Fallico V, McSweeney P L H, Siebert K J, Horne J, Carpino S, Licitra G
CoRFiLaC, Regione Siciliana, 97100 Ragusa, Italy.
J Dairy Sci. 2004 Oct;87(10):3138-52. doi: 10.3168/jds.S0022-0302(04)73449-9.
Chemometric modeling of peptide and free amino acid data was used to study proteolysis in Protected Denomination of Origin Ragusano cheese. Twelve cheeses ripened 3 to 7 mo were selected from local farmers and were analyzed in 4 layers: rind, external, middle, and internal. Proteolysis was significantly affected by cheese layer and age. Significant increases in nitrogen soluble in pH 4.6 acetate buffer and 12% trichloroacetic acid were found from rind to core and throughout ripening. Patterns of proteolysis by urea-PAGE showed that rind-to-core and age-related gradients of moisture and salt contents influenced coagulant and plasmin activities, as reflected in varying rates of hydrolysis of the caseins. Analysis of significant intercorrelations among chemical parameters revealed that moisture, more than salt content, had the largest single influence on rates of proteolysis. Lower levels of 70% ethanol-insoluble peptides coupled to higher levels of 70% ethanol-soluble peptides were found by reversed phase-HPLC in the innermost cheese layers and as the cheeses aged. Non-significant increases of individual free amino acids were found with cheese age and layer. Total free amino acids ranged from 14.3 mg/g (6.2% of total protein) at 3 mo to 22.0 mg/g (8.4% of total protein) after 7 mo. Glutamic acid had the largest concentration in all samples at each time and, jointly with lysine and leucine, accounted for 48% of total free amino acids. Principal components analysis and hierarchical cluster analysis of the data from reversed phase-HPLC chromatograms and free amino acids analysis showed that the peptide profiles were more useful in differentiating Ragusano cheese by age and farm origin than the amino acid data. Combining free amino acid and peptide data resulted in the best partial least squares regression model (R(2) = 0.976; Q(2) = 0.952) predicting cheese age, even though the peptide data alone led to a similarly precise prediction (R(2) = 0.961; Q(2) = 0.923). The most important predictors of age were soluble and insoluble peptides with medium hydrophobicity. The combined peptide data set also resulted in a 100% correct classification by partial least squares discriminant analysis of cheeses according to age and farm origin. Hydrophobic peptides were again discriminatory for distinguishing among sample classes in both cases.
利用肽和游离氨基酸数据的化学计量学模型研究了原产地保护的拉古萨诺奶酪中的蛋白水解情况。从当地农民那里挑选了12块成熟3至7个月的奶酪,并从4个层面进行分析:外皮、外层、中层和内层。蛋白水解受到奶酪层面和成熟时间的显著影响。从外皮到核心以及在整个成熟过程中,发现pH 4.6醋酸盐缓冲液和12%三氯乙酸中可溶性氮显著增加。尿素-PAGE的蛋白水解模式表明,外皮到核心以及与成熟时间相关的水分和盐分含量梯度影响了凝乳酶和纤溶酶的活性,这反映在酪蛋白不同的水解速率上。对化学参数之间显著的相互关系进行分析发现,水分对蛋白水解速率的单一影响最大,超过了盐分含量。通过反相高效液相色谱法在奶酪最内层以及随着奶酪成熟发现,70%乙醇不溶性肽水平较低,而70%乙醇可溶性肽水平较高。随着奶酪成熟时间和层面的增加,单个游离氨基酸没有显著增加。总游离氨基酸含量从3个月时的14.3毫克/克(占总蛋白的6.2%)到7个月后的22.0毫克/克(占总蛋白的8.4%)。在每个时间点,谷氨酸在所有样品中的浓度最高,与赖氨酸和亮氨酸一起占总游离氨基酸的48%。对反相高效液相色谱图数据和游离氨基酸分析数据进行主成分分析和层次聚类分析表明,肽谱在按成熟时间和农场来源区分拉古萨诺奶酪方面比氨基酸数据更有用。结合游离氨基酸和肽数据得到了预测奶酪成熟时间的最佳偏最小二乘回归模型(R(2)=0.976;Q(2)=0.952),尽管仅肽数据就能得出类似精确的预测(R(2)=0.961;Q(2)=0.923)。成熟时间最重要的预测指标是具有中等疏水性的可溶性和不溶性肽。根据成熟时间和农场来源,结合肽数据集通过偏最小二乘判别分析对奶酪进行分类时,分类正确率也达到了100%。在这两种情况下,疏水性肽再次对区分样品类别具有鉴别作用。