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首页> 外文期刊>ACS Omega >Rapid and Noninvasive Typing and Assessment of Nutrient Content of Maize Kernels Using a Handheld Raman Spectrometer
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Rapid and Noninvasive Typing and Assessment of Nutrient Content of Maize Kernels Using a Handheld Raman Spectrometer

机译:使用手持式拉曼光谱仪快速无损分型并评估玉米籽粒的营养成分

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To thrive as a global civilization, food production must meet the demands of our ever-growing population. There are more than a billion people on the planet suffering from malnutrition through poor quality or lack of food. Nutrient content of food can be determined by a variety of methods, which have issues such as slow analysis or sample destruction. Near-infrared (NIR) spectroscopy is a long-standing alternative to these methods. In this work, we demonstrated that Raman spectroscopy (RS), another spectroscopic method, can also be used to assess the nutrient content of maize (Zea mays), one of the most widely cultivated grains in the world. Using a handheld Raman spectrometer, we predicted the content of carbohydrates, fibers, carotenoids, and proteins in six different varieties of maize. This analysis requires only a single maize kernel and is fast (1s), portable, noninvasive, and nondestructive. Moreover, we showed that RS in combination with chemometric methods can be used for highly accurate (approximately 90%) spectroscopic typing of maize, which is important for plant breeders and farmers. Finally, we demonstrate that Raman-based approach is as accurate as NIR analysis. These findings suggest that portable Raman systems can be used on combines and grain elevators for autonomous control of grain quality.
机译:为了发展成为全球文明,粮食生产必须满足我们不断增长的人口的需求。地球上有十亿多人因质量差或食物不足而营养不良。食物的营养成分可以通过多种方法来确定,这些方法存在诸如分析速度慢或样品破坏等问题。近红外(NIR)光谱是这些方法的长期替代方案。在这项工作中,我们证明了拉曼光谱(RS),另一种光谱方法,也可以用于评估玉米(Zea mays)的营养成分,玉米是世界上种植最广泛的谷物之一。使用手持式拉曼光谱仪,我们预测了六个不同玉米品种中碳水化合物,纤维,类胡萝卜素和蛋白质的含量。该分析仅需要一个玉米粒,并且分析速度快(1秒),可移植,无创且无损。此外,我们表明RS与化学计量学方法相结合可用于玉米的高精度(约90%)光谱分型,这对于植物育种者和农民非常重要。最后,我们证明了基于拉曼的方法与NIR分析一样准确。这些发现表明,便携式拉曼系统可用于联合收割机和谷物升降机,以自动控制谷物质量。

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