Pyrolysis-mass spectrometry for rapid classification of oysters according to rearing area.

Analusis Pub Date : 2000-11-01 DOI:10.1051/ANALUSIS:2000150
M. Cardinal, C. Viallon, C. Thonat, J. Berdagué
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引用次数: 9

Abstract

Current concern for the safety and traceability of food, as well as the desire of oyster farmers, for marketing reason, to emphasise the geographical origin of their production, requires new methods to make possible a real product identification. I n this study, 181 oyster samples were analysed to determine their origin area. These samples were collected in nine French rear- ing areas at four different times of the year (spring, summer, and the beginning and end of autumn) and from four to eight sites in each area to provide a variability parameter. Analysis of fingerprints after Curie point pyrolysis-mass spectrometry, by an a rti- ficial neural network gave a mean classification rate of 89 %. Although the technique requires further improvements, it appears to be a useful discriminative tool for rapid identification of an oyster production area.
牡蛎养殖区热裂解-质谱法快速分类。
目前对食品安全和可追溯性的关注,以及牡蛎养殖者出于市场原因强调其生产的地理来源的愿望,需要新的方法来实现真正的产品识别。在这项研究中,对181个牡蛎样本进行了分析,以确定它们的原产地。这些样本是在一年中的四个不同时间(春季、夏季、秋初和秋末)从法国九个后方地区的4到8个地点收集的,以提供变异性参数。利用人工神经网络对居里点热解-质谱分析后的指纹进行分类,平均分类率为89%。虽然该技术需要进一步改进,但它似乎是一种有用的判别工具,可以快速识别牡蛎产地。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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