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Assessment of strawberry aroma through SPME/GC and ANN methods. Classification and discrimination of varieties

机译:通过SPME / GC和ANN方法评估草莓香气。品种分类与鉴别

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To provide an efficient and running analytical tool to strawberry plant breeders who have to characterize and compare the aromatic properties of new cultivars to those already known, a HS-SPME/GC-MS analysis method has been coupled-with a statistical treatment. method issued from the current development of artificial neuron networks (ANN), and more specifically, the unsupervised learning systems called Kohonen self-organizing maps (SOMs). So, 70 strawberry samples harvested at CIREF from 17 known varieties have been extracted by using a DVB/Carboxen/PDMS SPME fiber according to the headspace procedure, and then chromatographed. A panel of 23 characteristic aromatic constituents has been selected according to published results relative to strawberry aroma. The complex resulting matrix, collecting the relative abundance of the 23 selected constituents for each sample, has been input into the SOM software adapted and optimized from the Kohonen approach described by one of the authors. After a period of training, the self-organized system affords a map of virtual strawberries to which real samples. are compared and plotted in the best matching unit (BMU) of the map. The efficiency for discriminating the real samples according to their variety is dependent on the number of units selected to define the map. In this case, a 24-unit map allowed the complete discrimination of the 17 selected varieties. Moreover, to test the validity of this approach, two additional samples were blind-analyzed, and the results were computed according to the same procedure. At the end of this treatment, both samples were plotted into the same unit as those of the same variety used for training the map. [References: 37]
机译:为了向必须表征和比较新品种的芳香特性的草莓植物育种者提供一种有效且运行良好的分析工具,HS-SPME / GC-MS分析方法已与统计处理相结合。一种方法是从人工神经元网络(ANN)的当前发展,尤其是称为Kohonen自组织图(SOM)的无监督学习系统发布的。因此,根据顶空程序,使用DVB / Carboxen / PDMS SPME纤维提取了来自CIREF的17个已知品种的70个草莓样品,并进行了色谱分离。根据有关草莓香气的公开结果,选择了23种特征性香气成分。收集到的每个样品的23种选定成分的相对丰度的复杂结果矩阵已输入到SOM软件中,该软件根据一位作者描述的Kohonen方法进行了调整和优化。经过一段时间的培训,自组织系统提供了一个虚拟草莓图,其中包含真实样本。在地图的最佳匹配单位(BMU)中进行比较和绘制。根据真实样本的种类区分真实样本的效率取决于为定义图谱而选择的单位数量。在这种情况下,使用24个单元的图谱可以完全区分17个选定的品种。此外,为了测试该方法的有效性,对另外两个样本进行盲分析,并根据相同的程序计算结果。在该处理结束时,将两个样本绘制到与用于训练地图的相同品种的样本相同的单元中。 [参考:37]

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