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[Preprint]. 2024 Dec 23:rs.3.rs-5418279. [Version 1] doi: 10.21203/rs.3.rs-5418279/v1

Genome-wide meta-analyses of non-response to antidepressants identify novel loci and potential drugs

Elise Koch, Tuuli Jürgenson, Guðmundur Einarsson, Brittany Mitchell, Arvid Harder, Luis M García-Marín, Kristi Krebs, Yuhao Lin, Alexey Shadrin, Ying Xiong, Oleksandr Frei, Yi Lu, Sara Hägg, Miguel Renteria, Sarah Medland, Naomi Wray, Nicholas Martin, Christopher Hübel, Gerome Breen, Thorgeir Thorgeirsson, Hreinn Stefansson, Kari Stefansson, Kelli Lehto, Lili Milani, Ole Andreassen, Kevin O`Connell
PMCID: PMC11703334  PMID: 39764137

Abstract

Antidepressants exhibit a considerable variation in efficacy, and increasing evidence suggests that individual genetics contribute to antidepressant treatment response. Here, we combined data on antidepressant non-response measured using rating scales for depressive symptoms, questionnaires of treatment effect, and data from electronic health records, to increase statistical power to detect genomic loci associated with non-response to antidepressants in a total sample of 135,471 individuals prescribed antidepressants (25,255 non-responders and 110,216 responders). We performed genome-wide association meta-analyses, genetic correlation analyses, leave-one-out polygenic prediction, and bioinformatics analyses for genetically informed drug prioritization. We identified two novel loci (rs1106260 and rs60847828) associated with non-response to antidepressants and showed significant polygenic prediction in independent samples. Genetic correlation analyses show positive associations between non-response to antidepressants and most psychiatric traits, and negative associations with cognitive traits and subjective well-being. In addition, we investigated drugs that target proteins likely involved in mechanisms underlying antidepressant non-response, and shortlisted drugs that warrant further replication and validation of their potential to reduce depressive symptoms in individuals who do not respond to first-line antidepressant medications. These results suggest that meta-analyses of GWAS utilizing real-world measures of treatment outcomes can increase sample sizes to improve the discovery of variants associated with non-response to antidepressants.

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