Structural Features for Furan-Derived Fruity and Meaty Aroma Impressions

Author:

Wailzer Bettina1,Klocker Johanna1,Wolschann Peter12,Buchbauer Gerhard3

Affiliation:

1. Institute of Theoretical Chemistry, University of Vienna, Vienna, Austria

2. Department of Pharmaceutical Technology and Biopharmaceutics, University of Vienna, Vienna, Austria

3. Department of Pharmaceutical Chemistry, University of Vienna, Vienna, Austria

Abstract

Furan derivatives are part of nearly all food aromas. They are mainly formed by thermal degradation of carbohydrates and ascorbic acid and from sugar-amino acid interactions during food processing. Caramel-like, sweet, fruity, nutty, meaty, and burnt odor impressions are associated with this class of compounds. In the presented work, structure-activity relationship (SAR) investigations are performed on a series of furan derivatives in order to find structural subunits, which are responsible for the particular characteristic flavors. Therefore, artificial neural networks are applied on a set of 35 furans with the aroma categories “meaty” or “fruity” to calculate a classification rule and class boundaries for these two aroma impressions. By training a multilayer perceptron network architecture with a backpropagation algorithm, a correct classification rate of 100% is obtained. The neural network is able to distinguish between the two studied groups by using the following significant descriptors as inputs: number of sulfur atoms, Looping Centric Information Index, Folding Degree Index and Petitjean Shape Indices. Finally, the results clearly demonstrate that artificial neural networks are successful tools to investigate non-linear qualitative structure-odor relationships of aroma compounds.

Publisher

SAGE Publications

Subject

Complementary and alternative medicine,Plant Science,Drug Discovery,Pharmacology,General Medicine

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