Best practices for analyzing imputed genotypes from low-pass sequencing in dogs

Author:

Buckley Reuben M.ORCID,Harris Alex C.ORCID,Wang Guo-DongORCID,Whitaker D. ThadORCID,Zhang Ya-PingORCID,Ostrander Elaine A.ORCID

Abstract

AbstractAlthough DNA array-based approaches for genome-wide association studies (GWAS) permit the collection of thousands of low-cost genotypes, it is often at the expense of resolution and completeness, as SNP chip technologies are ultimately limited by SNPs chosen during array development. An alternative low-cost approach is low-pass whole genome sequencing (WGS) followed by imputation. Rather than relying on high levels of genotype confidence at a set of select loci, low-pass WGS and imputation rely on the combined information from millions of randomly sampled low-confidence genotypes. To investigate low-pass WGS and imputation in the dog, we assessed accuracy and performance by downsampling 97 high-coverage (> 15×) WGS datasets from 51 different breeds to approximately 1× coverage, simulating low-pass WGS. Using a reference panel of 676 dogs from 91 breeds, genotypes were imputed from the downsampled data and compared to a truth set of genotypes generated from high-coverage WGS. Using our truth set, we optimized a variant quality filtering strategy that retained approximately 80% of 14 M imputed sites and lowered the imputation error rate from 3.0% to 1.5%. Seven million sites remained with a MAF > 5% and an average imputation quality score of 0.95. Finally, we simulated the impact of imputation errors on outcomes for case–control GWAS, where small effect sizes were most impacted and medium-to-large effect sizes were minorly impacted. These analyses provide best practice guidelines for study design and data post-processing of low-pass WGS-imputed genotypes in dogs.

Funder

national human genome research institute

national key r&d program of china

key research program of frontier sciences of the cas

innovative research team (in science and technology) of yunnan province

youth innovation promotion association of the chinese academy of sciences

Publisher

Springer Science and Business Media LLC

Subject

Genetics

Reference47 articles.

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