On-site analysis and rapid identification of citrus herbs by miniature mass spectrometry and machine learning

IF 1.8 3区 化学 Q4 BIOCHEMICAL RESEARCH METHODS Rapid Communications in Mass Spectrometry Pub Date : 2024-06-18 DOI:10.1002/rcm.9780
Xingyu Wang, Yanqiao Xie, Jinliang Yu, Ye Chen, Yun Tian, Ziying Wang, Zhengtao Wang, Linnan Li, Li Yang
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Abstract

Background

Natural medicines present a considerable analytical challenge due to their diverse botanical origins and complex multi-species composition. This inherent complexity complicates their rapid identification and analysis. Tangerine peel, a product of the Citrus species from the Rutaceae family, is widely used both as a culinary ingredient and in traditional Chinese medicine. It is classified into two primary types in China: Citri Reticulatae Pericarpium (CP) and Citri Reticulatae Pericarpium Viride (QP), differentiated by harvest time. A notable price disparity exists between CP and another variety, Citri reticulatae “Chachi” (GCP), with differences being based on the original variety.

Methods

This study introduces an innovative method using portable miniature mass spectrometry for swift on-site analysis of QP, CP, and GCP, requiring less than a minute per sample. And combined with machine learning to differentiate the three types on site, the method was used to try to distinguish GCP from different storage years.

Results

This novel method using portable miniature mass spectrometry for swift on-site analysis of tangerine peels enabled the characterization of 22 compounds in less than one minute per sample. The method simplifies sample processing and integrates machine learning to distinguish between the CP, QP, and GCP varieties. Moreover, a multiple-perceptron neural network model is further employed to specifically differentiate between CP and GCP, addressing the significant price gap between them.

Conclusions

The entire analytical time of the method is about 1 minute, and samples can be analyzed on site, greatly reducing the cost of testing. Besides, this approach is versatile, operates independently of location and environmental conditions, and offers a valuable tool for assessing the quality of natural medicines.

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利用微型质谱仪和机器学习对柑橘药材进行现场分析和快速鉴定。
背景:天然药物的植物来源多样,多物种成分复杂,给分析带来了相当大的挑战。这种固有的复杂性使其快速鉴定和分析变得更加复杂。陈皮是芸香科柑橘属植物的产物,被广泛用作烹饪配料和传统中药。在中国,橘皮主要分为两种类型:橘皮(Citri Reticulatae Pericarpium,CP)和橘皮(Citri Reticulatae Pericarpium Viride,QP),以收获时间区分。CP 和另一个品种 Citri reticulatae "Chachi" (GCP)之间存在明显的价格差异,差异取决于原始品种:本研究采用一种创新方法,利用便携式微型质谱仪对 QP、CP 和 GCP 进行快速现场分析,每个样品的分析时间不到一分钟。并结合机器学习来现场区分这三种类型,该方法还被用于尝试区分不同储存年份的 GCP:结果:这种使用便携式微型质谱仪对橘子皮进行现场快速分析的新方法能够在每个样品不到一分钟的时间内鉴定出 22 种化合物。该方法简化了样品处理过程,并结合了机器学习来区分 CP、QP 和 GCP 品种。此外,该方法还进一步采用了多重感知器神经网络模型来专门区分 CP 和 GCP,以解决它们之间的巨大价格差距:该方法的整个分析时间约为 1 分钟,样品可在现场进行分析,大大降低了检测成本。此外,该方法用途广泛,不受地点和环境条件的影响,是评估天然药物质量的重要工具。
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来源期刊
CiteScore
4.10
自引率
5.00%
发文量
219
审稿时长
2.6 months
期刊介绍: Rapid Communications in Mass Spectrometry is a journal whose aim is the rapid publication of original research results and ideas on all aspects of the science of gas-phase ions; it covers all the associated scientific disciplines. There is no formal limit on paper length ("rapid" is not synonymous with "brief"), but papers should be of a length that is commensurate with the importance and complexity of the results being reported. Contributions may be theoretical or practical in nature; they may deal with methods, techniques and applications, or with the interpretation of results; they may cover any area in science that depends directly on measurements made upon gaseous ions or that is associated with such measurements.
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