Analysis of GC × GC fingerprints from medicinal materials using a novel contour detection algorithm: A case of Curcuma wenyujin

IF 6.1 1区 医学 Q1 PHARMACOLOGY & PHARMACY
Xinyue Yang, Yingyu Sima, Xuhuai Luo, Yaping Li, Min He
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Abstract

This study introduces an innovative contour detection algorithm, PeakCET, designed for rapid and efficient analysis of natural product image fingerprints using comprehensive two-dimensional gas chromatogram (GC × GC). This method innovatively combines contour edge tracking with affinity propagation (AP) clustering for peak detection in GC × GC fingerprints, a first in this field. Contour edge tracking significantly reduces false positives caused by "burr" signals, while AP clustering enhances detection accuracy in the face of false negatives. The efficacy of this approach is demonstrated using three medicinal products derived from Curcuma wenyujin. PeakCET not only performs contour detection but also employs inter-group peak matching and peak-volume percentage calculations to assess the compositional similarities and differences among various samples. Furthermore, this algorithm compares the GC × GC fingerprints of Radix/Rhizoma Curcumae Wenyujin with those of products from different botanical origins. The findings reveal that genetic and geographical factors influence the accumulation of secondary metabolites in various plant tissues. Each sample exhibits unique characteristic components alongside common ones, and variations in content may influence their therapeutic effectiveness. This research establishes a foundational data-set for the quality assessment of Curcuma products and paves the way for the application of computer vision techniques in two-dimensional (2D) fingerprint analysis of GC × GC data.

Abstract Image

使用新型轮廓检测算法分析药材的 GC × GC 指纹:以莪术为例
本研究介绍了一种创新的轮廓检测算法--PeakCET,该算法设计用于利用综合二维气相色谱(GC × GC)快速高效地分析天然产品图像指纹。该方法创新性地将轮廓边缘跟踪与亲和传播(AP)聚类相结合,用于 GC × GC 指纹中的峰值检测,这在该领域尚属首次。轮廓边缘跟踪大大减少了由 "毛刺 "信号引起的误报,而亲和性聚类则提高了面对假阴性信号时的检测准确性。该方法的功效通过三种从莪术中提取的药用产品得到了验证。PeakCET 不仅能进行轮廓检测,还能利用组间峰值匹配和峰值体积百分比计算来评估不同样品之间的成分异同。此外,该算法还将莪术温郁金的 GC × GC 指纹与来自不同植物产地的产品的 GC × GC 指纹进行了比较。研究结果表明,遗传和地理因素会影响次生代谢物在不同植物组织中的积累。每个样本在展示常见成分的同时,也展示了独特的特征成分,其含量的变化可能会影响其治疗效果。这项研究为莪术产品的质量评估建立了一个基础数据集,并为计算机视觉技术在 GC × GC 数据的二维(2D)指纹分析中的应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Pharmaceutical Analysis
Journal of Pharmaceutical Analysis Chemistry-Electrochemistry
CiteScore
16.20
自引率
2.30%
发文量
674
审稿时长
22 weeks
期刊介绍: The Journal of Pharmaceutical Analysis (JPA), established in 2011, serves as the official publication of Xi'an Jiaotong University. JPA is a monthly, peer-reviewed, open-access journal dedicated to disseminating noteworthy original research articles, review papers, short communications, news, research highlights, and editorials in the realm of Pharmacy Analysis. Encompassing a wide spectrum of topics, including Pharmaceutical Analysis, Analytical Techniques and Methods, Pharmacology, Metabolism, Drug Delivery, Cellular Imaging & Analysis, Natural Products, and Biosensing, JPA provides a comprehensive platform for scholarly discourse and innovation in the field.
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