A genome-wide Association study of the Count of Codeine prescriptions

Abstract Opioid prescription records in existing electronic health record (EHR) databases are a potentially useful, high-fidelity data source for opioid use-related risk phenotyping in genetic analyses. Prescriptions for codeine derived from EHR records were used as targeting traits by screening 16 ...

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Bibliografische gegevens
Hoofdauteurs: Wenyu Song, Max Lam, Ruize Liu, Aurélien Simona, Scott G. Weiner, Richard D. Urman, Kenneth J. Mukamal, Adam Wright, David W. Bates
Formaat: Artikel
Taal:English
Gepubliceerd in: Nature Portfolio 2024-10-01
Reeks:Scientific Reports
Onderwerpen:
Online toegang:https://doi.org/10.1038/s41598-024-73925-4
Omschrijving
Samenvatting:Abstract Opioid prescription records in existing electronic health record (EHR) databases are a potentially useful, high-fidelity data source for opioid use-related risk phenotyping in genetic analyses. Prescriptions for codeine derived from EHR records were used as targeting traits by screening 16 million patient-level medication records. Genome-wide association analyses were then conducted to identify genomic loci and candidate genes associated with different count patterns of codeine prescriptions. Both low- and high-prescription counts were captured by developing 8 types of phenotypes with selected ranges of prescription numbers to reflect potentially different levels of opioid risk severity. We identified one significant locus associated with low-count codeine prescriptions (1, 2 or 3 prescriptions), while up to 7 loci were identified for higher counts (≥ 4, ≥ 5, ≥6, or ≥ 7 prescriptions), with a strong overlap across different thresholds. We identified 9 significant genomic loci with all-count phenotype. Further, using the polygenic risk approach, we identified a significant correlation (Tau = 0.67, p = 0.01) between an externally derived polygenic risk score for opioid use disorder and numbers of codeine prescriptions. As a proof-of-concept study, our research provides a novel and generalizable phenotyping pipeline for the genomic study of opioid-related risk traits.
ISSN:2045-2322