Duarte Iola F, Barros António, Almeida Cláudia, Spraul Manfred, Gil Ana M
Department of Chemistry, Campus de Santiago, University of Aveiro, 3810-193 Aveiro, Portugal.
J Agric Food Chem. 2004 Mar 10;52(5):1031-8. doi: 10.1021/jf030659z.
In this work, principal component analysis (PCA) is applied to the FTIR-ATR and the (1)H NMR spectra of 50 beers differing in label and type (ale, lager, alcohol-free), to identify the spectral parameters that may provide rapid information about factors affecting beer production. PCA of FTIR data resulted in the separation of beers mainly according to their alcoholic content, providing little information on components other than ethanol contributing to the variability within the samples. PCA of (1)H NMR spectra, performed on the region where major beer components resonate (3.0-6.0 ppm), resulted in the separation of samples into four groups: two groups characterized by the predominance of dextrins, one group of alcohol-free beers characterized by the predominance of maltose, and one group where glucose was found to predominate. By performing PCA on aliphatic and aromatic regions, the contribution of minor components was highlighted. In particular, most ales, lagers, and alcohol-free samples could be distinguished based on their aromatic composition, thus reflecting the high sensitivity of the low-field NMR region toward different types of beer fermentation.
在这项工作中,主成分分析(PCA)被应用于50种标签和类型(麦芽啤酒、贮藏啤酒、无酒精啤酒)不同的啤酒的傅里叶变换红外光谱衰减全反射(FTIR-ATR)和氢核磁共振(¹H NMR)光谱,以识别那些可能提供有关影响啤酒生产因素的快速信息的光谱参数。FTIR数据的PCA主要根据啤酒的酒精含量对其进行分离,除乙醇外,几乎没有提供关于导致样品内变异性的其他成分的信息。在主要啤酒成分共振的区域(3.0 - 6.0 ppm)进行的¹H NMR光谱的PCA,将样品分为四组:两组以糊精占主导为特征,一组无酒精啤酒以麦芽糖占主导为特征,还有一组以葡萄糖占主导。通过对脂肪族和芳香族区域进行PCA,突出了次要成分的贡献。特别是,大多数麦芽啤酒、贮藏啤酒和无酒精样品可以根据其芳香成分来区分,从而反映出低场NMR区域对不同类型啤酒发酵的高灵敏度。