Inferring the Partial Correlation Structure of Allelic Effects and Incorporating it in Genome-wide Prediction
Carlos A. Mart\'inez, Kshitij Khare, Syed Rahman, Mauricio A. Elzo

TL;DR
This paper introduces novel statistical methods for genome-wide prediction that infer and incorporate the partial correlation structure of marker effects, improving understanding of genetic relationships and prediction accuracy.
Contribution
The paper develops Bayesian and frequentist methods based on Gaussian models to estimate the partial correlation structure of marker effects for genome-wide prediction, a novel approach in this context.
Findings
Methods accurately recover partial correlation structure and precision matrix.
CONCORD-EM and Bayes G-Sel outperform others in structure estimation.
Proposed methods enhance biological understanding and prediction of genetic traits.
Abstract
In this study, we addressed the problem of genome-wide prediction accounting for partial correlation of marker effects when the partial correlation structure, or equivalently, the pattern of zeros of the precision matrix is unknown. This problem requires estimating the partial correlation structure of marker effects, that is, learning the pattern of zeros of the corresponding precision matrix, estimating its non-null entries, and incorporating the inferred concentration matrix in the prediction of marker allelic effects. To this end, we developed a set of statistical methods based on Gaussian concentration graph models (GCGM) and Gaussian directed acyclic graph models (GDAGM) that adapt the existing theory to perform covariance model selection (GCGM) or DAG selection (GDAGM) to genome-wide prediction. Bayesian and frequentist approaches were formulated. Our frequentist formulations…
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Taxonomy
TopicsGenetic and phenotypic traits in livestock · Genetic Mapping and Diversity in Plants and Animals · Genetic Associations and Epidemiology
