栽培
杏
糖
果糖
肉体
蔗糖
混合的
园艺
甜蜜
化学
抗坏血酸
植物
胡萝卜素
没食子酸
还原糖
食品科学
生物
抗氧化剂
生物化学
作者
Pavlina Drogoudi,S.N. Vemmos,G. Pantelidis,Evangelia Petri,C. G. Tzoutzoukou,Irene Karayiannis
摘要
Fruit physical and chemical characters of 29 apricot cultivars of Greek and American origin and their hybrids were evaluated using correlation and principal component analysis. A remarkable variation was observed in the total phenol content (0.3−7.4 mg gallic acid equivalent g−1 FW) and total antioxidant capacity (0.026−1.858 mg ascorbic acid equivalent g−1 FW), with the American origin cultivars Robada and NJA2 and the new cultivar Nike exhibiting the greatest values. The cultivar Tomcot and hybrid 467/99 had the highest content of total carotene (37.8 μg β-carotene equivalent g−1 FW), which was up to four times greater as compared with the rest of studied genotypes. The dominant sugar in fruit tissue was sucrose, followed second by glucose and third by sorbitol and fructose-inositol. The new cultivars Nike, Niobe, and Neraida contained relatively higher contents of sucrose and total sugars, while Ninfa and P. Tirynthos contained relatively higher contents of K, Ca, and Mg. Correlation analysis suggested that late-harvesting cultivars/hybrids had greater fruit developmental times (r = 0.817) and contained higher sugar (r = 0.704) and less Mg contents (r= −0.742) in fruit tissue. The total antioxidant capacity was better correlated with the total phenol content (r = 0.954) as compared with the total carotenoid content (r = 0.482). Weak correlations were found between the fruit skin color and the antioxidant contents in flesh tissue. Multivariate analysis allowed the grouping of variables, with more important variables being the harvest date, fruit developmental time, skin Chroma, sorbitol, and total sugar, K and Mg contents. Plotting the genotypes in a dendrogram revealed cases of homonymy between parents and hybrids, although independent segregation of the measured traits after hybridization was also found.
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