Literature DB >> 33552126

Prior Biological Knowledge Improves Genomic Prediction of Growth-Related Traits in Arabidopsis thaliana.

Muhammad Farooq1,2, Aalt D J van Dijk1,3, Harm Nijveen1, Mark G M Aarts4, Willem Kruijer3, Thu-Phuong Nguyen4, Shahid Mansoor2, Dick de Ridder1.   

Abstract

Prediction of growth-related complex traits is highly important for crop breeding. Photosynthesis efficiency and biomass are direct indicators of overall plant performance and therefore even minor improvements in these traits can result in significant breeding gains. Crop breeding for complex traits has been revolutionized by technological developments in genomics and phenomics. Capitalizing on the growing availability of genomics data, genome-wide marker-based prediction models allow for efficient selection of the best parents for the next generation without the need for phenotypic information. Until now such models mostly predict the phenotype directly from the genotype and fail to make use of relevant biological knowledge. It is an open question to what extent the use of such biological knowledge is beneficial for improving genomic prediction accuracy and reliability. In this study, we explored the use of publicly available biological information for genomic prediction of photosynthetic light use efficiency (Φ PSII ) and projected leaf area (PLA) in Arabidopsis thaliana. To explore the use of various types of knowledge, we mapped genomic polymorphisms to Gene Ontology (GO) terms and transcriptomics-based gene clusters, and applied these in a Genomic Feature Best Linear Unbiased Predictor (GFBLUP) model, which is an extension to the traditional Genomic BLUP (GBLUP) benchmark. Our results suggest that incorporation of prior biological knowledge can improve genomic prediction accuracy for both Φ PSII and PLA. The improvement achieved depends on the trait, type of knowledge and trait heritability. Moreover, transcriptomics offers complementary evidence to the Gene Ontology for improvement when used to define functional groups of genes. In conclusion, prior knowledge about trait-specific groups of genes can be directly translated into improved genomic prediction.
Copyright © 2021 Farooq, van Dijk, Nijveen, Aarts, Kruijer, Nguyen, Mansoor and de Ridder.

Entities:  

Keywords:  Arabidopsis thaliana (Arabidopsis); GBLUP; GFBLUP; genomic prediction (GP); phenomics data analysis; photosynthesis

Year:  2021        PMID: 33552126      PMCID: PMC7855462          DOI: 10.3389/fgene.2020.609117

Source DB:  PubMed          Journal:  Front Genet        ISSN: 1664-8021            Impact factor:   4.599


  61 in total

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9.  Genomic Prediction of Breeding Values Using a Subset of SNPs Identified by Three Machine Learning Methods.

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Journal:  Front Genet       Date:  2018-07-04       Impact factor: 4.599

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Journal:  BMC Genomics       Date:  2022-06-07       Impact factor: 4.547

  1 in total

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