Franzo Giovanni, Legnardi Matteo, Faustini Giulia, Tucciarone Claudia Maria, Cecchinato Mattia
Department of Animal Medicine, Production and Health (MAPS), University of Padua, 35020 Legnaro, Italy.
Animals (Basel). 2023 May 30;13(11):1804. doi: 10.3390/ani13111804.
In future decades, the demand for poultry meat and eggs is predicted to considerably increase in pace with human population growth. Although this expansion clearly represents a remarkable opportunity for the sector, it conceals a multitude of challenges. Pollution and land erosion, competition for limited resources between animal and human nutrition, animal welfare concerns, limitations on the use of growth promoters and antimicrobial agents, and increasing risks and effects of animal infectious diseases and zoonoses are several topics that have received attention from authorities and the public. The increase in poultry production must be achieved mainly through optimization and increased efficiency. The increasing ability to generate large amounts of data ("big data") is pervasive in both modern society and the farming industry. Information accessibility-coupled with the availability of tools and computational power to store, share, integrate, and analyze data with automatic and flexible algorithms-offers an unprecedented opportunity to develop tools to maximize farm profitability, reduce socio-environmental impacts, and increase animal and human health and welfare. A detailed description of all topics and applications of big data analysis in poultry farming would be infeasible. Therefore, the present work briefly reviews the application of sensor technologies, such as optical, acoustic, and wearable sensors, as well as infrared thermal imaging and optical flow, to poultry farming. The principles and benefits of advanced statistical techniques, such as machine learning and deep learning, and their use in developing effective and reliable classification and prediction models to benefit the farming system, are also discussed. Finally, recent progress in pathogen genome sequencing and analysis is discussed, highlighting practical applications in epidemiological tracking, and reconstruction of microorganisms' population dynamics, evolution, and spread. The benefits of the objective evaluation of the effectiveness of applied control strategies are also considered. Although human-artificial intelligence collaborations in the livestock sector can be frightening because they require farmers and employees in the sector to adapt to new roles, challenges, and competencies-and because several unknowns, limitations, and open-ended questions are inevitable-their overall benefits appear to be far greater than their drawbacks. As more farms and companies connect to technology, artificial intelligence (AI) and sensing technologies will begin to play a greater role in identifying patterns and solutions to pressing problems in modern animal farming, thus providing remarkable production-based and commercial advantages. Moreover, the combination of diverse sources and types of data will also become fundamental for the development of predictive models able to anticipate, rather than merely detect, disease occurrence. The increasing availability of sensors, infrastructures, and tools for big data collection, storage, sharing, and analysis-together with the use of open standards and integration with pathogen molecular epidemiology-have the potential to address the major challenge of producing higher-quality, more healthful food on a larger scale in a more sustainable manner, thereby protecting ecosystems, preserving natural resources, and improving animal and human welfare and health.
在未来几十年,预计禽肉和禽蛋的需求将随着人口增长而大幅增加。尽管这种扩张显然为该行业带来了显著机遇,但也隐藏着众多挑战。污染和土地侵蚀、动物营养与人类营养对有限资源的竞争、动物福利问题、生长促进剂和抗菌剂使用的限制,以及动物传染病和人畜共患病风险及影响的增加,都是受到当局和公众关注的一些话题。家禽产量的增加必须主要通过优化和提高效率来实现。在现代社会和养殖业中,生成大量数据(“大数据”)的能力不断增强已十分普遍。信息的可获取性,再加上具备用自动灵活算法存储、共享、整合和分析数据的工具及计算能力,为开发工具提供了前所未有的机遇,以实现农场利润最大化、减少社会环境影响,并增进动物和人类的健康与福利。对大数据分析在家禽养殖中的所有主题和应用进行详细描述是不可行的。因此,本研究简要回顾了光学、声学和可穿戴传感器等传感技术,以及红外热成像和光流技术在家禽养殖中的应用。还讨论了机器学习和深度学习等先进统计技术的原理和优势,以及它们在开发有效可靠的分类和预测模型以造福养殖系统方面的应用。最后,讨论了病原体基因组测序和分析的最新进展,重点介绍了在流行病学追踪以及微生物种群动态、进化和传播重建中的实际应用。还考虑了对应用控制策略有效性进行客观评估的益处。尽管畜牧业中的人机协作可能令人担忧,因为这要求该行业的农民和员工适应新角色、新挑战和新能力,而且不可避免地存在一些未知因素、限制和开放性问题,但其总体益处似乎远大于弊端。随着越来越多的农场和公司接入技术,人工智能(AI)和传感技术将开始在识别现代畜牧业紧迫问题的模式和解决方案方面发挥更大作用,并因此带来显著的基于生产和商业的优势。此外,多样的数据来源和类型的组合对于开发能够预测而非仅仅检测疾病发生的预测模型也将变得至关重要。传感器、基础设施以及用于大数据收集、存储、共享和分析的工具的日益普及,再加上开放标准的使用以及与病原体分子流行病学的整合,有可能以更可持续的方式大规模应对生产更高质量、更健康食品这一重大挑战,从而保护生态系统、保护自然资源,并改善动物和人类的福利与健康。