2023
DOI: 10.1111/asj.13883
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Application of linear and machine learning models to genomic prediction of fatty acid composition in Japanese Black cattle

Motohide Nishio,
Keiichi Inoue,
Aisaku Arakawa
et al.

Abstract: We collected 3180 records of oleic acid (C18:1) and monounsaturated fatty acid (MUFA) measured using gas chromatography (GC) and 6960 records of C18:1 and MUFA measured using near‐infrared spectroscopy (NIRS) in intermuscular fat samples of Japanese Black cattle. We compared genomic prediction performance for four linear models (genomic best linear unbiased prediction [GBLUP], kinship‐adjusted multiple loci [KAML], BayesC, and BayesLASSO) and five machine learning models (Gaussian kernel [GK], deep kernel [DK]… Show more

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