Computational Approaches In Livestock Breeding: A Review
Shoyombo, Ayoola John, Popoola, Mustapha Ayo, Kuusu, Doorumun Jacob, Yisah, Lasisi Jatto, Adebayo, Oluwaseyi Modupe, Yakubu, Hosea, Ndiomu, Ebiogeh Philip, and Moses, Ake A. (2024) Computational Approaches In Livestock Breeding: A Review. In: International Conference on Science Engineering and Business for Driving Sustainable Development Goals Seb4sdg 2024. From: SEB4SDG 2024: International Conference on Science, Engineering and Business for Driving Sustainable Development, 2-4 April 2024, Omu-Aran, Nigeria.
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Abstract
The integration of computational and genomic methodologies has instigated a transformation in the realm of livestock breeding, enabling the utilization of sophisticated data-driven techniques for the analysis of traits, prediction of breeding values, design of programs, and assessment of agro-environmental impacts. This paper provides an overview of seminal methodologies and applications across various domains that drive innovation. Genomic selection employs markers distributed throughout the genome and statistical algorithms to derive genomic estimated breeding values, thereby expediting genetic progress. Utilising sensors and AI for real-time monitoring can effectively prevent diseases and facilitate progress. The utilization of biosensors and artificial intelligence for real-time monitorinPreserving endangered species is facilitated by the utilization of high-throughput sequencing techniques. The utilization of machine learning and advanced algorithms in predictive modelling has demonstrated significant promise in the estimation of phenotypes, hence providing valuable guidance for breeding decisions. Additionally, data mining tools evaluate the impact of policies on livelihoods and food security. Existing challenges in implementing integrated computational pipelines in the field and the uncertainty surrounding long-term implications at multiple levels underscore the need for further research. In conclusion, the fusion of biotechnology, advanced statistical genomics, and computational analytics has ushered in an era of precision livestock improvement driven by data, enabling a detailed analysis of the genetic factors that underlie complex traits. This presents unprecedented opportunities to achieve a balance between productivity gains, environmental adaptability, and genetic conservation, thereby offering valuable scientific insights for sustainable agricultural intensification in the face of increasing protein demands and climatic uncertainty.
| Item ID: | 87471 |
|---|---|
| Item Type: | Conference Item (Research - E1) |
| ISBN: | 9798350358155 |
| Keywords: | artificial intelligence, computational approaches, genomic selection, livestock breeding, machine learning |
| Copyright Information: | © 2024 IEEE |
| Date Deposited: | 04 Dec 2025 02:34 |
| FoR Codes: | 46 INFORMATION AND COMPUTING SCIENCES > 4605 Data management and data science > 460501 Data engineering and data science @ 60% 30 AGRICULTURAL, VETERINARY AND FOOD SCIENCES > 3003 Animal production > 300305 Animal reproduction and breeding @ 40% |
| SEO Codes: | 10 ANIMAL PRODUCTION AND ANIMAL PRIMARY PRODUCTS > 1004 Livestock raising > 100499 Livestock raising not elsewhere classified @ 30% 22 INFORMATION AND COMMUNICATION SERVICES > 2204 Information systems, technologies and services > 220499 Information systems, technologies and services not elsewhere classified @ 70% |
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