首页> 外文期刊>Planta medica: Natural products and medicinal plant research >Skullcap and germander: Preventing potential toxicity through the application of hyperspectral imaging and multivariate image analysis as a novel quality control method
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Skullcap and germander: Preventing potential toxicity through the application of hyperspectral imaging and multivariate image analysis as a novel quality control method

机译:Skullcap and Germander:通过将高光谱成像和多元图像分析作为一种新型的质量控制方法来防止潜在的毒性

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摘要

Scutellaria lateriflora (skullcap) is a medicinal herb that has a long history of use in the treatment of ailments such as insomnia and anxiety. Commercial herbal formulations claiming to contain S. laterifolia herba have flooded the consumer markets. However, due to intentional or unintentional adulteration, cases of hepatotoxicity have been reported. Possible adulteration with the potentially hepatotoxic Teucrium spp., T. canadense and T. chamaedrys has been reported. In this study, hyperspectral imaging in combination with multivariate image analysis methods was used to differentiate S. laterifolia, T. canadense, and T. chamaedrys raw materials in a non-destructive manner. Furthermore, the ability to detect adulteration of raw materials using the developed multivariate models was also investigated. Chemical images were captured using a shortwave infrared pushbroom imaging system in the wavelength range 920-2514nm. Principal component analysis was applied to the images to investigate chemical differences between the species. Partial least squares discriminant analysis was used to model pre-assigned class images, and the classification model predicted the levels of adulteration in spiked raw materials. UHPLC-MS as an independent analytical technique was used to confirm chemical differences between the three species. The ability of hyperspectral chemical imaging as a non-destructive technique in the differentiation of the three species was achieved with three distinct clusters in the score scatter plot. A 92.3% variation in modelled data using PC1 and PC2 was correlated to chemical differences between the three species. Near infrared signals in the regions 1924nm and 2092nm (positive P1), 1993nm and 2186nm (negative P1), 1918nm, 2092nm, and 2266nm (positive P2), as well as 1993nm and 2303nm (negative P2) were identified as containing discriminating information using the loadings line plots. Chemical imaging of spiked samples showed spatial orientation of contaminants within the powdered samples, and percentage adulteration was accurately predicted at levels ≥40% adulteration based on pixel abundance.
机译:黄cut(黄ull)是一种用于治疗失眠和焦虑症等疾病的悠久历史的草药。声称含有S. Laterifolia herba的商业草药配方已淹没了消费市场。然而,由于有意或无意的掺假,已经报道了肝毒性病例。据报道可能会掺入可能具有肝毒性的Teucrium spp。,T。canadense和T. chamaedrys。在这项研究中,高光谱成像与多元图像分析方法相结合,以无损方式区分了S. Laterifolia,T。canadense和T. chamaedrys原料。此外,还研究了使用开发的多元模型检测原材料掺假的能力。使用短波红外推扫式成像系统在920-2514nm波长范围内捕获化学图像。主成分分析应用于图像,以研究物种之间的化学差异。使用偏最小二乘判别分析对预先分配的类图像进行建模,分类模型预测加标原料中的掺假水平。使用UHPLC-MS作为独立的分析技术来确认这三种物质之间的化学差异。高光谱化学成像作为一种非破坏性技术在三种物种分化中的能力是通过分数散点图中的三个不同簇实现的。使用PC1和PC2的建模数据中92.3%的变化与这三个物种之间的化学差异相关。使用以下方法将1924nm和2092nm(正P1),1993nm和2186nm(负P1),1918nm,2092nm和2266nm(正P2)以及1993nm和2303nm(负P2)区域中的近红外信号确定为包含判别信息加载线图。加标样品的化学成像显示粉状样品中污染物的空间取向,并且根据像素丰度,在掺假率≥40%的情况下可以准确预测掺假百分比。

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