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Comparison of two exploratory data analysis methods for classification of Phyllanthus chemical fingerprint: unsupervised vs. supervised pattern recognition technologies

机译:比较两种探索性数据分析方法对Ph兰化学指纹进行分类:无监督模式与有监督模式识别技术

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In this study, unsupervised and supervised classification methods were compared for comprehensive analysis of the fingerprints of 26 Phyllanthus samples from different geographical regions and species. A total of 63 compounds were identified and tentatively assigned structures for the establishment of fingerprints using high-performance liquid chromatography time-of-flight mass spectrometry (HPLC/TOFMS). Unsupervised and supervised pattern recognition technologies including principal component analysis (PCA), nearest neighbors algorithm(NN), partial least squares discriminant analysis (PLS-DA), and artificial neural network (ANN) were employed. Results showed that Phyllanthus could be correctly classified according to their geographical locations and species through ANN and PLS-DA. Important variables for clusters discrimination were also identified by PCA. Although unsupervised and supervised pattern recognitions have their own disadvantage and application scope, they are effective and reliable for studying fingerprints of traditional Chinese medicines (TCM). These two technologies are complementary and can be superimposed. Our study is the first holistic comparison of supervised and unsupervised pattern recognition technologies in the TCM chemical fingerprinting. They showed advantages in sample classification and data mining, respectively.
机译:在这项研究中,比较了无监督和有监督的分类方法,以全面分析来自不同地理区域和物种的26种楠竹样品的指纹。使用高效液相色谱飞行时间质谱分析法(HPLC / TOFMS),总共鉴定了63种化合物并初步确定了用于建立指纹的结构。采用了无监督和监督模式识别技术,包括主成分分析(PCA),最近邻算法(NN),偏最小二乘判别分析(PLS-DA)和人工神经网络(ANN)。结果表明,通过人工神经网络和PLS-DA可以准确地根据其地理位置和种类对木兰进行分类。 PCA还确定了聚类鉴别的重要变量。尽管无监督和有监督的模式识别有其自身的缺点和应用范围,但它们在研究中药指纹图谱方面是有效而可靠的。这两种技术是互补的,可以重叠。我们的研究是中药化学指纹图谱中有监督和无监督模式识别技术的首次整体比较。他们分别在样本分类和数据挖掘方面显示了优势。

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