Adding gene transcripts into genomic prediction improves accuracy and reveals sampling time dependence

Author:

Perez Bruno C1ORCID,Bink Marco C A M1ORCID,Svenson Karen L2ORCID,Churchill Gary A2ORCID,Calus Mario P L3ORCID

Affiliation:

1. Hendrix Genetics B.V., Research and Technology Center (RTC) , 5830 AC Boxmeer, The Netherlands

2. The Jackson Laboratory , Bar Harbor, ME 04609, USA

3. Animal Breeding and Genomics, Wageningen University & Research , 6700 AH Wageningen, The Netherlands

Abstract

Abstract Recent developments allowed generating multiple high-quality ‘omics’ data that could increase the predictive performance of genomic prediction for phenotypes and genetic merit in animals and plants. Here, we have assessed the performance of parametric and nonparametric models that leverage transcriptomics in genomic prediction for 13 complex traits recorded in 478 animals from an outbred mouse population. Parametric models were implemented using the best linear unbiased prediction, while nonparametric models were implemented using the gradient boosting machine algorithm. We also propose a new model named GTCBLUP that aims to remove between-omics-layer covariance from predictors, whereas its counterpart GTBLUP does not do that. While gradient boosting machine models captured more phenotypic variation, their predictive performance did not exceed the best linear unbiased prediction models for most traits. Models leveraging gene transcripts captured higher proportions of the phenotypic variance for almost all traits when these were measured closer to the moment of measuring gene transcripts in the liver. In most cases, the combination of layers was not able to outperform the best single-omics models to predict phenotypes. Using only gene transcripts, the gradient boosting machine model was able to outperform best linear unbiased prediction for most traits except body weight, but the same pattern was not observed when using both single nucleotide polymorphism genotypes and gene transcripts. Although the GTCBLUP model was not able to produce the most accurate phenotypic predictions, it showed the highest accuracies for breeding values for 9 out of 13 traits. We recommend using the GTBLUP model for prediction of phenotypes and using the GTCBLUP for prediction of breeding values.

Funder

European Union’s Horizon 2020 research and innovation programme

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Genetics (clinical),Genetics,Molecular Biology

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