Agricultural Economics and Engineering Dept., Univ. of Bologna, Piazza G. Goidanich, 60-47023 Cesena (FC), Italy.
J Food Sci. 2010 Sep;75(7):E462-8. doi: 10.1111/j.1750-3841.2010.01741.x. Epub 2010 Sep 2.
The nondestructive assessment of apricot fruit quality (Bora cultivar) was carried out by means of FT-NIR reflectance spectroscopy in the wavenumber range 12000 to 4000 cm⁻¹. Samples were harvested at four different ripening stages and scanned by a fiber optical probe immediately after harvesting and after a storage of 3 d (2 d at 4 °C and 1 d at 18 °C); the flesh firmness (FF), the soluble solids content (SSC), the acidity (A), and the titratable acidity (malic and citric acids) were then measured by destructive methods. Soft independent modeling of class analogy (SIMCA) analysis was used to classify spectra according to the ripening stage and the storage: partial least squares regression (PLS) models to predict FF, SSC, A, and the titratable acidity were also set-up for both just harvested and stored apricots. Spectral pretreatments and wavenumber selections were conducted on the basis of explorative principal component analysis (PCA). Apricot spectra were correctly classified in the right class with a mean classification rate of 87% (range: 80% to 100%). Test set validations of PLS models showed R2 values up to 0.620, 0.863, 0.842, and 0.369 for FF, SSC, A, and the titratable acidity, respectively. The best models were obtained for the SSC and A and are suitable for rough screening; a lower power prediction emerged for the other maturity indices and the relative predictive models are not recommended.
The results of the study could be used as a tool for the assessment of the ripening stage during the harvest and the quality during the postharvest storage of apricot fruits.
通过傅里叶变换近红外漫反射光谱法在 12000 到 4000 cm⁻¹ 的波数范围内对巴罗克品种的杏果实品质进行了无损评估。样品在四个不同的成熟阶段进行收获,并在收获后立即和储存 3 天后(4°C 下储存 2 天,18°C 下储存 1 天)用光纤探头进行扫描;然后通过破坏性方法测量果肉硬度(FF)、可溶性固形物含量(SSC)、酸度(A)和可滴定酸度(苹果酸和柠檬酸)。软独立建模分类分析(SIMCA)用于根据成熟阶段和储存对光谱进行分类:偏最小二乘回归(PLS)模型也用于建立刚收获和储存的杏果实的 FF、SSC、A 和可滴定酸度的预测模型。光谱预处理和波数选择是基于探索性主成分分析(PCA)进行的。杏光谱正确地分类到正确的类别中,平均分类率为 87%(范围:80%到 100%)。PLS 模型的测试集验证显示,FF、SSC、A 和可滴定酸度的 R2 值分别高达 0.620、0.863、0.842 和 0.369。对于 SSC 和 A,获得了最佳模型,适用于粗略筛选;对于其他成熟指数,预测能力较低,不建议使用相对预测模型。
研究结果可用于评估杏果实收获期间的成熟阶段和采后储存期间的品质。