| Literature DB >> 25495537 |
Isaak Y Tecle1, Jeremy D Edwards, Naama Menda, Chiedozie Egesi, Ismail Y Rabbi, Peter Kulakow, Robert Kawuki, Jean-Luc Jannink, Lukas A Mueller.
Abstract
BACKGROUND: Genomic selection (GS) promises to improve accuracy in estimating breeding values and genetic gain for quantitative traits compared to traditional breeding methods. Its reliance on high-throughput genome-wide markers and statistical complexity, however, is a serious challenge in data management, analysis, and sharing. A bioinformatics infrastructure for data storage and access, and user-friendly web-based tool for analysis and sharing output is needed to make GS more practical for breeders.Entities:
Mesh:
Year: 2014 PMID: 25495537 PMCID: PMC4269960 DOI: 10.1186/s12859-014-0398-7
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1Example of single prediction model output. A single trait model output includes model summary (A), a graphical representation of the phenotype data (collapsed; Figure 2), model accuracy (B), the GEBVs of individuals in the training population (C), and marker effects (collapsed). From the same model page, breeders can apply the model to predict GEBVs of selection populations (D, E). GEBVs can be viewed in the browser using interactive graphs and be downloaded in text format.
Figure 2Graphical representation of phenotype data used in a model. Panel A shows an example interactive scatter plot of the phenotype data used in the model, where as panel B displays the frequency distribution of the same phenotype data.
Figure 3Relationship plots. Panel A shows an example phenotypic correlation among traits in a training population. Panel B shows the relationship between the GEBVs and phenotype values (as deviations from the mean) for a trait in a training population. Mousing over a data point in both plots shows the data for the corresponding coordinates.
Figure 4Example of multiple prediction models output. Panel A shows a list of models simultaneously fitted for multiple traits from a single training population (Additional file 2), with their correspoxnding accuracy and heritability of the traits. Detailed results of each model can be viewed by clicking the trait names (Figure 1). In panels B and C are lists of selection populations that the models can simultaneously be applied to estimate the GEBVs for the respective traits. Display of a trait name indicates the prediction for the trait is done. In panel D, the selection index calculator is shown for individuals, from training and selection populations, with GEBVs.