首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >A new statistical method for the automated detection of peaks in UV-DAD chromatograms of a sample mixture
【24h】

A new statistical method for the automated detection of peaks in UV-DAD chromatograms of a sample mixture

机译:一种自动检测样品混合物UV-DAD色谱图中峰的新统计方法

获取原文
获取原文并翻译 | 示例
           

摘要

One of the major issues within the context of the fully automated development of chromatographic methods consists of the automated detection and identification of peaks coming from complex samples such as multi-component pharmaceutical formulations or stability studies of these formulations. The same problem can also occur with plant materials or biological matrices. This step is thus critical and time-consuming, especially when a Design of Experiments (DOE) approach is used to generate chromatograms. The use of DOE will often maximize the changes of the analytical conditions in order to explore an experimental domain. Unfortunately, this generally provides very different and "unpredictable" chromatograms which can be difficult to interpret, thus complicating peak detection and peak tracking (i.e. matching peaks among all the chromatograms). In this context, Independent Components Analysis (ICA), a new statistically based signal processing methods was investigated to solve this problem. The ICA principle assumes that the observed signal is the resultant of several phenomena (known as sources) and that all these sources are statistically independent. Under those assumptions, ICA is able to recover the sources which will have a high probability of representing the constitutive components of a chromatogram. In the present study, ICA was successfully applied for the first time to HPLC-UV-DAD chromatograms and it was shown that ICA allows differentiation of noise and artifact components from those of interest by applying clustering methods based on high-order statistics computed on these components. Furthermore, on the basis of the described numerical strategy, it was also possible to reconstruct a cleaned chromatogram with minimum influence of noise and baseline artifacts. This can present a significant advance towards the objective of providing helpful tools for the automated development of liquid chromatography (LC) methods. It seems that analytical investigations could be shortened when using this type of methodologies.
机译:色谱方法的全自动开发范围内的主要问题之一是自动检测和鉴定来自复杂样品(例如多组分药物制剂或这些制剂的稳定性)的峰。植物材料或生物基质也可能发生相同的问题。因此,此步骤非常关键且耗时,尤其是在使用实验设计(DOE)方法生成色谱图时。 DOE的使用通常会最大化分析条件的变化,以探索实验领域。不幸的是,这通常会提供非常不同且“难以预测”的色谱图,可能难以解释,从而使峰检测和峰跟踪变得复杂(即,所有色谱图中的峰均匹配)。在这种情况下,独立成分分析(ICA)是一种新的基于统计的信号处理方法,旨在解决这一问题。 ICA原理假定观察到的信号是几种现象(称为源)的结果,并且所有这些源在统计上都是独立的。在这些假设下,ICA能够回收很有可能代表色谱图组成成分的来源。在本研究中,ICA首次成功应用于HPLC-UV-DAD色谱图,结果表明ICA通过应用基于对这些噪声和伪影成分进行计算的高阶统计量的聚类方法,可以区分噪声和伪影成分与感兴趣的成分组件。此外,基于所描述的数值策略,还可以重建噪声和基线伪影影响最小的净化色谱图。这可以朝着为液相色谱(LC)方法的自动化开发提供有用工具的目标方面取得重大进展。使用这种方法似乎可以缩短分析研究的时间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号