the match between data and a theoretical square-wave saccade pair to (b) the match between data and what is theoretically expected from a non-SWJ saccade pair. The use of additional information contained in (b) allows the algorithm to enhance its discrimination between SWJ and non-SWJ saccade pairs, leading to greater detectability. We test this prediction with noisy simulated eye movement traces.
Date 2022-02
Language eng
Format application/pdf
Type Text
Source 2022 North American Neuro-Ophthalmology Society Annual Meeting
Relation is Part of NANOS Annual Meeting 2022: Poster Session I: New Diagnostic Measurement Techniques
Collection Neuro-ophthalmology Virtual Education Library: NOVEL http://NOVEL.utah.edu
Publisher Spencer S. Eccles Health Sciences Library, University of Utah
Holding Institution North American Neuro-Ophthalmology Association. NANOS Executive Office 5841 Cedar Lake Road, Suite 204, Minneapolis, MN 55416
Rights Management Copyright 2022. For further information regarding the rights to this collection, please visit: https://NOVEL.utah.edu/about/copyright
ARK ark:/87278/s6044s5y
Context URL The NANOS Annual Meeting Neuro-Ophthalmology Collection: https://novel.utah.edu/collection/NAM/toc/
Setname ehsl_novel_nam
ID 2065343
Reference URL https://collections.lib.utah.edu/ark:/87278/s6044s5y
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