Jurs P C
Science. 1986 Jun 6;232(4755):1219-24. doi: 10.1126/science.3704647.
Pattern recognition and allied multivariate methods provide an approach to the interpretation of the multivariate data often encountered in analytical chemistry. Widely used methods include mapping and display, discriminant development, clustering, and modeling. Each has been applied to a variety of chemical problems, and examples are given. The results of two recent studies are shown, a classification of subjects as normal or cystic fibrosis heterozygotes and simulation of chemical shifts of carbon-13 nuclear magnetic resonance spectra by linear model equations.
模式识别及相关多元方法为解析分析化学中经常遇到的多元数据提供了一种途径。广泛使用的方法包括映射与展示、判别式开发、聚类和建模。每种方法都已应用于各种化学问题,并给出了示例。展示了两项近期研究的结果,一是将受试者分类为正常或囊性纤维化杂合子,二是通过线性模型方程模拟碳-13核磁共振谱的化学位移。