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首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Resolving batch chromatographic overlapping peaks of flavoring essence using stepwise key spectrum selection
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Resolving batch chromatographic overlapping peaks of flavoring essence using stepwise key spectrum selection

机译:使用逐步关键光谱选择方法来解析调味香精的分批色谱重叠峰

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摘要

Stepwise key spectrum selection (SKSS) was introduced to resolve batch overlapping peaks from gas chromatography-mass spectrometry (GC-MS) analysis of ten batch tobacco flavoring samples in different storage times. Resolution was implemented on a software platform that embedded the SKSS method. The data from GC-MS analysis of the samples were saved and prepared in ASCII files and then were inputted into the software platform for visual inspections. The data segment with overlapping peaks was precut for subsequent analysis. Spectral background in the data was removed using a linear fitting of the baseline. Four components in the overlapping peaks were automatically detected by the SKSS method. The resolution of the concentration profiles and spectra of the four components was conducted by setting only one parameter, the negative area ratio, as 0.01. The fixed size moving window evolving factor analysis and evolving factor analysis were applied to validate the resolved concentration profiles. The resolved mass spectra were validated by the searched standard through library search at the pure component regions revealed by the resolved concentration profiles. The results showed that the SKSS method could be a simple but powerful tool in resolving batch chromatographic overlapping peaks.
机译:引入逐步关键光谱选择(SKSS)来解析气相色谱-质谱法(GC-MS)分析十个批次的烟草调味料样品在不同存储时间下的批次重叠峰。解决方案是在嵌入SKSS方法的软件平台上实现的。将样品的GC-MS分析数据保存并准备为ASCII文件,然后输入到软件平台中进行目测。具有重叠峰的数据段已预先切入以进行后续分析。使用基线的线性拟合移除数据中的光谱背景。通过SKSS方法自动检测重叠峰中的四个成分。通过仅将一个参数(负面积比)设置为0.01来进行四种成分的浓度分布图和光谱的解析。使用固定大小的移动窗口展开因子分析和展开因子分析来验证解析的浓度曲线。所解析的质谱图是通过所搜索的标准品,通过库检索在所解析的浓度曲线所揭示的纯组分区域上进行验证的。结果表明,SKSS方法可能是解决批量色谱重叠峰的简单但功能强大的工具。

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