Nature Communications (Oct 2024)

DINGO: increasing the power of locus discovery in maternal and fetal genome-wide association studies of perinatal traits

  • Liang-Dar Hwang,
  • Gabriel Cuellar-Partida,
  • Loic Yengo,
  • Jian Zeng,
  • Jarkko Toivonen,
  • Mikko Arvas,
  • Robin N. Beaumont,
  • Rachel M. Freathy,
  • Gunn-Helen Moen,
  • Nicole M. Warrington,
  • David M. Evans

DOI
https://doi.org/10.1038/s41467-024-53495-9
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 14

Abstract

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Abstract Perinatal traits are influenced by fetal and maternal genomes. We investigate the performance of three strategies to detect loci in maternal and fetal genome-wide association studies (GWASs) of the same quantitative trait: (i) the traditional strategy of analysing maternal and fetal GWASs separately; (ii) a two-degree-of-freedom test which combines information from maternal and fetal GWASs; and (iii) a one-degree-of-freedom test where signals from maternal and fetal GWASs are meta-analysed together conditional on estimated sample overlap. We demonstrate that the optimal strategy depends on the extent of sample overlap, correlation between phenotypes, whether loci exhibit fetal and/or maternal effects, and whether these effects are directionally concordant. We apply our methods to summary statistics from a recent GWAS meta-analysis of birth weight. Both the two-degree-of-freedom and meta-analytic approaches increase the number of genetic loci for birth weight relative to separately analysing the scans. Our best strategy identifies an additional 62 loci compared to the most recently published meta-analysis of birth weight. We conclude that whilst the two-degree-of-freedom test may be useful for the analysis of certain perinatal phenotypes, for most phenotypes, a simple meta-analytic strategy is likely to perform best, particularly in situations where maternal and fetal GWASs only partially overlap.