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Local Rank Deficiency Caused Problems in Analyzing Chemical Data

机译:局部排名缺乏造成分析化学数据的问题

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摘要

Multivariate curve resolution (MCR) is a powerful methodology for analyzing chemical data in different application fields such as pharmaceutical analysis, agriculture, food chemistry, environment, and industrial and clinical chemistry. However, MCR results are often complicated by rotational ambiguity, meaning that there is a range of feasible solutions that fulfill the constraints and explain equally well the observed experimental data. Constraints determine the properties of resolved profiles in MCR methods by enforcing different assumptions on data. The applied constraints on chemical data sets should be derived from the physical nature and prior knowledge of the system under study. Therefore, the reliability of the constraints in order to get accurate results is a critical aspect that should be considered by analytical chemists who use MCR methods. Local rank information plays a key role in the curve resolution of multicomponent chemical systems. Applying the local rank constraint can reduce the extent of rotational ambiguity considerably, and in some cases, unique solutions can be achieved. Local rank exploratory methods like Evolving Factor Analysis (EFA) method provide local rank maps in order to obtain the presence pattern of components on the main assumption that the number of components in each window is equal to its rank. It is shown in this work that the local rank is a mathematical concept that may not be in concordance with chemical information. Thus, applying the local rank constraint for restricting the rotational ambiguity in MCR methods can lead to incorrect solutions! This problem is due to "local rank deficiency", which is introduced in this contribution.
机译:多变量曲线分辨率(MCR)是一种强大的方法,用于分析不同应用领域的化学数据,如药学分析,农业,食品化学,环境和工业和临床化学。然而,MCR结果通常因旋转模糊而变得复杂,这意味着存在一系列可行的解决方案,其满足约束并同样地解释了观察到的实验数据。约束通过强制执行数据上的不同假设,确定MCR方法中解析配置文件的属性。化学数据集的应用约束应源自研究中系统的物理性质和先验知识。因此,为了获得准确的结果的约束的可靠性是应由使用MCR方法的分析化学家应考虑的关键方面。本地等级信息在多组分化学系统的曲线分辨率中起着关键作用。应用当地秩约束可以显着降低旋转模糊的程度,并且在某些情况下,可以实现独特的解决方案。局部排名探索方法,如不断变化的因子分析(EFA)方法提供本地秩图,以便在主假设上获取组件的存在模式,每个窗口中的组件数量等于其等级。在这项工作中显示了当地等级是一个数学概念,可能不与化学信息一致。因此,应用用于限制MCR方法中的旋转模糊性的本地秩约为可能导致解决不正确!这个问题是由于“地方排名缺陷”,这在这一贡献中介绍。

著录项

  • 来源
    《Analytical chemistry》 |2017年第4期|共8页
  • 作者单位

    Inst Adv Studies Basic Sci Fac Chem POB 45195-1159 Zanjan Iran;

    Univ Szeged Inst Proc Engn Fac Engn Moszkvai Krt 5-7 H-6725 Szeged Hungary;

    Inst Adv Studies Basic Sci Fac Chem POB 45195-1159 Zanjan Iran;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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