When Machine Tastes Coffee:  Instrumental Approach To Predict the Sensory Profile of Espresso Coffee

Christian Lindinger,* David Labbe, Philippe Pollien, Andreas Rytz, Marcel A. Juillerat, Chahan Yeretzian, and Imre Blank§
Nestl Research Center, Vers-Chez-les-Blanc, 1000 Lausanne 26, Switzerland
Anal. Chem., 2008, 80 (5), pp 1574–1581
DOI: 10.1021/ac702196z
Publication Date (Web): January 26, 2008
Copyright © 2008 American Chemical Society
*

 Author to whom correspondence should be addressed. Phone:  +41 21 785 9384. E-mail:  christian.lindinger@rdls.nestle.com.

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 Nestlé Research Center, Lausanne, Switzerland.

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 Present address:  Nestlé Nespresso SA, Paudex, Switzerland.

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§

 Present address:  Nestlé Product Technology Center, Orbe, Switzerland.

Abstract

A robust and reproducible model was developed to predict the sensory profile of espresso coffee from instrumental headspace data. The model is derived from 11 different espresso coffees and validated using 8 additional espressos. The input of the model consists of (i) sensory profiles from a trained panel and (ii) on-line proton-transfer reaction mass spectrometry (PTR-MS) data. The experimental PTR-MS conditions were designed to simulate those for the sensory evaluation. Sixteen characteristic ion traces in the headspace were quantified by PTR-MS, requiring only 2 min of headspace measurement per espresso. The correlation is based on a knowledge-based standardization and normalization of both datasets that selectively extracts differences in the quality of samples, while reducing the impact of variations on the overall intensity of coffees. This work represents a significant progress in terms of correlation of sensory with instrumental results exemplified on coffee.

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History

  • Published In Issue March 01, 2008
  • Received for review October 24, 2007. Accepted November 23, 2007.

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