Identification of raffinose family oligosaccharides in processed Rehmannia glutinosa Libosch using matrix-assisted laser desorption/ionization mass spectrometry image combined with machine learning

IF 1.8 3区 化学 Q4 BIOCHEMICAL RESEARCH METHODS Rapid Communications in Mass Spectrometry Pub Date : 2023-09-18 DOI:10.1002/rcm.9635
Huizhi Li, Shishan Zhang, Yanfang Zhao, Jixiang He, Xiangfeng Chen
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Abstract

Rationale

Currently, research on oligosaccharides primarily focuses on the physiological activity and function, with a few studies elaborating on the spatial distribution characterization and variation in the processing of Rehmannia glutinosa Libosch. Thus, imaging the spatial distributions and dynamic changes in oligosaccharides during the steaming process is significant for characterizing the metabolic networks of R. glutinosa. It will be beneficial to characterize the impact of steaming on the active ingredients and distribution patterns in different parts of the plant.

Methods

A highly sensitive matrix-assisted laser desorption/ionization mass spectrometry image (MALDI-MSI) method was used to visualize the spatial distribution of oligosaccharides in processed R. glutinosa. Furthermore, machine learning was used to distinguish the processed R. glutinosa samples obtained under different steaming conditions.

Results

Imaging results showed that the oligosaccharides in the fresh R. glutinosa were mainly distributed in the cortex and xylem. As steaming progressed, the tetra- and pentasaccharides were hydrolyzed and diffused gradually into the tissue section. MALDI-MS profiling combined with machine learning was used to identify the processed R. glutinosa samples accurately at different steaming intervals. Eight algorithms were used to build classification machine learning models, which were evaluated for accuracy, precision, recall, and F1 score. The linear discriminant analysis and random forest models performed the best, with prediction accuracies of 0.98 and 0.97, respectively, and thus can be considered for identifying the steaming durations of R. glutinosa.

Conclusions

MALDI-MSI combined with machine learning can be used to visualize the distribution of oligosaccharides and identify the processed samples after steaming for different durations. This can enhance our understanding of the metabolic changes that occur during the steaming process of R. glutinosa; meanwhile, it is expected to provide a theoretical reference for the standardization and modernization of processing in the field of medicinal plants.

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结合机器学习的基质辅助激光解吸/电离质谱法鉴定地黄中棉子糖家族低聚糖
目前,对低聚糖的研究主要集中在其生理活性和功能方面,对地黄加工过程中的空间分布特征和变化研究较少。因此,研究蒸煮过程中低聚糖的空间分布和动态变化对表征地黄代谢网络具有重要意义。这将有利于表征蒸对植物不同部位的有效成分和分布模式的影响。方法采用高灵敏度基质辅助激光解吸/电离质谱法(MALDI-MSI)对加工后的地黄中低聚糖的空间分布进行可视化分析。此外,利用机器学习技术对不同蒸制条件下的地黄样品进行了判别。结果成像结果显示,鲜地黄中低聚糖主要分布在皮层和木质部。随着蒸煮的进行,四糖和五糖被水解并逐渐扩散到组织切片中。采用MALDI-MS分析与机器学习相结合的方法,对不同蒸制间隔的地黄样品进行了准确的鉴定。使用8种算法构建分类机器学习模型,并对其准确性、精密度、召回率和F1分数进行评估。线性判别分析和随机森林模型的预测精度分别为0.98和0.97,可用于地黄蒸期的识别。结论MALDI-MSI结合机器学习可以可视化低聚糖的分布,并对不同蒸煮时间的加工样品进行识别。这可以加深我们对黄芪蒸煮过程中代谢变化的认识;同时,有望为药用植物加工的标准化和现代化提供理论参考。
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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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