Phantom Epistasis in Genomic Selection: On the Predictive Ability of Epistatic Models
Author(s) -
Matías F. Schrauf,
Johannes W. R. Martini,
Henner Simianer,
Gustavo de los Campos,
R. J. C. Cantet,
Jan A. Freudenthal,
Arthur Korte,
Sebastián Munilla
Publication year - 2020
Publication title -
g3 genes genomes genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.468
H-Index - 66
ISSN - 2160-1836
DOI - 10.1534/g3.120.401300
Subject(s) - epistasis , genetic architecture , linkage disequilibrium , context (archaeology) , selection (genetic algorithm) , biology , evolutionary biology , genetics , computational biology , quantitative trait locus , computer science , machine learning , allele , gene , haplotype , paleontology
Genomic selection uses whole-genome marker models to predict phenotypes or genetic values for complex traits. Some of these models fit interaction terms between markers, and are therefore called epistatic. The biological interpretation of the corresponding fitted effects is not straightforward and there is the threat of overinterpreting their functional meaning. Here we show that the predictive ability of epistatic models relative to additive models can change with the density of the marker panel. In more detail, we show that for publicly available Arabidopsis and rice datasets, an initial superiority of epistatic models over additive models, which can be observed at a lower marker density, vanishes when the number of markers increases. We relate these observations to earlier results reported in the context of association studies which showed that detecting statistical epistatic effects may not only be related to interactions in the underlying genetic architecture, but also to incomplete linkage disequilibrium at low marker density ("Phantom Epistasis"). Finally, we illustrate in a simulation study that due to phantom epistasis, epistatic models may also predict the genetic value of an underlying purely additive genetic architecture better than additive models, when the marker density is low. Our observations can encourage the use of genomic epistatic models with low density panels, and discourage their biological over-interpretation.
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