Tewari Jagdish C, Dixit Vivechana, Cho Byoung-Kwan, Malik Kamal A
Department of Fiber Science and Apparel Design, Cornell University, Ithaca, NY 14853, USA.
Spectrochim Acta A Mol Biomol Spectrosc. 2008 Dec 1;71(3):1119-27. doi: 10.1016/j.saa.2008.03.005. Epub 2008 Mar 13.
The capacity to confirm the variety or origin and the estimation of sucrose, glucose, fructose of the citrus fruits are major interests of citrus juice industry. A rapid classification and quantification technique was developed and validated for simultaneous and nondestructive quantifying the sugar constituent's concentrations and the origin of citrus fruits using Fourier Transform Near-Infrared (FT-NIR) spectroscopy in conjunction with Artificial Neural Network (ANN) using genetic algorithm, Chemometrics and Correspondences Analysis (CA). To acquire good classification accuracy and to present a wide range of concentration of sucrose, glucose and fructose, we have collected 22 different varieties of citrus fruits from the market during the entire season of citruses. FT-NIR spectra were recorded in the NIR region from 1,100 to 2,500 nm using the fiber optic probe and three types of data analysis were performed. Chemometrics analysis using Partial Least Squares (PLS) was performed in order to determine the concentration of individual sugars. Artificial Neural Network analysis was performed for classification, origin or variety identification of citrus fruits using genetic algorithm. Correspondence analysis was performed in order to visualize the relationship between the citrus fruits. To compute a PLS model based upon the reference values and to validate the developed method, high performance liquid chromatography (HPLC) was performed. Spectral range and the number of PLS factors were optimized for the lowest standard error of calibration (SEC), prediction (SEP) and correlation coefficient (R(2)). The calibration model developed was able to assess the sucrose, glucose and fructose contents in unknown citrus fruit up to an R(2) value of 0.996-0.998. Numbers of factors from F1 to F10 were optimized for correspondence analysis for relationship visualization of citrus fruits based on the output values of genetic algorithm. ANN and CA analysis showed excellent classification of citrus according to the variety to which they belong and well-classified citrus according to their origin. The technique has potential in rapid determination of sugars content and to identify different varieties and origins of citrus in citrus juice industry.
确认柑橘类水果的品种或产地以及对其蔗糖、葡萄糖、果糖进行估算的能力是柑橘汁行业的主要关注点。利用傅里叶变换近红外(FT-NIR)光谱结合使用遗传算法的人工神经网络(ANN)、化学计量学和对应分析(CA),开发并验证了一种快速分类和定量技术,用于同时无损地定量柑橘类水果的糖分成分浓度和产地。为了获得良好的分类准确性并呈现广泛的蔗糖、葡萄糖和果糖浓度范围,我们在柑橘的整个季节从市场收集了22种不同品种的柑橘类水果。使用光纤探头在1100至2500nm的近红外区域记录FT-NIR光谱,并进行了三种类型的数据分析。使用偏最小二乘法(PLS)进行化学计量学分析,以确定单个糖分的浓度。使用遗传算法对柑橘类水果进行人工神经网络分析,以进行分类、产地或品种识别。进行对应分析以可视化柑橘类水果之间的关系。为了基于参考值计算PLS模型并验证所开发的方法,进行了高效液相色谱(HPLC)分析。针对最低校准标准误差(SEC)、预测标准误差(SEP)和相关系数(R²),对光谱范围和PLS因子数量进行了优化。所开发的校准模型能够评估未知柑橘类水果中的蔗糖、葡萄糖和果糖含量,R²值高达0.996 - 0.998。根据遗传算法的输出值,对从F1到F10的因子数量进行了优化,用于对应分析以可视化柑橘类水果的关系。ANN和CA分析显示,根据柑橘所属的品种以及根据其产地进行的分类都非常出色。该技术在快速测定柑橘汁行业中柑橘的糖分含量以及识别不同品种和产地方面具有潜力。