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首页> 外文期刊>Grasas y aceites >Predicting Acorn-Grass Weight Gain Index using non-destructive Near Infrared Spectroscopy in order to classify Iberian pig carcasses according to feeding regime
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Predicting Acorn-Grass Weight Gain Index using non-destructive Near Infrared Spectroscopy in order to classify Iberian pig carcasses according to feeding regime

机译:使用非破坏性近红外光谱法预测橡子草增重指数,以便根据喂养方式对伊比利亚猪pig体进行分类

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The classification of Iberian pig carcasses into different commercial categories according to feeding regime was evaluated by means of a non-destructive analysis of the subcutaneous adipose tissue using Near Infrared Spectroscopy (NIRS). A quantitative approach was used to predict the Acorn-Grass Weight Gain Index (AGWGI), and a set of criteria was established for commercial classification purposes. A total of 719 animals belonging to various batches, reflecting a wide range of feeding regimes, production systems and years, were analyzed with a view to developing and evaluating quantitative NIRS models. Results for the external validation of these models indicate that NIRS made clear differentiation of batches as a function of three feeding regimes possible with high accuracy ( Acorn, Recebo and Feed ), on the basis of the mean representative spectra of each batch. Moreover, individual analysis of the animals showed a broad consensus between field inspection information and the classification based on the AGWGI NIRS prediction, especially for extreme categories ( Acorn and Feed ).
机译:通过使用近红外光谱法(NIRS)对皮下脂肪组织进行非破坏性分析,评估了伊比利亚猪cas体根据进食方式分为不同的商业类别。定量方法用于预测橡子草增重指数(AGWGI),并建立了一套用于商业分类目的的标准。为了开发和评估定量的NIRS模型,共分析了719种不同批次的动物,它们反映了广泛的喂养方式,生产系统和年限。这些模型的外部验证结果表明,NIRS根据每批的平均代表性光谱,根据三种进料方式(Acorn,Recebo和Feed)可以对批料进行清晰的区分。此外,对动物的单独分析显示,现场检查信息与基于AGWGI NIRS预测的分类之间存在广泛共识,尤其是对于极端类别(橡子和饲料)。

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