MegaLMM: Mega-scale linear mixed models for genomic predictions with thousands of traits
Daniel E. Runcie, Jiayi Qu, Hao Cheng, Lorin Crawford
Abstract
Large-scale phenotype data can enhance the power of genomic prediction in plant and animal breeding, as well as human genetics. However, the statistical foundation of multi-trait genomic prediction is based on the multivariate linear mixed effect model, a tool notorious for its fragility when applied to more than a handful of traits. We present MegaLMM, a statistical framework and associated software package for mixed model analyses of a virtually unlimited number of traits. Using three examples with real plant data, we show that MegaLMM can leverage thousands of traits at once to significantly improve genetic value prediction accuracy.
Topics & Concepts
BiologyMixed modelTraitLeverage (statistics)Human geneticsComputational biologyLinear modelGeneralized linear mixed modelQuantitative trait locusGenomic selectionR packageBest linear unbiased predictionScale (ratio)Evolutionary biologyGeneticsStatisticsMachine learningComputer scienceSelection (genetic algorithm)GenotypeMathematicsGeneCartographyProgramming languageSingle-nucleotide polymorphismGeographyGenetic and phenotypic traits in livestockGenetic Mapping and Diversity in Plants and AnimalsGenetics and Plant Breeding