Pferschy-Wenzig Eva-Maria, Ortmann Sabine, Atanasov Atanas G, Hellauer Klara, Hartler Jürgen, Kunert Olaf, Gold-Binder Markus, Ladurner Angela, Heiß Elke H, Latkolik Simone, Zhao Yi-Min, Raab Pia, Monschein Marlene, Trummer Nina, Samuel Bola, Crockett Sara, Miao Jian-Hua, Thallinger Gerhard G, Bochkov Valery, Dirsch Verena M, Bauer Rudolf
Institute of Pharmaceutical Sciences, University of Graz, 8010 Graz, Austria.
Department of Pharmaceutical Sciences, University of Vienna, 1090 Vienna, Austria.
Metabolites. 2022 Mar 25;12(4):288. doi: 10.3390/metabo12040288.
This study centered on detecting potentially anti-inflammatory active constituents in ethanolic extracts of Chinese Lonicera species by taking an UHPLC-HRMS-based metabolite profiling approach. Extracts from eight different Lonicera species were subjected to both UHPLC-HRMS analysis and to pharmacological testing in three different cellular inflammation-related assays. Compounds exhibiting high correlations in orthogonal projections to latent structures discriminant analysis (OPLS-DA) of pharmacological and MS data served as potentially activity-related candidates. Of these candidates, 65 were tentatively or unambiguously annotated. 7-Hydroxy-5,3',4',5'-tetramethoxyflavone and three bioflavonoids, as well as three C- and one C-acetylated polyhydroxy fatty acid, were isolated from leaves for the first time, and their structures were fully or partially elucidated. Of the potentially active candidate compounds, 15 were subsequently subjected to pharmacological testing. Their activities could be experimentally verified in part, emphasizing the relevance of Lonicera species as a source of anti-inflammatory active constituents. However, some compounds also impaired the cell viability. Overall, the approach was found useful to narrow down the number of potentially bioactive constituents in the complex extracts investigated. In the future, the application of more refined concepts, such as extract prefractionation combined with bio-chemometrics, may help to further enhance the reliability of candidate selection.
本研究以基于超高效液相色谱-高分辨质谱的代谢物谱分析方法,检测忍冬属植物乙醇提取物中潜在的抗炎活性成分。对8种不同忍冬属植物的提取物进行了超高效液相色谱-高分辨质谱分析,并在三种不同的细胞炎症相关试验中进行了药理测试。在药理数据和质谱数据的正交投影判别分析(OPLS-DA)中表现出高度相关性的化合物作为潜在的活性相关候选物。在这些候选物中,65种被初步或明确注释。首次从叶片中分离出7-羟基-5,3',4',5'-四甲氧基黄酮和三种生物黄酮,以及三种C-和一种C-乙酰化多羟基脂肪酸,并对其结构进行了完全或部分阐明。在潜在的活性候选化合物中,随后对15种进行了药理测试。它们的活性部分得到了实验验证,强调了忍冬属植物作为抗炎活性成分来源的相关性。然而,一些化合物也损害了细胞活力。总体而言,该方法被发现有助于缩小所研究复杂提取物中潜在生物活性成分的数量。未来,应用更精细的概念,如提取物预分级结合生物化学计量学,可能有助于进一步提高候选物选择的可靠性。