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Pattern recognition methods and multivariate image analysis in HPTLC fingerprinting of propolis extracts

机译:蜂胶提取物HPTLC指纹图谱中的模式识别方法和多元图像分析

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摘要

High-performance thin-layer chromatography (HPTLC) combined with image analysis and pattern recognition methods were used for fingerprinting and classification of 52 propolis samples collected from Serbia and one sample fromCroatia. Modern thin-layer chromatography equipment in combination with software for image processing and warping was applied for fingerprinting and data acquisition. The three mostly used chemometric techniques for classification, principal component analysis, cluster analysis and partial least square-discriminant analysis, in combination with simple and fast HPTLC method for fingerprint analysis of propolis, were performed in order to favor and encourage their use in planar chromatography. HPTLC fingerprint analysis of propolis was for the first time performed on amino silica plates. All studied propolis samples have been classified in two major types, orange and blue, supporting the idea of existence of two types of European propolis. Signals at specific RF values responsible for classification of studied extracts have also been isolated and underlying compounds targeted for further investigation.
机译:高效薄层色谱法(HPTLC)与图像分析和模式识别方法相结合,用于对52份来自塞尔维亚的蜂胶样品和1份来自克罗地亚的蜂胶样品进行指纹识别和分类。将现代薄层色谱设备与图像处理和变形软件相结合,用于指纹和数据采集。进行了三种最常用的化学计量学技术进行分类,主成分分析,聚类分析和偏最小二乘判别分析,并结合简单快速的HPTLC方法对蜂胶进行指纹分析,以促进和鼓励将其用于平面色谱法。蜂胶的HPTLC指纹分析首次在氨基硅胶板上进行。所有研究过的蜂胶样品都被分为橙色和蓝色两种主要类型,支持了存在两种欧洲蜂胶的想法。还已分离出负责研究提取物分类的特定RF值的信号,并针对潜在化合物进行进一步研究。

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