Mostrar el registro sencillo del ítem

Scalable sparse testing genomic selection strategy for early yield testing stage

Creador: Atanda, A.S.
Creador: Olsen, M.
Creador: Crossa, J.
Creador: Burgueño, J.
Creador: Rincent, R.
Creador: Dzidzienyo, D.
Creador: Beyene, Y.
Creador: Gowda, M.
Creador: Dreher, K.A.
Creador: Prasanna, B.M.
Creador: Tongoona, P.
Creador: Danquah, E.
Creador: Olaoye, G.
Creador: Robbins, K.
Año: 2021
URI: https://hdl.handle.net/10883/21621
Lenguaje: English
Editor: Frontiers
Copyright: CIMMYT manages Intellectual Assets as International Public Goods. The user is free to download, print, store and share this work. In case you want to translate or create any other derivative work and share or distribute such translation/derivative work, please contact CIMMYT-Knowledge-Center@cgiar.org indicating the work you want to use and the kind of use you intend; CIMMYT will contact you with the suitable license for that purpose
Tipo: Article
Lugar de publicación: Switzerland
Volumen: 12
DOI: 10.3389/fpls.2021.658978
Palabras Claves: Genomic Selection
Palabras Claves: Preliminary Yield Trials
Palabras Claves: Prediction Accuracy
Palabras Claves: Unstructured Model
Palabras Claves: CDmean
Descripción: To enable a scalable sparse testing genomic selection (GS) strategy at preliminary yield trials in the CIMMYT maize breeding program, optimal approaches to incorporate genotype by environment interaction (GEI) in genomic prediction models are explored. Two cross-validation schemes were evaluated: CV1, predicting the genetic merit of new bi-parental populations that have been evaluated in some environments and not others, and CV2, predicting the genetic merit of half of a bi-parental population that has been phenotyped in some environments and not others using the coefficient of determination (CDmean) to determine optimized subsets of a full-sib family to be evaluated in each environment. We report similar prediction accuracies in CV1 and CV2, however, CV2 has an intuitive appeal in that all bi-parental populations have representation across environments, allowing efficient use of information across environments. It is also ideal for building robust historical data because all individuals of a full-sib family have phenotypic data, albeit in different environments. Results show that grouping of environments according to similar growing/management conditions improved prediction accuracy and reduced computational requirements, providing a scalable, parsimonious approach to multi-environmental trials and GS in early testing stages. We further demonstrate that complementing the full-sib calibration set with optimized historical data results in improved prediction accuracy for the cross-validation schemes.
Agrovoc: MARKER-ASSISTED SELECTION
Agrovoc: FACTOR ANALYSIS
Agrovoc: MODELS
Datasets relacionados: https://figshare.com/collections/Scalable_Sparse_Testing_Genomic_Selection_Strategy_for_Early_Yield_Testing_Stage/5478072
ISSN: 1664-462X
Revista: Frontiers in Plant Science
Número de artículo: 658978


Ficheros en el ítem

Thumbnail

Este ítem aparece en la(s) siguiente(s) colección(ones)

  • Genetic Resources
    Genetic Resources including germplasm collections, wild relatives, genotyping, genomics, and IP
  • Maize
    Maize breeding, phytopathology, entomology, physiology, quality, and biotech

Mostrar el registro sencillo del ítem