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首页> 外文期刊>Biomedical Chromatography: An International Journal Devoted to Research in Chromatographic Methodologies and Their Applications in the Biosciences >Identifying the chemical markers in raw and wine-processed Scutellaria baicalensis by ultra-performance liquid chromatography/quadrupole time-of-flight mass spectrometry coupled with multiple statistical strategies
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Identifying the chemical markers in raw and wine-processed Scutellaria baicalensis by ultra-performance liquid chromatography/quadrupole time-of-flight mass spectrometry coupled with multiple statistical strategies

机译:通过超级性液相色谱/四极其飞行时间质谱法识别原料和葡萄酒加工的鳞茎的化学标志物,与多种统计策略相结合

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摘要

Herb processing is a typical pharmaceutical preparation process for traditional Chinese medicine. After processing, its clinical applications and pharmacological effects vary greatly, which is most commonly attributed to the changing chemical properties between raw herb and processed products. In this work, a total of 53 chemical compounds were detected, among which 17 compounds were identified as discriminatory chemicals between raw and wine-processed Scutellaria baicalensis, and 10 components were identified as chemical markers with a cumulative content contribution of 88.75%. In addition, this work revealed that the best wine-processed time was 18 min by investigating the changes of chemical markers in S. baicalensis during processing. This work demonstrated that ultra-performance liquid chromatography/quadrupole time-of-flight mass spectrometry coupled with multiple statistical strategies is an effective approach for screening and identifying discriminatory chemical markers in complex traditional Chinese medicine.
机译:Herb加工是一种典型的中药药物制备方法。加工后,其临床应用和药理效应大大变化,最常见于未加工药草和加工产品之间的化学性质变化。在这项工作中,总共检测到53种化合物,其中17种化合物被鉴定为原料和葡萄酒加工的Scutellaria Baicalens之间的歧视化学品,并且将10种成分鉴定为化学标志物,累积含量贡献为88.75%。此外,这项工作表明,通过在加工过程中调查S.Baicalensis的化学标志物的变化,最好的葡萄酒加工时间为18分钟。这项工作表明,超级性能液相色谱/四极其飞行时间质谱法与多种统计策略相结合,是一种有效的筛选和识别复杂中药中歧视性化学标志物的方法。

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