M Billah, M Bermann, M K Hollifield, S Tsuruta, C Y Chen, E Psota, J Holl, I Misztal, D Lourenco
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引用次数: 0
Abstract
Promoting sustainable breeding programs requires several measures, including genomic selection and continuous data recording. Digital phenotyping uses images, videos, and sensor data to continuously monitor animal activity and behaviors, such as feeding, walking, and distress, while also measuring production traits like average daily gain, loin depth, and backfat thickness. Coupled with machine learning techniques, any feature of interest can be extracted and used as phenotypes in genomic prediction models. It can also help define novel phenotypes that are hard or expensive for humans to measure. For the already recorded traits, it may add extra precision or lower phenotyping costs. One example is lameness in pigs, where digital phenotyping has allowed moving from a categorical scoring system to a continuous phenotypic scale, resulting in increased heritability and greater selection potential. Additionally, digital phenotyping offers an effective approach for generating large datasets on difficult-to-measure behavioral traits at any given time, enabling the quantification and understanding of their relationships with production traits, which may be recorded at a less frequent basis. One example is the strong, negative genetic correlation between distance traveled and average daily gain in pigs. Conversely, despite improvements in computer vision, phenotype accuracy may not be maximized for some production or carcass traits. In this review, we discuss various image processing techniques to prepare the data for the genomic evaluation models, followed by a brief description of object detection and segmentation methodology, including model selection and objective-specific modifications to the state-of-the-art models. Then, we present real-life applications of digital phenotyping for various species, and finally, we provide further challenges. Overall, digital phenotyping is a promising tool to increase the rates of genetic gain, promote sustainable genomic selection, and lower phenotyping costs. We foresee a massive inclusion of digital phenotypes into breeding programs, making it the primary phenotyping tool.
期刊介绍:
Editorial board
animal attracts the best research in animal biology and animal systems from across the spectrum of the agricultural, biomedical, and environmental sciences. It is the central element in an exciting collaboration between the British Society of Animal Science (BSAS), Institut National de la Recherche Agronomique (INRA) and the European Federation of Animal Science (EAAP) and represents a merging of three scientific journals: Animal Science; Animal Research; Reproduction, Nutrition, Development. animal publishes original cutting-edge research, ''hot'' topics and horizon-scanning reviews on animal-related aspects of the life sciences at the molecular, cellular, organ, whole animal and production system levels. The main subject areas include: breeding and genetics; nutrition; physiology and functional biology of systems; behaviour, health and welfare; farming systems, environmental impact and climate change; product quality, human health and well-being. Animal models and papers dealing with the integration of research between these topics and their impact on the environment and people are particularly welcome.