Hocquette Jean-François, Van Wezemael Lynn, Chriki Sghaier, Legrand Isabelle, Verbeke Wim, Farmer Linda, Scollan Nigel D, Polkinghorne Rod, Rødbotten Rune, Allen Paul, Pethick David W
INRA, UMRH 1213, Unité de Recherches sur les Herbivores, Theix, 63122 Saint Genès Champanelle, France; VetAgro Sup, UMRH 1213, Unité de Recherches sur les Herbivores, Theix, 63122 Saint Genès Champanelle, France.
Ghent University, Department of Agricultural Economics, Coupure Links 653, B-9000 Ghent, Belgium.
Meat Sci. 2014 Jul;97(3):316-22. doi: 10.1016/j.meatsci.2013.07.031. Epub 2013 Aug 13.
Despite efforts by the industry to control the eating quality of beef, there remains a high level of variability in palatability, which is one reason for consumer dissatisfaction. In Europe, there is still no reliable on-line tool to predict beef quality and deliver consistent quality beef to consumers. Beef quality traits depend in part on the physical and chemical properties of the muscles. The determination of these properties (known as muscle profiling) will allow for more informed decisions to be made in the selection of individual muscles for the production of value-added products. Therefore, scientists and professional partners of the ProSafeBeef project have brought together all the data they have accumulated over 20 years. The resulting BIF-Beef (Integrated and Functional Biology of Beef) data warehouse contains available data of animal growth, carcass composition, muscle tissue characteristics and beef quality traits. This database is useful to determine the most important muscle characteristics associated with a high tenderness, a high flavour or generally a high quality. Another more consumer driven modelling tool was developed in Australia: the Meat Standards Australia (MSA) grading scheme that predicts beef quality for each individual muscle×specific cooking method combination using various information on the corresponding animals and post-slaughter processing factors. This system has also the potential to detect variability in quality within muscles. The MSA system proved to be effective in predicting beef palatability not only in Australia but also in many other countries. The results of the work conducted in Europe within the ProSafeBeef project indicate that it would be possible to manage a grading system in Europe similar to the MSA system. The combination of the different modelling approaches (namely muscle biochemistry and a MSA-like meat grading system adapted to the European market) is a promising area of research to improve the prediction of beef quality. In both approaches, the volume of data available not only provides statistically sound correlations between various factors and beef quality traits but also a better understanding of the variability of beef quality according to various criteria (breed, age, sex, pH, marbling etc.).
尽管该行业努力控制牛肉的食用品质,但适口性仍存在很大差异,这是导致消费者不满的原因之一。在欧洲,仍然没有可靠的在线工具来预测牛肉品质并向消费者提供品质稳定的牛肉。牛肉品质特性部分取决于肌肉的物理和化学性质。确定这些特性(即肌肉剖析)将有助于在选择用于生产增值产品的单个肌肉时做出更明智的决策。因此,ProSafeBeef项目的科学家和专业合作伙伴汇集了他们20多年来积累的所有数据。由此产生的BIF-牛肉(牛肉综合功能生物学)数据库包含动物生长、胴体组成、肌肉组织特征和牛肉品质特性的现有数据。该数据库有助于确定与高嫩度、高风味或总体高品质相关的最重要肌肉特征。澳大利亚开发了另一种更受消费者驱动的建模工具:澳大利亚肉类标准(MSA)分级系统,该系统使用有关相应动物和屠宰后加工因素的各种信息,预测每种单个肌肉×特定烹饪方法组合的牛肉品质。该系统还有潜力检测肌肉内部的品质差异。事实证明,MSA系统不仅在澳大利亚,而且在许多其他国家都能有效地预测牛肉适口性。在欧洲ProSafeBeef项目中开展的工作结果表明,在欧洲有可能管理一个类似于MSA系统的分级系统。不同建模方法(即肌肉生物化学和适用于欧洲市场的类似MSA的肉类分级系统)的结合是改善牛肉品质预测的一个有前景的研究领域。在这两种方法中,可用数据量不仅提供了各种因素与牛肉品质特性之间具有统计学意义的相关性,还能更好地理解牛肉品质根据各种标准(品种、年龄、性别、pH值、大理石花纹等)的变异性。