Artículo
Genomic prediction with epistasis models: On the marker-coding-dependent performance of the extended GBLUP and properties of the categorical epistasis model (CE)
Martini, Johannes W. R.; Gao, Ning; Cardoso, Diercles F.; Wimmer, Valentin; Erbe, Malena; Cantet, Rodolfo Juan Carlos
; Simianer, Henner
Fecha de publicación:
01/2017
Editorial:
BioMed Central
Revista:
BMC Bioinformatics
ISSN:
1471-2105
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Background: Epistasis marker effect models incorporating products of marker values as predictor variables in a linear regression approach (extended GBLUP, EGBLUP) have been assessed as potentially beneficial for genomic prediction, but their performance depends on marker coding. Although this fact has been recognized in literature, the nature of the problem has not been thoroughly investigated so far. Results: We illustrate how the choice of marker coding implicitly specifies the model of how effects of certain allele combinations at different loci contribute to the phenotype, and investigate coding-dependent properties of EGBLUP. Moreover, we discuss an alternative categorical epistasis model (CE) eliminating undesired properties of EGBLUP and show that the CE model can improve predictive ability. Finally, we demonstrate that the coding-dependent performance of EGBLUP offers the possibility to incorporate prior experimental information into the prediction method by adapting the coding to already available phenotypic records on other traits. Conclusion: Based on our results, for EGBLUP, a symmetric coding {−1,1} or {−1,0,1} should be preferred, whereas a standardization using allele frequencies should be avoided. Moreover, CE can be a valuable alternative since it does not possess the undesired theoretical properties of EGBLUP. However, which model performs best will depend on characteristics of the data and available prior information. Data from previous experiments can for instance be incorporated into the marker coding of EGBLUP.
Palabras clave:
Epistasis Model
,
Genomic Prediction
,
Interaction
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Colecciones
Articulos(INPA)
Articulos de UNIDAD EJECUTORA DE INVESTIGACIONES EN PRODUCCION ANIMAL
Articulos de UNIDAD EJECUTORA DE INVESTIGACIONES EN PRODUCCION ANIMAL
Citación
Martini, Johannes W. R.; Gao, Ning; Cardoso, Diercles F.; Wimmer, Valentin; Erbe, Malena; et al.; Genomic prediction with epistasis models: On the marker-coding-dependent performance of the extended GBLUP and properties of the categorical epistasis model (CE); BioMed Central; BMC Bioinformatics; 18; 1; 1-2017
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