%A Olatoye,Marcus O. %A Hu,Zhenbin %A Aikpokpodion,Peter O. %D 2019 %J Frontiers in Genetics %C %F %G English %K cowpea,Genetic architecture,Epistasis,QTL,Genomic-enabled breeding,genomic selection,flowering time,photoperiod %Q %R 10.3389/fgene.2019.00677 %W %L %M %P %7 %8 2019-July-30 %9 Original Research %+ Peter O. Aikpokpodion,Department of Genetics and Biotechnology, University of Calabar,Nigeria,paikpokpodion@unical.edu.ng %# %! Epistasis detection and modeling for genomic selection in cowpea (Vigna unguiculata. L. Walp.) %* %< %T Epistasis Detection and Modeling for Genomic Selection in Cowpea (Vigna unguiculata L. Walp.) %U https://www.frontiersin.org/articles/10.3389/fgene.2019.00677 %V 10 %0 JOURNAL ARTICLE %@ 1664-8021 %X Genetic architecture reflects the pattern of effects and interaction of genes underlying phenotypic variation. Most mapping and breeding approaches generally consider the additive part of variation but offer limited knowledge on the benefits of epistasis which explains in part the variation observed in traits. In this study, the cowpea multiparent advanced generation inter-cross (MAGIC) population was used to characterize the epistatic genetic architecture of flowering time, maturity, and seed size. In addition, consideration for epistatic genetic architecture in genomic-enabled breeding (GEB) was investigated using parametric, semi-parametric, and non-parametric genomic selection (GS) models. Our results showed that large and moderate effect–sized two-way epistatic interactions underlie the traits examined. Flowering time QTL colocalized with cowpea putative orthologs of Arabidopsis thaliana and Glycine max genes like PHYTOCLOCK1 (PCL1 [Vigun11g157600]) and PHYTOCHROME A (PHY A [Vigun01g205500]). Flowering time adaptation to long and short photoperiod was found to be controlled by distinct and common main and epistatic loci. Parametric and semi-parametric GS models outperformed non-parametric GS model, while using known quantitative trait nucleotide(s) (QTNs) as fixed effects improved prediction accuracy when traits were controlled by large effect loci. In general, our study demonstrated that prior understanding of the genetic architecture of a trait can help make informed decisions in GEB.