首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Correlation of sensory bitterness in dairy protein hydrolysates: Comparison of prediction models built using sensory, chromatographic and electronic tongue data
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Correlation of sensory bitterness in dairy protein hydrolysates: Comparison of prediction models built using sensory, chromatographic and electronic tongue data

机译:乳蛋白水解物中感官苦味的相关性:使用感官,色谱和电子舌头数据建立的预测模型的比较

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摘要

Sensory evaluation can be problematic for ingredients with a bitter taste during research and development phase of new food products. In this study, 19 dairy protein hydrolysates (DPH) were analysed by an electronic tongue and their physicochemical characteristics, the data obtained from these methods were correlated with their bitterness intensity as scored by a trained sensory panel and each model was also assessed by its predictive capabilities. The physiochemical characteristics of the DPHs investigated were degree of hydrolysis (DH%), and data relating to peptide size and relative hydro- phobicity from size exclusion chromatography (SEC) and reverse phase (RP) HPLC. Partial least square regression (PLS) was used to construct the prediction models. All PLS regressions had good correlations (0.78 to 0.93) with the strongest being the combination of data obtained from SEC and RP HPLC. However, the PLS with the strongest predictive power was based on the e-tongue which had the PLS regression with the lowest root mean predicted residual error sum of squares (PRESS) in the study. The results show that the PLS models constructed with the e-tongue and the combination of SEC and RP-HPLC has potential to be used for prediction of bitterness and thus reducing the reliance on sensory analysis in DPHs for future food research.
机译:在新食品的研发阶段,对于味苦的成分,感官评估可能会出现问题。在这项研究中,通过电子舌分析了19种乳蛋白水解物(DPH)及其理化特性,将这些方法获得的数据与经过训练的感官小组评分的苦味强度相关联,并且还通过其预测性评估了每种模型能力。研究的DPH的理化特性为水解度(DH%),以及大小排阻色谱法(SEC)和反相(RP)HPLC中与肽大小和相对疏水性有关的数据。使用偏最小二乘回归(PLS)来构建预测模型。所有PLS回归均具有良好的相关性(0.78至0.93),其中最强的是从SEC和RP HPLC获得的数据的组合。但是,具有最强预测能力的PLS是基于电子舌的,在研究中,电子舌具有最小均方根预测残留误差平方和(PRESS)的PLS回归。结果表明,用电子舌以及SEC和RP-HPLC组合构建的PLS模型有潜力用于预测苦味,从而减少了对DPH中感官分析的依赖,以用于未来的食品研究。

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