Publications des scientifiques de l'IRD

De la Fuente Canto Carla, Vigouroux Yves. (2022). Evaluation of nine statistics to identify QTLs in bulk segregant analysis using next generation sequencing approaches. BMC Genomics, 23 (1), 490 [12 p.]. ISSN 1471-2164.

Titre du document
Evaluation of nine statistics to identify QTLs in bulk segregant analysis using next generation sequencing approaches
Année de publication
2022
Type de document
Article référencé dans le Web of Science WOS:000821603500002
Auteurs
De la Fuente Canto Carla, Vigouroux Yves
Source
BMC Genomics, 2022, 23 (1), 490 [12 p.] ISSN 1471-2164
Background Bulk segregant analysis (BSA) combined with next generation sequencing is a powerful tool to identify quantitative trait loci (QTL). The impact of the size of the study population and the percentage of extreme genotypes analysed have already been assessed. But a good comparison of statistical approaches designed to identify QTL regions using next generation sequencing (NGS) technologies for BSA is still lacking. Results We developed an R code to simulate QTLs in bulks of F2 contrasted lines. We simulated a range of recombination rates based on estimations using different crop species. The simulations were used to benchmark the ability of statistical methods identify the exact location of true QTLs. A single QTL led to a shift in allele frequency across a large fraction of the chromosome for plant species with low recombination rate. The smoothed version of all statistics performed best notably the smoothed Euclidean distance-based statistics was always found to be more accurate in identifying the location of QTLs. We propose a simulation approach to build confidence interval statistics for the detection of QTLs. Conclusion We highlight the statistical methods best suited for BSA studies using NGS technologies in crops even when recombination rate is low. We also provide simulation codes to build confidence intervals and to assess the impact of recombination for application to other studies. This computational study will help select NGS-based BSA statistics that are useful to the broad scientific community.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Sciences du monde végétal [076]
Localisation
Fonds IRD [F B010085381]
Identifiant IRD
fdi:010085381
Contact