Paper
Document
Submit new version
Download
Flag content
0

Utility of Candidate Genes From an Algorithm Designed to Predict Genetic Risk for Opioid Use Disorder

Authors
Christal Davis,Zeal Jinwala
Alexander Hatoum,Sylvanus Toikumo,Arpana Agrawal,Christopher Rentsch,Howard Edenberg,James Baurley,Emily Hartwell,Richard Crist,Joshua Gray,Amy Justice,Joel Gelernter,Rachel Kember,Henry Kranzler,Sumitra Muralidhar,Jennifer Moser,Jennifer Deen,Philip Tsao,J. Gaziano,Elizabeth Hauser,Amy Kilbourne,Michael Matheny,Dave Oslin,Lori Churby,Stacey Whitbourne,Jessica Brewer,Shahpoor Shayan,Luis Selva,Saiju Pyarajan,Kelly Cho,Scott DuVall,Mary Brophy,Brady Stephens,Todd Connor,Dean Argyres,Tim Assimes,Adriana Hung,Samuel Aguayo,Sunil Ahuja,Kathrina Alexander,X. Androulakis,Prakash Balasubramanian,Zuhair Ballas,Jean Beckham,Sujata Bhushan,Edward Boyko,David Cohen,Louis Dell’Italia,L. Faulk,Joseph Fayad,Daryl Fujii,Saib Gappy,F. Gesek,Jennifer Greco,Michael Godschalk,Todd Gress,Samir Gupta,Salvador Gutierrez,John Harley,Mark Hamner,Robin Hurley,Pran Iruvanti,Frank Jacono,Darshana Jhala,Scott Kinlay,Michael Landry,Peter Liang,Suthat Liangpunsakul,Jack Lichy,Charles Mahan,Ronnie Marrache,Stephen Mastorides,Kristin Mattocks,Paul Meyer,Jonathan Moorman,Timothy Morgan,Maureen Murdoch,James Norton,Olaoluwa Okusaga,Kris Oursler,Samuel Poon,Michael Rauchman,Richard Servatius,Satish Sharma,River Smith,Peruvemba Sriram,Patrick Strollo,Neeraj Tandon,Gerardo Villareal,Jessica Walsh,John Wells,Jeff Whittle,Mary Whooley,Peter Wilson,Junzhe Xu,Shing Yeh,Elizabeth Bast,Gerald Dryden,Daniel Hogan,Seema Joshi,Tze Lo,Providencia Morales,Eknath Naik,Michael Ong,Ismene Petrakis,S. Amneet,Andrew Yen,Julia Gray
+107 authors
,X. Quan
Published
Jan 9, 2025
Show more
Save
TipTip
Document
Submit new version
Download
Flag content
0
TipTip
Save
Document
Submit new version
Download
Flag content

Abstract

Importance Recently, the US Food and Drug Administration gave premarketing approval to an algorithm based on its purported ability to identify individuals at genetic risk for opioid use disorder (OUD). However, the clinical utility of the candidate genetic variants included in the algorithm has not been independently demonstrated. Objective To assess the utility of 15 genetic variants from an algorithm intended to predict OUD risk. Design, Setting, and Participants This case-control study examined the association of 15 candidate genetic variants with risk of OUD using electronic health record data from December 20, 1992, to September 30, 2022. Electronic health record data, including pharmacy records, were accrued from participants in the Million Veteran Program across the US with opioid exposure (n = 452 664). Cases with OUD were identified using International Classification of Diseases, Ninth Revision , or International Classification of Diseases, Tenth Revision , diagnostic codes, and controls were individuals with no OUD diagnosis. Exposures Number of risk alleles present across 15 candidate genetic variants. Main Outcome and Measures Performance of 15 genetic variants for identifying OUD risk assessed via logistic regression and machine learning models. Results A total of 452 664 individuals with opioid exposure (including 33 669 with OUD) had a mean (SD) age of 61.15 (13.37) years, and 90.46% were male; the sample was ancestrally diverse (with individuals of genetically inferred European, African, and admixed American ancestries). Using Nagelkerke R 2 , collectively, the 15 candidate genes accounted for 0.40% of variation in OUD risk. In comparison, age and sex alone accounted for 3.27% of the variation. The ensemble machine learning. The ensemble machine learning model using the 15 variants as predictive factors correctly classified 52.83% (95% CI, 52.07%-53.59%) of individuals in an independent testing sample. Conclusions and Relevance Results of this study suggest that the candidate genetic variants included in the approved algorithm do not meet reasonable standards of efficacy in identifying OUD risk. Given the algorithm’s limited predictive accuracy, its use in clinical care would lead to high rates of both false-positive and false-negative findings. More clinically useful models are needed to identify individuals at risk of developing OUD.

Paper PDF

Empty State
This PDF hasn't been uploaded yet.
Do not upload any copyrighted content to the site, only open-access content.
or