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Evaluation of methods and marker Systems in Genomic Selection of oil palm (Elaeis guineensis Jacq.). | LitMetric

AI Article Synopsis

  • Genomic selection (GS) aims to enhance breeding programs for plants and animals using genome-wide markers, which is especially beneficial for long-breeding perennial crops like oil palm; this study evaluates GS methods in a specific dura family with key traits linked to oil yield and quality.
  • The study finds that different marker systems (SSRs vs. SNPs) and modeling techniques influence GS accuracy, with SNPs showing more promise; the most accurate trait measurements came from SNPs, significantly boosting the reliability of predicted traits.
  • Overall, the research concludes that using whole-genome SNPs dramatically improves GS effectiveness for breeding oil palm, leading to better genetic advancements in oil yield and composition.

Article Abstract

Background: Genomic selection (GS) uses genome-wide markers as an attempt to accelerate genetic gain in breeding programs of both animals and plants. This approach is particularly useful for perennial crops such as oil palm, which have long breeding cycles, and for which the optimal method for GS is still under debate. In this study, we evaluated the effect of different marker systems and modeling methods for implementing GS in an introgressed dura family derived from a Deli dura x Nigerian dura (Deli x Nigerian) with 112 individuals. This family is an important breeding source for developing new mother palms for superior oil yield and bunch characters. The traits of interest selected for this study were fruit-to-bunch (F/B), shell-to-fruit (S/F), kernel-to-fruit (K/F), mesocarp-to-fruit (M/F), oil per palm (O/P) and oil-to-dry mesocarp (O/DM). The marker systems evaluated were simple sequence repeats (SSRs) and single nucleotide polymorphisms (SNPs). RR-BLUP, Bayesian A, B, Cπ, LASSO, Ridge Regression and two machine learning methods (SVM and Random Forest) were used to evaluate GS accuracy of the traits.

Results: The kinship coefficient between individuals in this family ranged from 0.35 to 0.62. S/F and O/DM had the highest genomic heritability, whereas F/B and O/P had the lowest. The accuracies using 135 SSRs were low, with accuracies of the traits around 0.20. The average accuracy of machine learning methods was 0.24, as compared to 0.20 achieved by other methods. The trait with the highest mean accuracy was F/B (0.28), while the lowest were both M/F and O/P (0.18). By using whole genomic SNPs, the accuracies for all traits, especially for O/DM (0.43), S/F (0.39) and M/F (0.30) were improved. The average accuracy of machine learning methods was 0.32, compared to 0.31 achieved by other methods.

Conclusion: Due to high genomic resolution, the use of whole-genome SNPs improved the efficiency of GS dramatically for oil palm and is recommended for dura breeding programs. Machine learning slightly outperformed other methods, but required parameters optimization for GS implementation.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5725918PMC
http://dx.doi.org/10.1186/s12863-017-0576-5DOI Listing

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