4.8 Article

Identifying loci with different allele frequencies among cases of eight psychiatric disorders using CC-GWAS

Journal

NATURE GENETICS
Volume 53, Issue 4, Pages 445-+

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41588-021-00787-1

Keywords

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Funding

  1. Government of Canada through Genome Canada
  2. Canadian Institutes of Health Research
  3. 'Ministere de l'Economie, de la Science et de l'Innovation du Quebec' through Genome Quebec [PSR-SIIRI-701]
  4. National Institutes of Health [U19 CA148065, X01HG007492]
  5. Cancer Research UK [C1287/A10118, C1287/A16563, C1287/A10710]
  6. European Union [HEALTH-F2-2009-223175, H2020 633784, 634935]
  7. NIH [R01 HG006399, R37 MH107649, R01 MH101244, R01 CA222147]
  8. NWO Veni grant [91619152]

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Researchers developed a new method CC-GWAS to study genetic differences between psychiatric disorders, identifying 196 independent case-case loci, including 72 specific loci, which help to better understand the variations between these disorders.
Psychiatric disorders are highly genetically correlated, but little research has been conducted on the genetic differences between disorders. We developed a new method (case-case genome-wide association study; CC-GWAS) to test for differences in allele frequency between cases of two disorders using summary statistics from the respective case-control GWAS, transcending current methods that require individual-level data. Simulations and analytical computations confirm that CC-GWAS is well powered with effective control of type I error. We applied CC-GWAS to publicly available summary statistics for schizophrenia, bipolar disorder, major depressive disorder and five other psychiatric disorders. CC-GWAS identified 196 independent case-case loci, including 72 CC-GWAS-specific loci that were not significant at the genome-wide level in the input case-control summary statistics; two of the CC-GWAS-specific loci implicate the genes KLF6 and KLF16 (from the Kruppel-like family of transcription factors), which have been linked to neurite outgrowth and axon regeneration. CC-GWAS loci replicated convincingly in applications to datasets with independent replication data. Identification of the genetic differences between two different disorders has been hampered by a need for individual-level data from cases of both disorders. CC-GWAS enables the comparison of allele frequencies among cases of two disorders using case-control GWAS summary statistics.

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