Moment estimators of relatedness from low-depth whole-genome sequencing data
Moment estimators of relatedness from low-depth whole-genome sequencing data
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Author / Creator
Herzig, Anthony F. , Ciullo, M. , Deleuze, Jean-François , Génin, Emmanuelle , Redon, Richard , Adjou, Chantal , Chatel, Stéphanie , Férec, Claude , Goldberg, Marcel , Halbout, Philippe-Antoine , Le Marec, Hervé , L’Helgouach, David , Rouault, Karen , Schott, Jean-Jacques , Vogelsperger, Anne , Zins, Marie , Bacq, Delphine , Blanchet, Hélène , Boland, Anne , Lindenbaum, Pierre , Ludwig, Thomas , Meyer, Vincent , Olaso, Robert , Velo-Suárez, Lourdes , Alves, Isabel , Bocher, Ozvan , Dina, Christian , Karakachoff, Matilde , Marenne, Gaëlle , Pierre, Aude Saint , Leutenegger, A-L. , Perdry, H. and FranceGenRef Consortium
Publisher
London: BioMed Central Ltd
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Language
English
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Publisher
London: BioMed Central Ltd
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Scope and Contents
Contents
Estimating relatedness is an important step for many genetic study designs. A variety of methods for estimating coefficients of pairwise relatedness from genotype data have been proposed. Both the kinship coefficient [formula omitted] and the fraternity coefficient [formula omitted] for all pairs of individuals are of interest. However, when dealing with low-depth sequencing or imputation data, individual level genotypes cannot be confidently called. To ignore such uncertainty is known to result in biased estimates. Accordingly, methods have recently been developed to estimate kinship from uncertain genotypes. We present new method-of-moment estimators of both the coefficients [formula omitted] and [formula omitted] calculated directly from genotype likelihoods. We have simulated low-depth genetic data for a sample of individuals with extensive relatedness by using the complex pedigree of the known genetic isolates of Cilento in South Italy. Through this simulation, we explore the behaviour of our estimators, demonstrate their properties, and show advantages over alternative methods. A demonstration of our method is given for a sample of 150 French individuals with down-sampled sequencing data. We find that our method can provide accurate relatedness estimates whilst holding advantages over existing methods in terms of robustness, independence from external software, and required computation time. The method presented in this paper is referred to as LowKi (Low-depth Kinship) and has been made available in an R package (https://github.com/genostats/LowKi)....
Alternative Titles
Full title
Moment estimators of relatedness from low-depth whole-genome sequencing data
Authors, Artists and Contributors
Author / Creator
Ciullo, M.
Deleuze, Jean-François
Génin, Emmanuelle
Redon, Richard
Adjou, Chantal
Chatel, Stéphanie
Férec, Claude
Goldberg, Marcel
Halbout, Philippe-Antoine
Le Marec, Hervé
L’Helgouach, David
Rouault, Karen
Schott, Jean-Jacques
Vogelsperger, Anne
Zins, Marie
Bacq, Delphine
Blanchet, Hélène
Boland, Anne
Lindenbaum, Pierre
Ludwig, Thomas
Meyer, Vincent
Olaso, Robert
Velo-Suárez, Lourdes
Alves, Isabel
Bocher, Ozvan
Dina, Christian
Karakachoff, Matilde
Marenne, Gaëlle
Pierre, Aude Saint
Leutenegger, A-L.
Perdry, H.
FranceGenRef Consortium
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Record Identifier
TN_cdi_doaj_primary_oai_doaj_org_article_f82ce9a672624ab797b1db3ee792f0eb
Permalink
https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_doaj_primary_oai_doaj_org_article_f82ce9a672624ab797b1db3ee792f0eb
Other Identifiers
ISSN
1471-2105
E-ISSN
1471-2105
DOI
10.1186/s12859-022-04795-8