Emsen Ebru, Kutluca Korkmaz Muzeyyen, Odevci Bahadir Baran
Department of Integrative Agriculture, College of Agriculture and Veterinary Medicine, United Arab Emirates University, Al Ain P.O. Box 15551, United Arab Emirates.
Department of Animal Science, Faculty of Agriculture, Malatya Turgut Ozal University, 44210 Malatya, Turkey.
Animals (Basel). 2025 Jul 17;15(14):2110. doi: 10.3390/ani15142110.
Reproductive efficiency is a critical determinant of productivity and profitability in sheep farming. Traditional selection methods have largely relied on phenotypic traits and historical reproductive records, which are often limited by subjectivity and delayed feedback. Recent advancements in artificial intelligence (AI), including video tracking, wearable sensors, and machine learning (ML) algorithms, offer new opportunities to identify behavior-based indicators linked to key reproductive traits such as estrus, lambing, and maternal behavior. This review synthesizes the current research on AI-powered behavioral monitoring tools and proposes a conceptual model, ReproBehaviorNet, that maps age- and sex-specific behaviors to biological processes and AI applications, supporting real-time decision-making in both intensive and semi-intensive systems. The integration of accelerometers, GPS systems, and computer vision models enables continuous, non-invasive monitoring, leading to earlier detection of reproductive events and greater breeding precision. However, the implementation of such technologies also presents challenges, including the need for high-quality data, a costly infrastructure, and technical expertise that may limit access for small-scale producers. Despite these barriers, AI-assisted behavioral phenotyping has the potential to improve genetic progress, animal welfare, and sustainability. Interdisciplinary collaboration and responsible innovation are essential to ensure the equitable and effective adoption of these technologies in diverse farming contexts.
繁殖效率是养羊业生产力和盈利能力的关键决定因素。传统的选择方法很大程度上依赖于表型特征和历史繁殖记录,而这些往往受到主观性和反馈延迟的限制。人工智能(AI)的最新进展,包括视频跟踪、可穿戴传感器和机器学习(ML)算法,为识别与发情、产羔和母性行为等关键繁殖特征相关的基于行为的指标提供了新机会。本综述综合了当前关于人工智能驱动的行为监测工具的研究,并提出了一个概念模型ReproBehaviorNet,该模型将特定年龄和性别的行为映射到生物过程和人工智能应用,支持集约化和半集约化系统中的实时决策。加速度计、GPS系统和计算机视觉模型的集成实现了连续、非侵入性监测,从而能够更早地检测繁殖事件并提高繁殖精度。然而,这些技术的实施也带来了挑战,包括需要高质量数据、昂贵的基础设施以及可能限制小规模生产者获取的技术专业知识。尽管存在这些障碍,人工智能辅助的行为表型分析仍有潜力改善遗传进展、动物福利和可持续性。跨学科合作和负责任的创新对于确保这些技术在不同养殖环境中公平、有效地应用至关重要。