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Genotype imputation in F2 crosses of inbred lines.
Pierotti, Saul; Welz, Bettina; Osuna-López, Mireia; Fitzgerald, Tomas; Wittbrodt, Joachim; Birney, Ewan.
  • Pierotti S; European Bioinformatics Institute (EMBL-EBI), European Molecular Biology Laboratory, Hinxton, Cambridge CB101SD, United Kingdom.
  • Welz B; Centre for Organismal Studies (COS), Heidelberg University, Heidelberg 69120, Germany.
  • Osuna-López M; Genomics Core Facility, European Molecular Biology Laboratory (EMBL), Heidelberg 69117, Germany.
  • Fitzgerald T; European Bioinformatics Institute (EMBL-EBI), European Molecular Biology Laboratory, Hinxton, Cambridge CB101SD, United Kingdom.
  • Wittbrodt J; Centre for Organismal Studies (COS), Heidelberg University, Heidelberg 69120, Germany.
  • Birney E; European Bioinformatics Institute (EMBL-EBI), European Molecular Biology Laboratory, Hinxton, Cambridge CB101SD, United Kingdom.
Bioinform Adv ; 4(1): vbae107, 2024.
Article en En | MEDLINE | ID: mdl-39077633
ABSTRACT
Motivation Crosses among inbred lines are a fundamental tool for the discovery of genetic loci associated with phenotypes of interest. In organisms for which large reference panels or SNP chips are not available, imputation from low-pass whole-genome sequencing is an effective method for obtaining genotype data from a large number of individuals. To date, a structured analysis of the conditions required for optimal genotype imputation has not been performed.

Results:

We report a systematic exploration of the effect of several design variables on imputation performance in F2 crosses of inbred medaka lines using the imputation software STITCH. We determined that, depending on the number of samples, imputation performance reaches a plateau when increasing the per-sample sequencing coverage. We also systematically explored the trade-offs between cost, imputation accuracy, and sample numbers. We developed a computational pipeline to streamline the process, enabling other researchers to perform a similar cost-benefit analysis on their population of interest. Availability and implementation The source code for the pipeline is available at https//github.com/birneylab/stitchimpute. While our pipeline has been developed and tested for an F2 population, the software can also be used to analyse populations with a different structure.