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Genetic Predictors of Response to Serotonergic and Noradrenergic Antidepressants in Major Depressive Disorder: A Genome-Wide Analysis of Individual-Level Data and a Meta-Analysis

Author

Listed:
  • Katherine E Tansey
  • Michel Guipponi
  • Nader Perroud
  • Guido Bondolfi
  • Enrico Domenici
  • David Evans
  • Stephanie K Hall
  • Joanna Hauser
  • Neven Henigsberg
  • Xiaolan Hu
  • Borut Jerman
  • Wolfgang Maier
  • Ole Mors
  • Michael O'Donovan
  • Tim J Peters
  • Anna Placentino
  • Marcella Rietschel
  • Daniel Souery
  • Katherine J Aitchison
  • Ian Craig
  • Anne Farmer
  • Jens R Wendland
  • Alain Malafosse
  • Peter Holmans
  • Glyn Lewis
  • Cathryn M Lewis
  • Tine Bryan Stensbøl
  • Shitij Kapur
  • Peter McGuffin
  • Rudolf Uher

Abstract

Testing whether genetic information could inform the selection of the best drug for patients with depression, Rudolf Uher and colleagues searched for genetic variants that could predict clinically meaningful responses to two major groups of antidepressants. Background: It has been suggested that outcomes of antidepressant treatment for major depressive disorder could be significantly improved if treatment choice is informed by genetic data. This study aims to test the hypothesis that common genetic variants can predict response to antidepressants in a clinically meaningful way. Methods and Findings: The NEWMEDS consortium, an academia–industry partnership, assembled a database of over 2,000 European-ancestry individuals with major depressive disorder, prospectively measured treatment outcomes with serotonin reuptake inhibiting or noradrenaline reuptake inhibiting antidepressants and available genetic samples from five studies (three randomized controlled trials, one part-randomized controlled trial, and one treatment cohort study). After quality control, a dataset of 1,790 individuals with high-quality genome-wide genotyping provided adequate power to test the hypotheses that antidepressant response or a clinically significant differential response to the two classes of antidepressants could be predicted from a single common genetic polymorphism. None of the more than half million genetic markers significantly predicted response to antidepressants overall, serotonin reuptake inhibitors, or noradrenaline reuptake inhibitors, or differential response to the two types of antidepressants (genome-wide significance p

Suggested Citation

  • Katherine E Tansey & Michel Guipponi & Nader Perroud & Guido Bondolfi & Enrico Domenici & David Evans & Stephanie K Hall & Joanna Hauser & Neven Henigsberg & Xiaolan Hu & Borut Jerman & Wolfgang Maier, 2012. "Genetic Predictors of Response to Serotonergic and Noradrenergic Antidepressants in Major Depressive Disorder: A Genome-Wide Analysis of Individual-Level Data and a Meta-Analysis," PLOS Medicine, Public Library of Science, vol. 9(10), pages 1-10, October.
  • Handle: RePEc:plo:pmed00:1001326
    DOI: 10.1371/journal.pmed.1001326
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    Cited by:

    1. Shinn-Won Lim & Hong-Hee Won & Hyeran Kim & Woojae Myung & Seonwoo Kim & Ka-Kyung Kim & Bernard J Carroll & Jong-Won Kim & Doh Kwan Kim, 2014. "Genetic Prediction of Antidepressant Drug Response and Nonresponse in Korean Patients," PLOS ONE, Public Library of Science, vol. 9(9), pages 1-14, September.

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