Smartphone-Based Pupillometry Using Machine Learning for the Diagnosis of Sports-Related Concussion
Anthony J. Maxin,
Bridget M. Whelan,
Michael R. Levitt
et al.
Abstract:Background: Quantitative pupillometry has been proposed as an objective means to diagnose acute sports-related concussion (SRC). Objective: To assess the diagnostic accuracy of a smartphone-based quantitative pupillometer in the acute diagnosis of SRC. Methods: Division I college football players had baseline pupillometry including pupillary light reflex (PLR) parameters of maximum resting diameter, minimum diameter after light stimulus, percent change in pupil diameter, latency of pupil constriction onset, me… Show more
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