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Insight into Genome-Wide Associations of Growth Trajectories Using a Hierarchical Non-Linear Mixed Model
by
Yang, Runqing
, Zhang, Ying
, Yang, Li’ang
, Cui, Weiguo
in
Animal breeding
/ Association analysis
/ Body weight
/ Computer applications
/ computing efficiency
/ Efficiency
/ Eigenvectors
/ Genetic markers
/ Genetic transformation
/ genome-wide association analysis
/ Genomes
/ Genomic analysis
/ Growth curves
/ Growth models
/ Growth patterns
/ growth trajectory
/ hierarchical non-linear mixed model
/ Medical research
/ multivariate mixed model
/ Phenotypes
/ Polynomials
/ Population genetics
/ Population growth
/ Quantitative trait loci
2026
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Insight into Genome-Wide Associations of Growth Trajectories Using a Hierarchical Non-Linear Mixed Model
by
Yang, Runqing
, Zhang, Ying
, Yang, Li’ang
, Cui, Weiguo
in
Animal breeding
/ Association analysis
/ Body weight
/ Computer applications
/ computing efficiency
/ Efficiency
/ Eigenvectors
/ Genetic markers
/ Genetic transformation
/ genome-wide association analysis
/ Genomes
/ Genomic analysis
/ Growth curves
/ Growth models
/ Growth patterns
/ growth trajectory
/ hierarchical non-linear mixed model
/ Medical research
/ multivariate mixed model
/ Phenotypes
/ Polynomials
/ Population genetics
/ Population growth
/ Quantitative trait loci
2026
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Do you wish to request the book?
Insight into Genome-Wide Associations of Growth Trajectories Using a Hierarchical Non-Linear Mixed Model
by
Yang, Runqing
, Zhang, Ying
, Yang, Li’ang
, Cui, Weiguo
in
Animal breeding
/ Association analysis
/ Body weight
/ Computer applications
/ computing efficiency
/ Efficiency
/ Eigenvectors
/ Genetic markers
/ Genetic transformation
/ genome-wide association analysis
/ Genomes
/ Genomic analysis
/ Growth curves
/ Growth models
/ Growth patterns
/ growth trajectory
/ hierarchical non-linear mixed model
/ Medical research
/ multivariate mixed model
/ Phenotypes
/ Polynomials
/ Population genetics
/ Population growth
/ Quantitative trait loci
2026
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Insight into Genome-Wide Associations of Growth Trajectories Using a Hierarchical Non-Linear Mixed Model
Journal Article
Insight into Genome-Wide Associations of Growth Trajectories Using a Hierarchical Non-Linear Mixed Model
2026
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Overview
In applying a hierarchical mixed model to genome-wide association analysis (GWAS) of longitudinal data, dimensionality reduction through modeling repeated measurements improves both computational efficiency and statistical power. Legendre polynomials can flexibly fit population growth trajectories, but higher orders substantially increase computational complexity. Instead of using Legendre polynomials, we first estimated fewer individual-specific parameters using biologically meaningful non-linear models and then associated these phenotypic regressions with genetic markers using a multivariate linear mixed model (mvLMM). After performing a canonical transformation of the regressions based on the pre-estimated covariance matrices under the null genomic mvLMM, we decomposed the mvLMM into mutually independent univariate models and incorporated EMMAX to enable rapid genome-wide mixed-model associations for each transformed phenotype. Simulations for longitudinal association analysis in maize and GWAS for the growth trajectories of body weights in mice demonstrated the advantages of hierarchical non-linear mixed models in computing efficiency and statistical power for detecting quantitative trait loci (QTL), compared with mvLMM for multiple growth points and the hierarchical random regression model using Legendre polynomials as sub-models.
Publisher
MDPI AG,Multidisciplinary Digital Publishing Institute (MDPI)
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