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Gene expression and RNA splicing explain large proportions of the heritability for complex traits in cattle.


ABSTRACT: Many quantitative trait loci (QTLs) are in non-coding regions. Therefore, QTLs are assumed to affect gene regulation. Gene expression and RNA splicing are primary steps of transcription, so DNA variants changing gene expression (eVariants) or RNA splicing (sVariants) are expected to significantly affect phenotypes. We quantify the contribution of eVariants and sVariants detected from 16 tissues (n = 4,725) to 37 traits of ∼120,000 cattle (average magnitude of genetic correlation between traits = 0.13). Analyzed in Bayesian mixture models, averaged across 37 traits, cis and trans eVariants and sVariants detected from 16 tissues jointly explain 69.2% (SE = 0.5%) of heritability, 44% more than expected from the same number of random variants. This 69.2% includes an average of 24% from trans e-/sVariants (14% more than expected). Averaged across 56 lipidomic traits, multi-tissue cis and trans e-/sVariants also explain 71.5% (SE = 0.3%) of heritability, demonstrating the essential role of proximal and distal regulatory variants in shaping mammalian phenotypes.

SUBMITTER: Xiang R 

PROVIDER: S-EPMC10589627 | biostudies-literature | 2023 Oct

REPOSITORIES: biostudies-literature

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Gene expression and RNA splicing explain large proportions of the heritability for complex traits in cattle.

Xiang Ruidong R   Fang Lingzhao L   Liu Shuli S   Macleod Iona M IM   Liu Zhiqian Z   Breen Edmond J EJ   Gao Yahui Y   Liu George E GE   Tenesa Albert A   Mason Brett A BA   Chamberlain Amanda J AJ   Wray Naomi R NR   Goddard Michael E ME  

Cell genomics 20230823 10


Many quantitative trait loci (QTLs) are in non-coding regions. Therefore, QTLs are assumed to affect gene regulation. Gene expression and RNA splicing are primary steps of transcription, so DNA variants changing gene expression (eVariants) or RNA splicing (sVariants) are expected to significantly affect phenotypes. We quantify the contribution of eVariants and sVariants detected from 16 tissues (n = 4,725) to 37 traits of ∼120,000 cattle (average magnitude of genetic correlation between traits =  ...[more]

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