Department of Chemistry, Babeş-Bolyai University, Faculty of Chemistry and Chemical Engineering, Cluj-Napoca, Romania.
Department of Chemistry, Babeş-Bolyai University, Faculty of Chemistry and Chemical Engineering, Cluj-Napoca, Romania.
J Pharm Biomed Anal. 2019 Jan 30;163:137-143. doi: 10.1016/j.jpba.2018.09.047. Epub 2018 Sep 27.
Thin layer chromatography in combination with image analysis and advanced chemometric methods were successfully used to classify the medicinal herbs according to their therapeutic effects and usage. The investigations were conducted using two types of plates (HPTLC Silica gel 60 and HPTLC Silica gel 60 F254) which were evaluated in UV light at 254 and 365 nm. The holistic evaluation of the numerical data corresponding different image processing channels (blue, grey, red, green) was performed by employing appropriate multivariate methods: hierarchical cluster analysis (HCA), principal component analysis (PCA), fuzzy principal component analysis (FPCA) and linear discriminant analysis (LDA) applied to the first relevant principal components. The results obtained by applying LDA method indicate a highly accurate separation of the medicinal herbs within the four groups, in good agreement with therapeutic effects and usage. According to this classification, the best image processing channels were identified for each of the investigated HPTLC plates: blue channel for HPTLC Silica gel 60 F (with 92.9% percent of discrimination in case of PCA and FPCA) and respectively red channel for HPTLC Silica gel 60 (with 93.9% percent of discrimination in case of FPCA). The 2D and 3D score scatterplots illustrate also the accurate and reliable discrimination between the four distinct groups.
薄层色谱法结合图像分析和先进的化学计量学方法,成功地根据草药的治疗效果和用途对其进行分类。研究使用两种类型的板(HPTLC 硅胶 60 和 HPTLC 硅胶 60 F254)进行,在 254nm 和 365nm 处用紫外线进行评估。通过使用适当的多元方法(层次聚类分析(HCA)、主成分分析(PCA)、模糊主成分分析(FPCA)和线性判别分析(LDA)应用于第一个相关主成分)对对应不同图像处理通道(蓝色、灰色、红色、绿色)的数值数据进行整体评估。应用 LDA 方法得到的结果表明,四种草药组内的分离非常准确,与治疗效果和用途一致。根据这种分类,为每个被调查的 HPTLC 板确定了最佳的图像处理通道:HPTLC 硅胶 60 F 的蓝色通道(在 PCA 和 FPCA 的情况下,92.9%的辨别率)和 HPTLC 硅胶 60 的红色通道(在 FPCA 的情况下,93.9%的辨别率)。二维和三维得分散点图也说明了四个不同组之间的准确可靠的区分。