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首页> 外文期刊>Applied Spectroscopy >Discriminant Analysis of Fused Positive and Negative Ion Mobility Spectra Using Multivariate Self-Modeling Mixture Analysis and Neural Networks
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Discriminant Analysis of Fused Positive and Negative Ion Mobility Spectra Using Multivariate Self-Modeling Mixture Analysis and Neural Networks

机译:融合正负离子迁移谱的判别分析,使用多元自建模混合物分析和神经网络

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摘要

A new method coupling multivariate self-modeling mixture analysis and pattern recognition has been developed to identify toxic industrial chemicals using fused positive and negative ion mobility spectra (dual scan spectra). A Smiths lightweight chemical detector (LCD), which can measure positive and negative ion mobility spectra simultaneously, was used to acquire the data. Simple-to-use interactive self-modeling mixture analysis (SIMPLISMA) was used to separate the analytical peaks in the ion mobility spectra from the background reactant ion peaks (RIP). The SIMPLSIMA analytical components of the positive and negative ion peaks were combined together in a butterfly representation (i.e., negative spectra are reported with negative drift times and reflected with respect to the ordinate and juxtaposed with the positive ion mobility spectra). Temperature constrained cascade-correlation neural network (TCCCN) models were built to classify the toxic industrial chemicals. Seven common toxic industrial chemicals were used in this project to evaluate the performance of the algorithm. Ten bootstrapped Latin partitions demonstrated that the classification of neural networks using the SIMPLISMA components was statistically better than neural network models trained with fused ion mobility spectra (IMS).
机译:已开发出一种将多元自建模混合物分析与模式识别相结合的新方法,以使用融合的正负离子迁移谱(双扫描谱)来识别有毒工业化学品。使用可以同时测量正离子和负离子迁移谱的Smiths轻型化学检测器(LCD)来获取数据。使用简单易用的交互式自建模混合物分析(SIMPLISMA)将离子迁移谱中的分析峰与背景反应物离子峰(RIP)分开。正离子峰和负离子峰的SIMPLSIMA分析成分以蝴蝶形式组合在一起(即,负谱以负漂移时间报告,并相对于纵坐标反映并与正离子迁移谱并列)。建立温度受限的级联相关神经网络(TCCCN)模型以对有毒工业化学品进行分类。该项目中使用了七种常见的有毒工业化学品来评估算法的性能。十个自举的拉丁文分区表明,使用SIMPLISMA组件对神经网络进行分类在统计上优于采用融合离子迁移谱(IMS)训练的神经网络模型。

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    《Applied Spectroscopy》 |2008年第2期|133-141|共9页
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