Longobardi F, Casiello G, Ventrella A, Mazzilli V, Nardelli A, Sacco D, Catucci L, Agostiano A
Dipartimento di Chimica, Università di Bari "Aldo Moro", Via Orabona 4, 70126 Bari, Italy.
Dipartimento di Chimica, Università di Bari "Aldo Moro", Via Orabona 4, 70126 Bari, Italy.
Food Chem. 2015 Mar 1;170:90-6. doi: 10.1016/j.foodchem.2014.08.057. Epub 2014 Aug 21.
Sweet cherries from two Italian regions, Apulia and Emilia Romagna, were analysed using electronic nose (EN) and isotope ratio mass spectrometry (IRMS), with the aim of distinguishing them according to their geographic origin. The data were elaborated by statistical techniques, examining the EN and IRMS datasets both separately and in combination. Preliminary exploratory overviews were performed and then linear discriminant analyses (LDA) were used for classification. Regarding EN, different approaches for variable selection were tested, and the most suitable strategies were highlighted. The LDA classification results were expressed in terms of recognition and prediction abilities and it was found that both EN and IRMS performed well, with IRMS showing better cross-validated prediction ability (91.0%); the EN-IRMS combination gave slightly better results (92.3%). In order to validate the final results, the models were tested using an external set of samples with excellent results.
对来自意大利两个地区阿普利亚和艾米利亚-罗马涅的甜樱桃进行了电子鼻(EN)和同位素比值质谱(IRMS)分析,目的是根据地理来源对它们进行区分。通过统计技术对数据进行了处理,分别并结合检查了EN和IRMS数据集。进行了初步探索性概述,然后使用线性判别分析(LDA)进行分类。关于EN,测试了不同的变量选择方法,并突出了最合适的策略。LDA分类结果以识别和预测能力表示,发现EN和IRMS都表现良好,IRMS显示出更好的交叉验证预测能力(91.0%);EN-IRMS组合给出了稍好的结果(92.3%)。为了验证最终结果,使用外部样本集对模型进行了测试,结果非常理想。