| Literature DB >> 31812939 |
Saleh Shahinfar1, Hawlader A Al-Mamun2, Byoungho Park3, Sidong Kim3, Cedric Gondro4.
Abstract
Pricing of Hanwoo beef in the Korean market is primarily based on meat quality, and particularly on marbling score. The ability to accurately predict marbling score early in the life of an animal is extremely valuable for producers to meet the requirements of their target market, and for genetic selection. A total of 3989 Korean Hanwoo cattle (2108 with 50 k SNP genotypes) and 45 phenotypic features were available for this study. Four machine learning (ML) algorithms were applied to predict six carcass traits and compared against linear regression prediction models. In most scenarios, SMO was the best performing algorithm. The most and least accurately predicted traits were carcass weight and marbling score with correlation of 0.95 and 0.64 respectively. Additionally, the value of using a synthetic minority over-sampling technique (SMOTE) was evaluated and results showed a slight improvement in the prediction error of marbling score. Machine Learning approaches can be useful tools to predict important carcass traits in beef cattle.Entities:
Keywords: Carcass traits; GWAS; Genetic algorithm; Hanwoo Beef Cattle; Machine learning; Marbling score; SMOTE
Year: 2019 PMID: 31812939 DOI: 10.1016/j.meatsci.2019.107997
Source DB: PubMed Journal: Meat Sci ISSN: 0309-1740 Impact factor: 5.209