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首页> 外文期刊>Journal of Agricultural and Food Chemistry >Mass Spectrometry Based Sensor Strategies for the Authentication of Oysters According to Geographical Origin
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Mass Spectrometry Based Sensor Strategies for the Authentication of Oysters According to Geographical Origin

机译:基于质谱的基于牡蛎鉴定的传感器策略

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This study was undertaken to investigate the relevance of using the pyrolysis-MS (Py-MS) technique to discriminate the production area of oysters harvested over two years and to assess from the data of the second year of harvest the potential of an alternative MS-based technique,the solid phase microextraction-MS (SPME-MS),to perform this discrimination.Oysters were harvested in various areas of France,and models of discrimination according to harvest season were built from Py-MS fingerprints and from virtual SPME-MS fingerprints obtained by summing the mass spectra generated by the SPME-GC-MS system.The treatment of the Py-MS data by a 21-12-3 artificial neural networks led to a correct classification of only 89.2% of the oyster samples according to shoreline.The misclassifications thus did not allow use of the Py-MS technique as a relevant tool for authentication of oyster origin.The assessment of the potential of the virtual SPME-MS fingerprints to discriminate the production area of oysters was undertaken on a part of the sample set.The virtual SPME-MS data were pretreated according to two methods,filtering of raw data (FRD) and comprehensive combinatory standard correction (CCSC),a recently developed chemometric method used for the correction of instrumental signal drifts in MS systems.The results obtained with the virtual SPME-MS fingerprints are promising because this technique,when the data were pretreated by the CCSC method,led to a successful discrimination of the oyster samples not only according to shoreline but also according to production region.This study confirms that an efficient correction method (CCSC) of instrumental drifts can considerably increase the discriminative information contained in the volatile fraction of food products.
机译:进行这项研究的目的是调查使用热解-质谱(Py-MS)技术来区分两年以上收获的牡蛎的产区,并从收获第二年的数据评估另一种MS-的潜力。在法国不同地区收获牡蛎,并根据Py-MS指纹图谱和虚拟SPME-MS建立了根据收获季节的区别模型。通过对SPME-GC-MS系统产生的质谱图求和获得的指纹图谱。通过21-12-3人工神经网络对Py-MS数据进行处理,根据结果,仅对89.2%的牡蛎样品进行了正确分类因此,错误分类不允许使用Py-MS技术作为鉴定牡蛎产地的相关工具。评估虚拟SPME-MS指纹识别生产区域的潜力对部分样本进行了牡蛎处理。根据两种方法对虚拟SPME-MS数据进行了预处理:原始数据过滤(FRD)和综合组合标准校正(CCSC),这是最近开发的用于校正的化学计量学方法虚拟SPME-MS指纹图谱获得的结果是有希望的,因为该技术在CCSC方法预处理数据时不仅可以根据海岸线而且可以成功地识别牡蛎样品该研究证实,仪器漂移的有效校正方法(CCSC)可以大大增加食品挥发性成分中的鉴别信息。

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