Clinical Genetics Lacks Standard Definitions and Protocols for the Collection and Use of Diversity Measures.

TitleClinical Genetics Lacks Standard Definitions and Protocols for the Collection and Use of Diversity Measures.
Publication TypeJournal Article
Year of Publication2020
AuthorsPopejoy, AB, Crooks, KR, Fullerton, SM, Hindorff, LA, Hooker, GW, Koenig, BA, Pino, N, Ramos, EM, Ritter, DI, Wand, H, Wright, MW, Yudell, M, Zou, JY, Plon, SE, Bustamante, CD, Ormond, KE
Corporate Authors
JournalAm J Hum Genet
Volume107
Issue1
Pagination72-82
Date Published2020 Jul 02
ISSN1537-6605
KeywordsAdult, Child, Data Collection, Ethnicity, Female, Genetic Testing, Genetic Variation, Genomics, Humans, Male, Precision Medicine, Prohibitins, Surveys and Questionnaires
Abstract

Genetics researchers and clinical professionals rely on diversity measures such as race, ethnicity, and ancestry (REA) to stratify study participants and patients for a variety of applications in research and precision medicine. However, there are no comprehensive, widely accepted standards or guidelines for collecting and using such data in clinical genetics practice. Two NIH-funded research consortia, the Clinical Genome Resource (ClinGen) and Clinical Sequencing Evidence-generating Research (CSER), have partnered to address this issue and report how REA are currently collected, conceptualized, and used. Surveying clinical genetics professionals and researchers (n = 448), we found heterogeneity in the way REA are perceived, defined, and measured, with variation in the perceived importance of REA in both clinical and research settings. The majority of respondents (>55%) felt that REA are at least somewhat important for clinical variant interpretation, ordering genetic tests, and communicating results to patients. However, there was no consensus on the relevance of REA, including how each of these measures should be used in different scenarios and what information they can convey in the context of human genetics. A lack of common definitions and applications of REA across the precision medicine pipeline may contribute to inconsistencies in data collection, missing or inaccurate classifications, and misleading or inconclusive results. Thus, our findings support the need for standardization and harmonization of REA data collection and use in clinical genetics and precision health research.

DOI10.1016/j.ajhg.2020.05.005
Alternate JournalAm J Hum Genet
PubMed ID32504544
PubMed Central IDPMC7332657
Grant ListU01 HG009599 / HG / NHGRI NIH HHS / United States
U24 HG007307 / HG / NHGRI NIH HHS / United States
U41 HG009649 / HG / NHGRI NIH HHS / United States