Genome Biology (Mar 2024)

Next-Gen GWAS: full 2D epistatic interaction maps retrieve part of missing heritability and improve phenotypic prediction

  • Clément Carré,
  • Jean Baptiste Carluer,
  • Christian Chaux,
  • Chad Estoup-Streiff,
  • Nicolas Roche,
  • Eric Hosy,
  • André Mas,
  • Gabriel Krouk

DOI
https://doi.org/10.1186/s13059-024-03202-0
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 19

Abstract

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Abstract The problem of missing heritability requires the consideration of genetic interactions among different loci, called epistasis. Current GWAS statistical models require years to assess the entire combinatorial epistatic space for a single phenotype. We propose Next-Gen GWAS (NGG) that evaluates over 60 billion single nucleotide polymorphism combinatorial first-order interactions within hours. We apply NGG to Arabidopsis thaliana providing two-dimensional epistatic maps at gene resolution. We demonstrate on several phenotypes that a large proportion of the missing heritability can be retrieved, that it indeed lies in epistatic interactions, and that it can be used to improve phenotype prediction.