Beyond the hype: using AI, big data, wearable devices, and the internet of things for high-throughput livestock phenotyping

Author:

Klingström Tomas1ORCID,Zonabend König Emelie2,Zwane Avhashoni Agnes34

Affiliation:

1. Department of Animal Biosciences, Swedish University of Agricultural Sciences , Uppsala , Sweden

2. SLU Global, Swedish University of Agricultural Sciences , Uppsala , Sweden

3. Department of Biochemistry , Genetics and Microbiology, , Pretoria , South Africa

4. University of Pretoria , Genetics and Microbiology, , Pretoria , South Africa

Abstract

Abstract Phenotyping of animals is a routine task in agriculture which can provide large datasets for the functional annotation of genomes. Using the livestock farming sector to study complex traits enables genetics researchers to fully benefit from the digital transformation of society as economies of scale substantially reduces the cost of phenotyping animals on farms. In the agricultural sector genomics has transitioned towards a model of ‘Genomics without the genes’ as a large proportion of the genetic variation in animals can be modelled using the infinitesimal model for genomic breeding valuations. Combined with third generation sequencing creating pan-genomes for livestock the digital infrastructure for trait collection and precision farming provides a unique opportunity for high-throughput phenotyping and the study of complex traits in a controlled environment. The emphasis on cost efficient data collection mean that mobile phones and computers have become ubiquitous for cost-efficient large-scale data collection but that the majority of the recorded traits can still be recorded manually with limited training or tools. This is especially valuable in low- and middle income countries and in settings where indigenous breeds are kept at farms preserving more traditional farming methods. Digitalization is therefore an important enabler for high-throughput phenotyping for smaller livestock herds with limited technology investments as well as large-scale commercial operations. It is demanding and challenging for individual researchers to keep up with the opportunities created by the rapid advances in digitalization for livestock farming and how it can be used by researchers with or without a specialization in livestock. This review provides an overview of the current status of key enabling technologies for precision livestock farming applicable for the functional annotation of genomes.

Funder

Livestock Genetics Flagship of the Livestock CGIAR Research Program

Publisher

Oxford University Press (OUP)

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