A Validated Algorithm for Identifying Neuro-Ophthalmic Conditions in Electronic Health Record Data

Update Item Information
Identifier 20230314_nanos_posters_316
Title A Validated Algorithm for Identifying Neuro-Ophthalmic Conditions in Electronic Health Record Data
Creator Lindsey B. De Lott; Lizbeth Gonzalez; Chris Andrews; Joshua Stein
Affiliation (LBDL) (CA) (JS) University of Michigan; (LG) University of Michigan - Ann Arbor
Subject Optic Neuritis; Neuro-ophthalmology & Systemic Disease (eg. MS, MG, Thyroid)
Description Most administrative data studies rely primarily on billing codes, but it is uncertain whether this strategy accurately identifies patients with conditions of interest. Our aim was to develop an algorithm using clinical data captured in electronic health records (EHR), in addition to billing codes, to accurately identify Neuro-ophthalmic conditions, such as acute optic neuritis (ON).
Date 2023-03-14
References None provided.
Language eng
Format application/pdf
Type Text
Source 2023 North American Neuro-Ophthalmology Society Annual Meeting
Relation is Part of NANOS Annual Meeting 2023: Poster Session II: New Diagnostic Measurement Techniques
Collection Neuro-Ophthalmology Virtual Education Library: NANOS Annual Meeting Collection: https://novel.utah.edu/collection/nanos-annual-meeting-collection/
Publisher North American Neuro-Ophthalmology Society
Holding Institution Spencer S. Eccles Health Sciences Library, University of Utah
Rights Management Copyright 2023. For further information regarding the rights to this collection, please visit: https://NOVEL.utah.edu/about/copyright
ARK ark:/87278/s6zjs8w9
Setname ehsl_novel_nam
ID 2335521
Reference URL https://collections.lib.utah.edu/ark:/87278/s6zjs8w9