通过数字化和化学计量预处理提高蔓越莓补充剂HPTLC分析的重现性。

Mengliang Zhang, Jianghao Sun, Elizabeth Corwin, James M Harnly
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引用次数: 0

摘要

背景:高效薄层色谱法(HPTLC)广泛应用于植物保健品的鉴别和质量评价。然而,传统的解释方法是主观的,板间的可变性阻碍了再现性和板间比较。目的:通过色谱图谱数字化和化学计量预处理,提高高效液相色谱法在蔓越莓膳食补充剂分析中的重复性和分析实用性。方法:对不同剂型的蔓越莓补充剂进行提取,采用标准化HPTLC法进行分析。用天然产物和茴香醛试剂衍生化板,并在多种光照条件下成像。采用归一化和保留因子(RF)对准对数字色谱进行处理。采用主成分分析(PCA)和方差主成分分析(ANOVA-PCA)等化学计量学方法评估变异性,改进分类。结果:数字化和预处理工作流程显著降低了与车牌相关的变异性,同时提高了分类精度。RF比对将板间方差从23%降低到11%,而将样本类型方差从59%增加到79%。结合多种衍生化和成像条件的数据,改进了化学指纹,并使PCA模型中的聚类更紧密。结论:数字化HPTLC数据与化学计量预处理的集成使分析工作流程现代化,提高了再现性,并实现了更强大和可解释的植物指纹图谱。这种方法支持改进植物产品的质量控制,并与数据透明度和可重用性的新标准保持一致。亮点:数字化和校准减少了HPTLC的可变性,提高了再现性。多种衍生化条件下的组合剖面改进了样品分类。化学计量学分析可以更好地解释和数据驱动的质量控制和评估植物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Reproducibility of HPTLC Analysis for Cranberry Supplements through Digitization and Chemometric Preprocessing.

Background: High-performance thin-layer chromatography (HPTLC) is widely used for the identification and quality assessment of botanical supplements. However, traditional interpretation methods are subjective, and variability between plates hinders reproducibility and inter-plate comparisons.

Objective: This study aimed to enhance the reproducibility and analytical utility of HPTLC by digitizing chromatograms and applying chemometric preprocessing to cranberry dietary supplement analysis.

Method: Cranberry supplements of diverse dosage forms were extracted and analyzed using a standardized HPTLC protocol. Plates were derivatized with natural products and anisaldehyde reagents and imaged under multiple lighting conditions. Digital chromatograms were processed using normalization and retention factor (RF) alignment. Chemometric methods, including principal component analysis (PCA) and analysis of variance principal component analysis (ANOVA-PCA), were applied to assess variability and improve classification.

Results: The digitization and preprocessing workflow significantly reduced plate-related variability while enhancing classification accuracy. RF alignment lowered between plate variance from 23% to 11%, while increasing sample-type variance from 59% to 79%. Combining data from multiple derivatization and imaging conditions improved chemical fingerprinting and enabled tighter clustering in PCA models.

Conclusions: The integration of digitized HPTLC data with chemometric preprocessing modernizes the analytical workflow, improves reproducibility, and enables more robust and interpretable botanical fingerprinting. This approach supports improved quality control of botanical products and aligns with emerging standards for data transparency and reusability.

Highlights: Digitization and alignment reduce HPTLC variability and enhance reproducibility. Combined profiles from multiple derivatization conditions improve sample classification. Chemometric analysis enables better interpretation and data-driven quality control and assessment for botanicals.

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