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利用基于新感官组学的专家系统(SEBES)——一种在确定食物气味代码中使用人工智能的方法——对一种商业朗姆酒和一种澳大利亚红葡萄酒中的关键香气化合物进行特征描述。

Characterization of Key Aroma Compounds in a Commercial Rum and an Australian Red Wine by Means of a New Sensomics-Based Expert System (SEBES)-An Approach To Use Artificial Intelligence in Determining Food Odor Codes.

机构信息

Leibniz-Institute for Food Systems Biology at the Technical University of Munich (formerly as Deutsche Forschungsanstalt für Lebensmittelchemie) , Lise-Meitner-Straße 34 , D-85354 Freising , Germany.

Department of Chemistry , Technical University of Munich , Lichtenbergstrasse 4 , D-85748 Garching , Germany.

出版信息

J Agric Food Chem. 2019 Apr 10;67(14):4011-4022. doi: 10.1021/acs.jafc.9b00708. Epub 2019 Mar 26.

Abstract

Although to date more than 10 000 volatile compounds have been characterized in foods, a literature survey has previously shown that only 226 aroma compounds, assigned as key food odorants (KFOs), have been identified to actively contribute to the overall aromas of about 200 foods, such as beverages, meat products, cheeses, or baked goods. Currently, a multistep analytical procedure involving the human olfactory system, assigned as Sensomics, represents a reference approach to identify and quantitate key odorants, as well as to define their sensory impact in the overall food aroma profile by so-called aroma recombinates. Despite its proven effectiveness, the Sensomics approach is time-consuming because repeated sensory analyses, for example, by GC/olfactometry, are essential to assess the odor quality and potency of each single constituent in a given food distillate. Therefore, the aim of the present study was to develop a fast, but Sensomics-based expert system (SEBES) that is able to reliably predict the key aroma compounds of a given food in a limited number of runs without using the human olfactory system. First, a successful method for the quantitation of nearly 100 (out of the 226 known KFOs) components was developed in combination with a software allowing the direct use of the identification and quantitation data for the calculation of odor activity values (OAV; ratio of concentration to odor threshold). Using a rum and a wine as examples, the quantitative results obtained by the new SEBES method were compared to data obtained by applying an aroma extract dilution analysis and stable isotope dilution assays required in the classical Sensomics approach. A good agreement of the results was found with differences below 20% for most of the compounds considered. By implementing the GC × GC data analysis software with the in-house odor threshold database, odor activity values (ratio of concentration to odor threshold) were directly displayed in the software pane. The OAVs calculated by the software were in very good agreement with data manually calculated on the basis of the data obtained by SIDA. Thus, it was successfully shown that it is possible to characterize key food odorants with one single analytical platform and without using the human olfactory system, that is, by "artificial intelligence smelling".

摘要

尽管迄今为止已经在食品中鉴定出超过 10000 种挥发性化合物,但文献综述表明,只有 226 种香气化合物被鉴定为对约 200 种食品(如饮料、肉类产品、奶酪或烘焙食品)的整体香气有积极贡献的关键食品气味物质(KFOs)。目前,涉及人类嗅觉系统的多步分析程序,被称为 Sensomics,是一种鉴定和定量关键气味物质的参考方法,以及通过所谓的香气重组体来定义它们在整个食品香气特征中的感官影响。尽管 Sensomics 方法已被证明是有效的,但它很耗时,因为需要进行多次感官分析,例如通过 GC/嗅觉测定法,以评估给定食品馏分中每个单一成分的气味质量和强度。因此,本研究的目的是开发一种快速的,但基于 Sensomics 的专家系统(SEBES),该系统能够在有限的运行次数内可靠地预测给定食品的关键香气化合物,而无需使用人类嗅觉系统。首先,开发了一种成功的方法,可用于定量测定近 100 种(226 种已知 KFO 中的 226 种)成分,该方法与一种软件结合使用,允许直接使用鉴定和定量数据来计算气味活性值(OAV;浓度与气味阈值的比值)。使用朗姆酒和葡萄酒作为示例,将新的 SEBES 方法获得的定量结果与应用香气提取稀释分析和经典 Sensomics 方法中所需的稳定同位素稀释分析获得的数据进行比较。发现大多数考虑的化合物的结果差异在 20%以下,结果非常吻合。通过在内部气味阈值数据库中实施 GC×GC 数据分析软件,气味活性值(浓度与气味阈值的比值)直接显示在软件窗格中。该软件计算的 OAV 与基于 SIDA 获得的数据手动计算的数据非常吻合。因此,成功地表明,有可能仅使用一个单一的分析平台并在不使用人类嗅觉系统的情况下,即通过“人工智能嗅觉”来表征关键食品气味物质。

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