INRA, UMR1348 Physiologie, Environnement et Génétique pour l'Animal et les Systèmes d'Élevage, F-35590 Saint-Gilles, France.
Animal. 2013 Aug;7(8):1332-43. doi: 10.1017/S1751731113000335. Epub 2013 Mar 25.
To simulate the consequences of management in dairy herds, the use of individual-based herd models is very useful and has become common. Reproduction is a key driver of milk production and herd dynamics, whose influence has been magnified by the decrease in reproductive performance over the last decades. Moreover, feeding management influences milk yield (MY) and body reserves, which in turn influence reproductive performance. Therefore, our objective was to build an up-to-date animal reproduction model sensitive to both MY and body condition score (BCS). A dynamic and stochastic individual reproduction model was built mainly from data of a single recent long-term experiment. This model covers the whole reproductive process and is composed of a succession of discrete stochastic events, mainly calving, ovulations, conception and embryonic loss. Each reproductive step is sensitive to MY or BCS levels or changes. The model takes into account recent evolutions of reproductive performance, particularly concerning calving-to-first ovulation interval, cyclicity (normal cycle length, prevalence of prolonged luteal phase), oestrus expression and pregnancy (conception, early and late embryonic loss). A sensitivity analysis of the model to MY and BCS at calving was performed. The simulated performance was compared with observed data from the database used to build the model and from the bibliography to validate the model. Despite comprising a whole series of reproductive steps, the model made it possible to simulate realistic global reproduction outputs. It was able to well simulate the overall reproductive performance observed in farms in terms of both success rate (recalving rate) and reproduction delays (calving interval). This model has the purpose to be integrated in herd simulation models to usefully test the impact of management strategies on herd reproductive performance, and thus on calving patterns and culling rates.
为了模拟奶牛场管理的后果,使用基于个体的牛群模型非常有用,并且已经变得很普遍。繁殖是牛奶生产和牛群动态的关键驱动因素,近几十年来繁殖性能的下降放大了其影响。此外,饲养管理会影响产奶量(MY)和体储备,而体储备反过来又会影响繁殖性能。因此,我们的目标是建立一个对 MY 和体况评分(BCS)都敏感的最新动物繁殖模型。一个动态和随机的个体繁殖模型主要是基于最近的一个长期实验的数据建立的。该模型涵盖了整个繁殖过程,由一系列离散的随机事件组成,主要是分娩、排卵、受孕和胚胎损失。每个繁殖步骤都对 MY 或 BCS 水平或变化敏感。该模型考虑了繁殖性能的最新变化,特别是涉及产犊至第一次排卵间隔、周期性(正常周期长度、黄体期延长的流行率)、发情表达和妊娠(受孕、早期和晚期胚胎损失)。对模型在分娩时对 MY 和 BCS 的敏感性进行了分析。模拟性能与用于构建模型的数据库和文献中的观察数据进行了比较,以验证模型。尽管该模型包含一系列繁殖步骤,但它能够模拟出真实的整体繁殖结果。它能够很好地模拟农场中观察到的整体繁殖性能,无论是在成功率(复发性)还是繁殖延迟(产犊间隔)方面。该模型的目的是集成到牛群模拟模型中,以有效地测试管理策略对牛群繁殖性能的影响,从而影响产犊模式和淘汰率。