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A metadata framework for computational phenotypes

Authors :
Matthew Spotnitz
Nripendra Acharya
James J Cimino
Shawn Murphy
Bahram Namjou
Nancy Crimmins
Theresa Walunas
Cong Liu
David Crosslin
Barbara Benoit
Elisabeth Rosenthal
Jennifer A Pacheco
Anna Ostropolets
Harry Reyes Nieva
Jason S Patterson
Lauren R Richter
Tiffany J Callahan
Ahmed Elhussein
Chao Pang
Krzysztof Kiryluk
Jordan Nestor
Atlas Khan
Sumit Mohan
Evan Minty
Wendy Chung
Wei-Qi Wei
Karthik Natarajan
Chunhua Weng
Source :
JAMIA Open. 6
Publication Year :
2023
Publisher :
Oxford University Press (OUP), 2023.

Abstract

With the burgeoning development of computational phenotypes, it is increasingly difficult to identify the right phenotype for the right tasks. This study uses a mixed-methods approach to develop and evaluate a novel metadata framework for retrieval of and reusing computational phenotypes. Twenty active phenotyping researchers from 2 large research networks, Electronic Medical Records and Genomics and Observational Health Data Sciences and Informatics, were recruited to suggest metadata elements. Once consensus was reached on 39 metadata elements, 47 new researchers were surveyed to evaluate the utility of the metadata framework. The survey consisted of 5-Likert multiple-choice questions and open-ended questions. Two more researchers were asked to use the metadata framework to annotate 8 type-2 diabetes mellitus phenotypes. More than 90% of the survey respondents rated metadata elements regarding phenotype definition and validation methods and metrics positively with a score of 4 or 5. Both researchers completed annotation of each phenotype within 60 min. Our thematic analysis of the narrative feedback indicates that the metadata framework was effective in capturing rich and explicit descriptions and enabling the search for phenotypes, compliance with data standards, and comprehensive validation metrics. Current limitations were its complexity for data collection and the entailed human costs.

Subjects

Subjects :
Health Informatics

Details

ISSN :
25742531
Volume :
6
Database :
OpenAIRE
Journal :
JAMIA Open
Accession number :
edsair.doi...........4bb3ecc250bdec210d9324e83f63bcc7