Genome-wide meta-analysis of depression identifies 102 independent variants and highlights the importance of the prefrontal brain regions

  • David Howard (Creator)
  • Mark Adams (Creator)
  • Toni-Kim Clarke (Creator)
  • Jonathan Hafferty (Creator)
  • Jude Gibson (Creator)
  • Masoud Shirali (Creator)
  • Jonathan Coleman (Creator)
  • Joey Ward (Creator)
  • Ella Wigmore (Creator)
  • Clara Alloza (Creator)
  • Miruna Barbu (Creator)
  • Eileen Xu (Creator)
  • Heather Whalley (Creator)
  • Riccardo Marioni (Creator)
  • David Porteous (Creator)
  • Gail Davies (Creator)
  • Ian Deary (Creator)
  • Gibran Hemani (Creator)
  • Chao Tian (Creator)
  • David Hinds (Creator)
  • 23andMe Research Team (Creator)
  • Major Depressive Disorder Working Group of the Psychiatric Genomics Consortium (Creator)
  • Maciej Trzaskowshi (Creator)
  • Enda Byrne (Creator)
  • Stephan Ripke (Creator)
  • Daniel Smith (Creator)
  • Patrick Sullivan (Creator)
  • Naomi Wray (Creator)
  • Gerome Breen (Creator)
  • Xueyi Shen (Creator)
  • Cathryn Lewis (Creator)
  • Andrew McIntosh (Creator)

Dataset

Abstract

Major depression is a debilitating psychiatric illness that is typically associated with low mood, anhedonia and a range of comorbidities. Depression has a heritable component that has remained difficult to elucidate with current sample sizes due to the polygenic nature of the disorder. To maximise sample size, we meta-analysed data on 807,553 individuals (246,363 cases and 561,190 controls) from the three largest genome-wide association studies of depression. We identified 102 independent variants, 269 genes, and 15 gene-sets associated with depression, including both genes and gene-pathways associated with synaptic structure and neurotransmission. Further evidence of the importance of prefrontal brain regions in depression was provided by an enrichment analysis. In an independent replication sample of 1,306,354 individuals (414,055 cases and 892,299 controls), 87 of the 102 associated variants were significant following multiple testing correction. Based on the putative genes associated with depression this work also highlights several potential drug repositioning opportunities. These findings advance our understanding of the complex genetic architecture of depression and provide several future avenues for understanding aetiology and developing new treatment approaches. The data contained in this item is described in a published manuscript located at http://dx.doi.org/10.1038/s41593-018-0326-7

Data Citation

Howard, David; Adams, Mark; Clarke, Toni-Kim; Hafferty, Jonathan; Gibson, Jude; Shirali, Masoud; Coleman, Jonathan; Ward, Joey; Wigmore, Eleanor; Alloza, Clara; Shen, Xueyi; Barbu, Miruna; Xu, Eileen; Whalley, Heather; Marioni, Riccardo; Porteous, David; Davies, Gail; Deary, Ian; Hemani, Gibran; Tian, Chao; Hinds, David; 23andMe Research Team; Major Depressive Disorder Working Group of the Psychiatric Genomics Consortium; Trzaskowshi, Maciej; Byrne, Enda; Ripke, Stephan; Smith, Daniel; Sullivan, Patrick; Wray, Naomi; Breen, Gerome; Lewis, Cathryn; McIntosh, Andrew; Howard, David. (2018). Genome-wide meta-analysis of depression identifies 102 independent variants and highlights the importance of the prefrontal brain regions, [dataset]. University of Edinburgh. http://dx.doi.org/10.7488/ds/2458.
Date made available30 Jan 2019
PublisherEdinburgh DataShare

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