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正交分离:通过统计分析比较正交性指标

Orthogonal separations: Comparison of orthogonality metrics by statistical analysis.

作者信息

Schure Mark R, Davis Joe M

机构信息

Theoretical Separation Science Laboratory, Kroungold Analytical, Inc., 1299 Butler Pike, Blue Bell, PA 19422, USA.

Department of Chemistry and Biochemistry Southern Illinois University at Carbondale Carbondale, IL 62901-4409, USA.

出版信息

J Chromatogr A. 2015 Oct 2;1414:60-76. doi: 10.1016/j.chroma.2015.08.029. Epub 2015 Aug 18.

Abstract

Twenty orthogonality metrics (OMs) derived from convex hull, information theory, fractal dimension, correlation coefficients, nearest neighbor distances and bin-density techniques were calculated from a diverse group of 47 experimental two-dimensional (2D) chromatograms. These chromatograms comprise two datasets; one dataset is a collection of 2D chromatograms from Peter Carr's laboratory at the University of Minnesota, and the other dataset is based on pairs of one-dimensional chromatograms previously published by Martin Gilar and coworkers (Waters Corp.). The chromatograms were pooled to make a third or combined dataset. Cross-correlation results suggest that specific OMs are correlated within families of nearest neighbor methods, correlation coefficients and the information theory methods. Principal component analysis of the OMs show that none of the OMs stands out as clearly better at explaining the data variance than any another OM. Principal component analysis of individual chromatograms shows that different OMs favor certain chromatograms. The chromatograms exhibit a range of quality, as subjectively graded by nine experts experienced in 2D chromatography. The subjective (grading) evaluations were taken at two intervals per expert and demonstrated excellent consistency for each expert. Excellent agreement for both very good and very bad chromatograms was seen across the range of experts. However, evaluation uncertainty increased for chromatograms that were judged as average to mediocre. The grades were converted to numbers (percentages) for numerical computations. The percentages were correlated with OMs to establish good OMs for evaluating the quality of 2D chromatograms. Certain metrics correlate better than others. However, these results are not consistent across all chromatograms examined. Most of the nearest neighbor methods were observed to correlate poorly with the percentages. However, one method, devised by Clark and Evans, appeared to work moderately well. Products of OMs show better correlation with the percentages than do single OMs. Product OMs that utilize one discretized metric paired with the convex hull relative area, which measures overall zone occupancy, perform well in determining the "best" chromatogram among both datasets and the combined dataset. A definition of chromatographic orthogonality is suggested that is based on maximizing the values of OMs or OM products. This optimization criterion suggests using the product of a global metric that measures the utilization of separation space (e.g., the convex hull relative area) and a local metric that measures peak spacing (e.g., the box-counting fractal dimension). The "best" column pairs for 2D chromatography are chosen by the product of these OMs.

摘要

从47个不同的实验性二维(2D)色谱图中计算出了20种源自凸包、信息论、分形维数、相关系数、最近邻距离和箱密度技术的正交性度量(OM)。这些色谱图包含两个数据集;一个数据集是明尼苏达大学彼得·卡尔实验室的2D色谱图集合,另一个数据集基于马丁·吉拉尔及其同事(沃特世公司)之前发表的一维色谱图对。将这些色谱图合并以形成第三个或合并后的数据集。互相关结果表明,特定的OM在最近邻方法、相关系数和信息论方法家族中是相关的。对OM进行主成分分析表明,没有一个OM在解释数据方差方面明显优于其他任何OM。对单个色谱图进行主成分分析表明,不同的OM有利于某些色谱图。如由9位二维色谱经验丰富的专家主观分级所示,这些色谱图呈现出一系列质量。每位专家在两个时间间隔进行主观(分级)评估,并显示出每位专家的评估具有出色的一致性。在所有专家中,对于非常好和非常差的色谱图都有很好的一致性。然而,对于被判定为中等质量的色谱图,评估不确定性增加。为了进行数值计算,将等级转换为数字(百分比)。将这些百分比与OM相关联,以建立用于评估二维色谱图质量的良好OM。某些度量的相关性比其他度量更好。然而,这些结果在所有检查的色谱图中并不一致。观察到大多数最近邻方法与百分比的相关性较差。然而,一种由克拉克和埃文斯设计的方法似乎效果适中。OM的乘积与百分比的相关性比单个OM更好。利用一个离散化度量与凸包相对面积(用于测量总体区域占有率)配对的乘积OM,在确定两个数据集以及合并数据集中的“最佳”色谱图方面表现良好。提出了一种基于最大化OM或OM乘积值的色谱正交性定义。这种优化标准建议使用一个测量分离空间利用率的全局度量(例如凸包相对面积)和一个测量峰间距的局部度量(例如盒计数分形维数)的乘积。二维色谱的“最佳”柱对由这些OM的乘积选择。

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