Publication

A Method for EHR Phenotype Management in an i2b2 Data Warehouse.

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Last modified
  • 05/21/2025
Type of Material
Authors
    Andrew Post, Emory UniversityNityananda Chappidi, Emory UniversityDileep Gunda, Emory UniversityNita Deshpande, Emory University
Language
  • English
Date
  • 2019
Publisher
  • American Medical Informatics Association
Publication Version
Title of Journal or Parent Work
ISSN
  • 2153-4063
Volume
  • 2019
Start Page
  • 92
End Page
  • 101
Grant/Funding Information
  • This work was supported by the National Center for Advancing Translational Sciences of the National Institutes of Health under Award number UL1TR002378.
Abstract
  • Electronic health record (EHR) data is valuable for finding patients for clinical research and analytics but is complex to query. EHR phenotyping involves the curation and dissemination of best practices for querying commonly studied populations. Phenotyping software computes patterns in clinical and administrative data and may add the found patterns as derived variables to a database that researchers can query. This paper describes a method for managing EHR phenotypes in a data warehouse as the warehouse is incrementally updated with new and changed data. We have implemented this method in proof-of-concept form as an extension to the Eureka! Clinical Analytics phenotyping software system and evaluated the implementation's performance. The method shows promise for realizing the efficient addition, modification, and removal of derived variables representing phenotypes in a data warehouse.
Author Notes
  • The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.
Research Categories
  • Engineering, Biomedical

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