Best practices for genotype imputation from low‐coverage sequencing data in natural populations

Author:

Watowich Marina M.12ORCID,Chiou Kenneth L.34ORCID,Graves Brian5ORCID,Montague Michael J.6ORCID,Brent Lauren J. N.7ORCID,Higham James P.89ORCID,Horvath Julie E.1011121314ORCID,Lu Amy15ORCID,Martinez Melween I.16ORCID,Platt Michael L.61718ORCID,Schneider‐Crease India A.3419ORCID,Lea Amanda J.220ORCID,Snyder‐Mackler Noah341921ORCID

Affiliation:

1. Department of Biology University of Washington Washington Seattle USA

2. Department of Biological Sciences Vanderbilt University Tennessee Nashville USA

3. Center for Evolution and Medicine Arizona State University Arizona Tempe USA

4. School of Life Sciences Arizona State University Arizona Tempe USA

5. Program in Ecology, Evolution, and Conservation Biology University of Illinois at Urbana‐Champaign Illinois Urbana USA

6. Department of Neuroscience, Perelman School of Medicine University of Pennsylvania Pennsylvania Philadelphia USA

7. Centre for Research in Animal Behaviour University of Exeter Exeter UK

8. Department of Anthropology New York University New York USA

9. New York Consortium in Evolutionary Primatology New York USA

10. Department of Biological and Biomedical Sciences North Carolina Central University North Carolina Durham USA

11. Research and Collections Section, North Carolina Museum of Natural Sciences North Carolina Raleigh USA

12. Department of Biological Sciences North Carolina State University North Carolina Raleigh USA

13. Department of Evolutionary Anthropology Duke University North Carolina Durham USA

14. Renaissance Computing Institute University of North Carolina at Chapel Hill Chapel Hill North Carolina USA

15. Department of Anthropology Stony Brook University New York Stony Brook USA

16. Caribbean Primate Research Center, Unit of Comparative Medicine University of Puerto Rico Puerto Rico San Juan USA

17. Department of Psychology, School of Arts and Sciences University of Pennsylvania Pennsylvania Philadelphia USA

18. Marketing Department, Wharton School of Business University of Pennsylvania Pennsylvania Philadelphia USA

19. School of Human Evolution and Social Change Arizona State University Arizona Tempe USA

20. Child and Brain Development Canadian Institute for Advanced Research Ontario Toronto Canada

21. ASU‐Banner Neurodegenerative Disease Research Center Arizona State University Arizona Tempe USA

Abstract

AbstractMonitoring genetic diversity in wild populations is a central goal of ecological and evolutionary genetics and is critical for conservation biology. However, genetic studies of nonmodel organisms generally lack access to species‐specific genotyping methods (e.g. array‐based genotyping) and must instead use sequencing‐based approaches. Although costs are decreasing, high‐coverage whole‐genome sequencing (WGS), which produces the highest confidence genotypes, remains expensive. More economical reduced representation sequencing approaches fail to capture much of the genome, which can hinder downstream inference. Low‐coverage WGS combined with imputation using a high‐confidence reference panel is a cost‐effective alternative, but the accuracy of genotyping using low‐coverage WGS and imputation in nonmodel populations is still largely uncharacterized. Here, we empirically tested the accuracy of low‐coverage sequencing (0.1–10×) and imputation in two natural populations, one with a large (n = 741) reference panel, rhesus macaques (Macaca mulatta), and one with a smaller (n = 68) reference panel, gelada monkeys (Theropithecus gelada). Using samples sequenced to coverage as low as 0.5×, we could impute genotypes at >95% of the sites in the reference panel with high accuracy (median r2 ≥ 0.92). We show that low‐coverage imputed genotypes can reliably calculate genetic relatedness and population structure. Based on these data, we also provide best practices and recommendations for researchers who wish to deploy this approach in other populations, with all code available on GitHub (https://github.com/mwatowich/LoCSI‐for‐non‐model‐species). Our results endorse accurate and effective genotype imputation from low‐coverage sequencing, enabling the cost‐effective generation of population‐scale genetic datasets necessary for tackling many pressing challenges of wildlife conservation.

Funder

National Institutes of Health

National Science Foundation

Publisher

Wiley

Subject

Genetics,Ecology, Evolution, Behavior and Systematics,Biotechnology

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