Abstract

BackgroundLinkage and linkage disequilibrium (LD) between genome regions cause dependencies among genomic markers. Due to family stratification in populations with non-random mating in livestock or crop, the standard measures of population LD such as r^2 may be biased. Grouping of markers according to their interdependence needs to account for the actual population structure in order to allow proper inference in genome-based evaluations.ResultsGiven a matrix reflecting the strength of association between markers, groups are built successively using a greedy algorithm; largest groups are built at first. As an option, a representative marker is selected for each group. We provide an implementation of the grouping approach as a new function to the R package hscovar. This package enables the calculation of the theoretical covariance between biallelic markers for half- or full-sib families and the derivation of representative markers. In case studies, we have shown that the number of groups comprising dependent markers was smaller and representative SNPs were spread more uniformly over the investigated chromosome region when the family stratification was respected compared to a population-LD approach. In a simulation study, we observed that sensitivity and specificity of a genome-based association study improved if selection of representative markers took family structure into account.ConclusionsChromosome segments which frequently recombine in the underlying population can be identified from the matrix of pairwise dependence between markers. Representative markers can be exploited, for instance, for dimension reduction prior to a genome-based association study or the grouping structure itself can be employed in a grouped penalization approach.

Highlights

  • Linkage and linkage disequilibrium (LD) between genome regions cause dependencies among genomic markers

  • A covariance matrix can be derived for any family structure, and this constitutes the input of the following grouping approach

  • We investigated a Single nucleotide polymorphism (SNP)-Best linear unbiased prediction (BLUP) approach, which is widely used in genomic evaluations (e.g., [9]), and thereby demonstrate one possible application of the suggested approach

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Summary

Introduction

Linkage and linkage disequilibrium (LD) between genome regions cause dependencies among genomic markers. Due to family stratification in populations with non-random mating in livestock or crop, the standard measures of population LD such as r2 may be biased. Grouping of markers according to their interdependence needs to account for the actual population structure in order to allow proper inference in genome-based evaluations. Dependencies among genomic markers are caused by linkage and linkage disequilibrium (LD) between genome regions. In livestock and crop breeding, populations are often characterized by strong family stratification due to non-random mating of selected individuals. There is need to promote measures of marker dependence which takes into account the particular family structure

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