Thin-layer chromatography image analysis with leave-1-out method and cross-sectional study for quality assessment of a polyherbal preparation ‘Phikud Navakot’

IF 1.1 4区 化学 Q4 CHEMISTRY, ANALYTICAL Jpc-journal of Planar Chromatography-modern Tlc Pub Date : 2024-09-12 DOI:10.1007/s00764-024-00315-x
Panadda Phattanawasin, Jankana Burana-Osot, Uthai Sotanaphun
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Abstract

This paper introduces a new methodology for assessing the quality of a polyherbal preparation using thin-layer chromatography (TLC) image analysis integrated with the leave-1-out method and cross-sectional study. “Phikud Navakot”, a Thai polyherbal preparation for relieving circulatory disorders and dizziness, consisting of nine herbs, was used as a case study. The leave-1-out technique involves systematically excluding one herb at a time from the preparation to generate TLC profiles, which are then analyzed and compared with the original preparation. Another approach, based on a cross-sectional study of the TLC image, was employed by converting all track on the TLC image into red, green, and blue (RGB) profiles simultaneously for direct band-by-band comparison across chromatograms. The leave-1-out approach combined with image analysis enhances band detection clarity, allowing for a more precise assignment of each band to its corresponding herb. Regardless of whether the substance band in polyherbal preparation was distinctly noticeable, faint, closely adjacent, overlapping, or concealed, the approaches based on TLC image analysis integrated with the leave-1-out method and cross-sectional study were demonstrated to be effective analytical techniques for complex herbal preparations and could be applied to other herbal mixtures.

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薄层色谱图像分析与留空法和横断面研究用于多草药制剂 "Phikud Navakot "的质量评估
本文介绍了一种评估多草药制剂质量的新方法,该方法采用了薄层色谱(TLC)图像分析法,并结合了 "留一弃一 "法和横断面研究。"Phikud Navakot "是一种用于缓解循环系统疾病和头晕的泰国多草药制剂,由九种草药组成。剔除技术是指每次从制剂中系统地剔除一种草药,以生成 TLC 图谱,然后将其与原始制剂进行分析和比较。另一种方法基于对 TLC 图像的横截面研究,将 TLC 图像上的所有轨迹同时转换为红、绿、蓝 (RGB) 图谱,以便在色谱图中直接进行逐带比较。这种 "留-1-出 "方法与图像分析相结合,提高了色谱带检测的清晰度,可更精确地将每个色谱带分配给相应的药材。无论多草药制剂中的物质条带是明显、模糊、紧邻、重叠还是隐藏,基于 TLC 图像分析的方法结合留-1-剔除法和横截面研究都被证明是复杂草药制剂的有效分析技术,并可应用于其他草药混合物。
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来源期刊
CiteScore
2.20
自引率
18.80%
发文量
66
审稿时长
>12 weeks
期刊介绍: JPC - Journal of Planar Chromatography - Modern TLC is an international journal devoted exclusively to the publication of research papers on analytical and preparative planar chromatography. The journal covers all fields of planar chromatography, on all kinds of stationary phase (paper, layer, gel) and with various modes of migration of the mobile phase (capillary action or forced flow).
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