Mapping quantitative trait loci by controlling polygenic background effects
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Performance Gains in Genome-Wide Association Studies for Longitudinal Traits via Modeling Time-varied effects.A new genotype imputation method with tolerance to high missing rate and rare variantsPredicting hybrid performance in rice using genomic best linear unbiased prediction.Genotyping by sequencing for genomic prediction in a soybean breeding population.PEPIS: A Pipeline for Estimating Epistatic Effects in Quantitative Trait Locus Mapping and Genome-Wide Association Studies.High Resolution Genomic Scans Reveal Genetic Architecture Controlling Alcohol Preference in Bidirectionally Selected Rat ModelBayesian reversible-jump for epistasis analysis in genomic studies.Genomic prediction using subsampling.Improving power and accuracy of genome-wide association studies via a multi-locus mixed linear model methodologyA Random-Model Approach to QTL Mapping in Multiparent Advanced Generation Intercross (MAGIC) Populations.Mapping small-effect and linked quantitative trait loci for complex traits in backcross or DH populations via a multi-locus GWAS methodology.Including dominance effects in the genomic BLUP method for genomic evaluation.Kernel-based variance component estimation and whole-genome prediction of pre-corrected phenotypes and progeny tests for dairy cow health traits.Predicted Residual Error Sum of Squares of Mixed Models: An Application for Genomic Prediction.Orthogonal Estimates of Variances for Additive, Dominance, and Epistatic Effects in Populations.Walking through the statistical black boxes of plant breeding.Methodological implementation of mixed linear models in multi-locus genome-wide association studies.Evaluation of the utility of gene expression and metabolic information for genomic prediction in maize.Metabolomic prediction of yield in hybrid rice.Assessing Predictive Properties of Genome-Wide Selection in Soybeans.Linkage Analysis and Association Mapping QTL Detection Models for Hybrids Between Multiparental Populations from Two Heterotic Groups: Application to Biomass Production in Maize (Zea mays L.).QTL mapping and transcriptome analysis of cowpea reveals candidate genes for root-knot nematode resistance.A quantitative genetic framework highlights the role of epistatic effects for grain-yield heterosis in bread wheat.A Rapid Epistatic Mixed-model Association Analysis by Linear Retransformations of Genomic Estimated Values.Genome-wide association study reveals novel variants for growth and egg traits in Dongxiang blue-shelled and White Leghorn chickens.Genetic Variance Partitioning and Genome-Wide Prediction with Allele Dosage Information in Autotetraploid Potato.Eigen decomposition expedites longitudinal genome-wide association studies for milk production traits in Chinese Holstein.Dissection of complicate genetic architecture and breeding perspective of cottonseed traits by genome-wide association study.Identification of QTL controlling domestication-related traits in cowpea (Vigna unguiculata L. Walp).2D association and integrative omics analysis in rice provides systems biology view in trait analysisThe Application of Multi-Locus GWAS for the Detection of Salt-Tolerance Loci in RiceHow to Reveal Magnitude of Gene Signals: Hierarchical Hypergeometric Complementary Cumulative Distribution Function
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Mapping quantitative trait loci by controlling polygenic background effects
description
article científic
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article scientifique
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articolo scientifico
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artigo científico
@pt
bilimsel makale
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scientific article published on 27 September 2013
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vedecký článok
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vetenskaplig artikel
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videnskabelig artikel
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vědecký článek
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name
Mapping quantitative trait loci by controlling polygenic background effects
@en
Mapping quantitative trait loci by controlling polygenic background effects.
@nl
type
label
Mapping quantitative trait loci by controlling polygenic background effects
@en
Mapping quantitative trait loci by controlling polygenic background effects.
@nl
prefLabel
Mapping quantitative trait loci by controlling polygenic background effects
@en
Mapping quantitative trait loci by controlling polygenic background effects.
@nl
P2860
P1433
P1476
Mapping quantitative trait loci by controlling polygenic background effects
@en
P2093
Shizhong Xu
P2860
P304
P356
10.1534/GENETICS.113.157032
P407
P577
2013-09-27T00:00:00Z