回顾传统和机器学习方法在动物育种中的应用。

IF 4.3 2区 农林科学 Q1 VETERINARY SCIENCES
Shadi Nayeri, Mehdi Sargolzaei, Dan Tulpan
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引用次数: 25

摘要

当前的畜牧业管理格局正在向高通量数字时代过渡,在这个时代,光电、声学、机械和生物传感器系统捕获的大量信息每天和每小时被存储和分析,并根据定量和定性分析结果做出可操作的决策。虽然直到最近,传统的动物育种预测方法已经取得了巨大的成功,但大量的信息开始造成计算和存储瓶颈,如果处理不当,可能会对畜群管理策略产生负面的长期影响。大量的机器学习方法,成功地应用于各种工业和科学应用,在牲畜育种技术的主流方法中取得了进展,目前的结果表明,这些方法有可能匹配或超越传统方法,而大多数时候,从计算和存储的角度来看,它们更具可扩展性。本文简要介绍了目前在畜禽养殖领域使用的传统和新型预测方法,以及它们的成功程度,以及在新的数字农业时代该领域的未来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of traditional and machine learning methods applied to animal breeding.

The current livestock management landscape is transitioning to a high-throughput digital era where large amounts of information captured by systems of electro-optical, acoustical, mechanical, and biosensors is stored and analyzed on a daily and hourly basis, and actionable decisions are made based on quantitative and qualitative analytic results. While traditional animal breeding prediction methods have been used with great success until recently, the deluge of information starts to create a computational and storage bottleneck that could lead to negative long-term impacts on herd management strategies if not handled properly. A plethora of machine learning approaches, successfully used in various industrial and scientific applications, made their way in the mainstream approaches for livestock breeding techniques, and current results show that such methods have the potential to match or surpass the traditional approaches, while most of the time they are more scalable from a computational and storage perspective. This article provides a succinct view on what traditional and novel prediction methods are currently used in the livestock breeding field, how successful they are, and how the future of the field looks in the new digital agriculture era.

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来源期刊
Animal Health Research Reviews
Animal Health Research Reviews VETERINARY SCIENCES-
CiteScore
6.70
自引率
0.00%
发文量
8
期刊介绍: Animal Health Research Reviews provides an international forum for the publication of reviews and commentaries on all aspects of animal health. Papers include in-depth analyses and broader overviews of all facets of health and science in both domestic and wild animals. Major subject areas include physiology and pharmacology, parasitology, bacteriology, food and environmental safety, epidemiology and virology. The journal is of interest to researchers involved in animal health, parasitologists, food safety experts and academics interested in all aspects of animal production and welfare.
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