Xie Lijuan, Ying Yibin, Ying Tiejin
College of Biosystems Engineering and Food Science, Zhejiang University, 268 Kaixuan Street, 310029 Hangzhou, People's Republic of China.
J Agric Food Chem. 2007 Jun 13;55(12):4645-50. doi: 10.1021/jf063664m. Epub 2007 May 16.
Visible/near-infrared (vis/NIR) spectroscopy combined with multivariate analysis was used to quantify chlorophyll content in tomato leaves and classify tomato leaves with different genes. In this study, transgenic tomato leaves with antisense LeETR1 (n = 106) and their parent nontransgenic ones (n = 102) were measured in vis/NIR diffuse reflectance mode. Quantification of chlorophyll content was achieved by partial least-squares regression with a cross-validation prediction error equal to 2.87. Partial least-squares discriminant analysis was performed to classify leaves. The results show that differences between transgenic and nontransgenic tomato leaves do exist, and excellent classification can be obtained after optimizing spectral pretreatment. The classification accuracy can reach to 100% using the derivative of spectral data in the full and partial wavenumber range. These results demonstrate that vis/NIR spectroscopy together with chemometrics techniques could be used to quantify chlorophyll content and differentiate tomato leaves with different genes, which offers the benefit of avoiding time-consuming, costly, and laborious chemical and sensory analysis.
可见/近红外(vis/NIR)光谱结合多变量分析用于量化番茄叶片中的叶绿素含量,并对具有不同基因的番茄叶片进行分类。在本研究中,以反义LeETR1转基因番茄叶片(n = 106)及其亲本非转基因叶片(n = 102)为材料,采用vis/NIR漫反射模式进行测量。通过偏最小二乘回归实现叶绿素含量的定量分析,交叉验证预测误差为2.87。采用偏最小二乘判别分析对叶片进行分类。结果表明,转基因和非转基因番茄叶片之间确实存在差异,优化光谱预处理后可获得良好的分类效果。在全波数范围和部分波数范围内使用光谱数据的导数,分类准确率可达100%。这些结果表明,vis/NIR光谱结合化学计量学技术可用于量化叶绿素含量,并区分具有不同基因的番茄叶片,这避免了耗时、昂贵且费力的化学和感官分析。