University Laboratory High School, University of Illinois at Urbana-Champaign, 1212 W Springfield Ave., Urbana, Illinois 61801, USA.
Anal Chem. 2010 Mar 1;82(5):2067-73. doi: 10.1021/ac902823w.
The analysis of complex mixtures presents a difficult challenge even for modern analytical techniques, and the ability to discriminate among closely similar such mixtures often remains problematic. Coffee provides a readily available archetype of such highly multicomponent systems. The use of a low-cost, sensitive colorimetric sensor array for the detection and identification of coffee aromas is reported. The color changes of the sensor array were used as a digital representation of the array response and analyzed with standard statistical methods, including principal component analysis (PCA) and hierarchical clustering analysis (HCA). PCA revealed that the sensor array has exceptionally high dimensionality with 18 dimensions required to define 90% of the total variance. In quintuplicate runs of 10 commercial coffees and controls, no confusions or errors in classification by HCA were observed in 55 trials. In addition, the effects of temperature and time in the roasting of green coffee beans were readily observed and distinguishable with a resolution better than 10 degrees C and 5 min, respectively. Colorimetric sensor arrays demonstrate excellent potential for complex systems analysis in real-world applications and provide a novel method for discrimination among closely similar complex mixtures.
即使对于现代分析技术,分析复杂混合物也提出了一个艰巨的挑战,而区分紧密相似的此类混合物的能力通常仍然存在问题。咖啡提供了一个现成的此类高度多组分系统的原型。本文报道了使用低成本、高灵敏度的比色传感器阵列来检测和识别咖啡香气。传感器阵列的颜色变化被用作阵列响应的数字表示,并使用标准统计方法进行分析,包括主成分分析(PCA)和层次聚类分析(HCA)。PCA 表明,传感器阵列具有极高的维度,需要 18 个维度才能定义总方差的 90%。在五次重复运行的 10 种商业咖啡和对照品中,在 55 次试验中,HCA 没有观察到分类混淆或错误。此外,在烘焙绿咖啡豆时,温度和时间的影响可以很容易地观察到,分辨率分别优于 10°C 和 5 分钟。比色传感器阵列在实际应用中对复杂系统分析具有优异的潜力,并为区分紧密相似的复杂混合物提供了一种新方法。