综述:基于数字图像的表型时代的基因组选择。

IF 4 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
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

摘要

促进可持续育种计划需要采取多种措施,包括基因组选择和连续数据记录。数字表型分析使用图像、视频和传感器数据来持续监测动物的活动和行为,如进食、行走和痛苦,同时还测量生产特征,如平均日增重、腰部深度和背部脂肪厚度。结合机器学习技术,任何感兴趣的特征都可以被提取出来,并用作基因组预测模型中的表型。它还可以帮助定义人类难以测量或昂贵的新表型。对于已经记录的性状,它可以增加额外的精度或降低表型成本。一个例子是猪的跛行,其中数字表型已经允许从分类评分系统转移到连续表型尺度,从而增加了遗传性和更大的选择潜力。此外,数字表型为在任何给定时间生成难以测量的行为性状的大型数据集提供了一种有效的方法,从而可以量化和理解它们与生产性状的关系,而生产性状可能以较低的频率记录。一个例子是猪的行走距离和平均日增重之间强烈的负遗传相关性。相反,尽管计算机视觉有所改进,但某些生产性状或胴体性状的表型准确性可能无法最大化。在这篇综述中,我们讨论了各种图像处理技术,为基因组评估模型准备数据,然后简要描述了目标检测和分割方法,包括模型选择和对最先进模型的目标特定修改。然后,我们介绍了各种物种的数字表型的现实应用,最后,我们提出了进一步的挑战。总的来说,数字表型是一种很有前途的工具,可以提高遗传增益率,促进可持续的基因组选择,降低表型成本。我们预见数字表型将大量纳入育种计划,使其成为主要的表型工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review: Genomic selection in the era of phenotyping based on digital images.

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.

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来源期刊
Animal
Animal 农林科学-奶制品与动物科学
CiteScore
7.50
自引率
2.80%
发文量
246
审稿时长
3 months
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.
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