Pattern Recognition Studies of Complex Chromatographic Data Sets.

P C Jurs, B K Lavine, T R Stouch
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引用次数: 19

Abstract

Chromatographic fingerprinting of complex biological samples is an active research area with a large and growing literature. Multivariate statistical and pattern recognition techniques can be effective methods for the analyisis of such complex data. However, the classification of complex samples on the basis of their chromatographic profiles is complicated by two factors: 1) confounding of the desired group information by experimental variables or other systematic variations, and 2) random or chance classification effects with linear discriminants. We will treat several current projects involving these effects and methods for dealing with the effects. Complex chromatographic data sets often contain information dependent on experimental variables as well as information which differentiates between classes. The existence of these types of complicating relationships is an innate part of fingerprint-type data. ADAPT, an interactive computer software system, has the clustering, mapping, and statistical tools necessary to identify and study these effects in realistically large data sets. In one study, pattern recognition analysis of 144 pyrochromatograms (PyGCs) from cultured skin fibroblasts was used to differentiate cystic fibrosis carriers from presumed normal donors. Several experimental variables (donor gender, chromatographic column number, etc.) were involved in relationships that had to be separated from the sought relationships. Notwithstanding these effects, discriminants were developed from the chromatographic peaks that assigned a given PyGC to its respective class (CF carrier vs normal) largely on the basis of the desired pathological difference. In another study, gas chromatographic profiles of cuticular hydrocarbon extracts obtained from 179 fire ants were analyzed using pattern recognition methods to seek relations with social caste and colony. Confounding relationships were studied by logistic regression. The data analysis techniques used in these two example studies will be presented. Previously, Monte Carlo simulation studies were carried out to assess the probability of chance classification for nonparametric and parametric linear discriminants. The level of expected chance classification as a function of the number of observations, the dimensionality, and the class membership distributions were examined. These simulation studies established limits on the approaches that can be taken with real data sets so that chance classifications are improbable.

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复杂色谱数据集的模式识别研究。
复杂生物样品的色谱指纹图谱是一个活跃的研究领域,有大量和不断增长的文献。多元统计和模式识别技术是分析此类复杂数据的有效方法。然而,基于色谱图谱对复杂样品进行分类有两个复杂的因素:1)实验变量或其他系统变化会混淆所需的类群信息;2)线性判别的随机或机会分类效应。我们将讨论涉及这些影响的几个当前项目以及处理这些影响的方法。复杂色谱数据集通常包含依赖于实验变量的信息以及区分类别的信息。这些类型的复杂关系的存在是指纹类型数据的固有部分。ADAPT是一个交互式计算机软件系统,具有必要的聚类、映射和统计工具,可以在实际的大数据集中识别和研究这些影响。在一项研究中,144张皮肤成纤维细胞热色谱图(PyGCs)的模式识别分析被用于区分囊性纤维化携带者和假定的正常供体。几个实验变量(供体性别、色谱柱数等)涉及的关系必须从所寻求的关系中分离出来。尽管存在这些影响,但根据所期望的病理差异,从色谱峰将给定的PyGC分配到其各自的类别(CF携带者与正常者)中发展出判别。在另一项研究中,利用模式识别方法分析了179只火蚁表皮碳氢化合物提取物的气相色谱图谱,以寻找其与社会等级和群体的关系。通过逻辑回归研究混杂关系。将介绍这两个示例研究中使用的数据分析技术。以前,进行蒙特卡罗模拟研究来评估非参数和参数线性判别器的机会分类概率。期望机会分类水平作为观察数的函数,维度和类成员分布进行了检查。这些模拟研究对可用于真实数据集的方法建立了限制,因此机会分类是不可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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