Highly accurate sequence imputation enables precise QTL mapping in Brown Swiss cattle


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Date

2017-12-29

Publication Type

Journal Article

ETH Bibliography

yes

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Abstract

BACKGROUND: Within the last few years a large amount of genomic information has become available in cattle. Densities of genomic information vary from a few thousand variants up to whole genome sequence information. In order to combine genomic information from different sources and infer genotypes for a common set of variants, genotype imputation is required. RESULTS: In this study we evaluated the accuracy of imputation from high density chips to whole genome sequence data in Brown Swiss cattle. Using four popular imputation programs (Beagle, FImpute, Impute2, Minimac) and various compositions of reference panels, the accuracy of the imputed sequence variant genotypes was high and differences between the programs and scenarios were small. We imputed sequence variant genotypes for more than 1600 Brown Swiss bulls and performed genome-wide association studies for milk fat percentage at two stages of lactation. We found one and three quantitative trait loci for early and late lactation fat content, respectively. Known causal variants that were imputed from the sequenced reference panel were among the most significantly associated variants of the genome-wide association study. CONCLUSIONS: Our study demonstrates that whole-genome sequence information can be imputed at high accuracy in cattle populations. Using imputed sequence variant genotypes in genome-wide association studies may facilitate causal variant detection.

Publication status

published

Editor

Book title

Journal / series

Volume

18

Pages / Article No.

999

Publisher

BioMed Central

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Edition / version

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Software

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Date collected

Date created

Subject

Whole genome sequencing; Imputation; Accuracy; Genome-wide association study; QTL discovery; Milk traits; Brown Swiss; Dairy cattle

Organisational unit

09575 - Pausch, Hubert / Pausch, Hubert check_circle

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