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Using Near-infrared reflectance spectroscopy (NIRS) to predict glucobrassicin concentrations in cabbage and brussels sprout leaf tissue

机译:使用近红外反射光谱(NIRS)预测白菜和布鲁塞尔萌芽叶组织中的葡萄球菌浓度

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Glucobrassicin (GBS) and its hydrolysis product indole-3-carbinol are important nutritional constituents implicated in cancer chemoprevention. Dietary consumption of vegetables sources of GBS, such as cabbage and Brussels sprouts, is linked to tumor suppression, carcinogen excretion, and cancer-risk reduction. High-performance liquid-chromatography (HPLC) is the current standard GBS identification method, and quantification is based on UV-light absorption in comparison to known standards or via mass spectrometry. These analytical techniques require expensive equipment, trained laboratory personnel, hazardous chemicals, and they are labor intensive. A rapid, nondestructive, inexpensive quantification method is needed to accelerate the adoption of GBS-enhancing production systems. Such an analytical method would allow producers to quantify the quality of their products and give plant breeders a high-throughput phenotyping tool to increase the scale of their breeding programs for high GBS-accumulating varieties. Near-infrared reflectance spectroscopy (NIRS) paired with partial least squares regression (PLSR) could be a useful tool to develop such a method. Here we demonstrate that GBS concentrations of freeze-dried tissue from a wide variety of cabbage and Brussels sprouts can be predicted using partial least squares regression from NIRS data generated from wavelengths between 950 and 1650?nm. Cross-validation models had R2?=?0.75 with RPD?=?2.3 for predicting μmol GBS·100?g?1 fresh weight and R2?=?0.80 with RPD?=?2.4 for predicting μmol GBS·g?1 dry weight. Inspections of equation loadings suggest the molecular associations used in modeling may be due to first overtones from O–H stretching and/or N–H stretching of amines. A calibration model suitable for screening GBS concentration of freeze-dried leaf tissue using NIRS-generated data paired with PLSR can be created for cabbage and Brussels sprouts. Optimal NIRS wavelength ranges for calibration remain an open question.
机译:葡萄糖霉素(GBS)及其水解产物吲哚-3-甲醇是重要的营养成分,涉及癌症化学预防。膳食消费GBS的蔬菜来源,如卷心菜和抱子萌芽,与肿瘤抑制,致癌物质排泄和癌症风险降低有关。高效液相色谱(HPLC)是目前标准GBS识别方法,与已知标准或通过质谱法相比,定量基于UV光吸收。这些分析技术需要昂贵的设备,训练有素的实验室人员,危险化学品,它们是劳动密集型的。需要快速,无损,廉价的量化方法来加速GBS增强的生产系统。这种分析方法允许生产者量化其产品的质量,并为植物育种者提供高通量表型工具,以增加其高GBS累积品种的育种计划的规模。近红外反射光谱(NIRS)与部分最小二乘回归(PLSR)配对可以是开发这种方法的有用工具。在这里,我们证明了GBS浓缩来自各种白菜和抱子芽的冻干组织,可以使用从950和1650Δnm之间的波长产生的NIRS数据的部分最小二乘来预测。交叉验证模型具有R2?=Δ= 0.75,RPD?2.3用于预测μmolGBS·100?1鲜重和R2?=Δ0.80用RPD?2.4预测μmolgbs·g?1干重。等式载荷的检查表明模拟中使用的分子关联可能是由于O-H拉伸和/或N-H伸展胺的首先ovtones。适用于使用与PLSR配对的NIR生成的数据筛选冷冻干燥叶组织GBS浓度的校准模型可以为白菜和布鲁塞尔甘蓝产生。校准的最佳牢房波长范围仍然是一个打开的问题。

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