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Predicting and improving complex beer flavor through machine learning

Author

Listed:
  • Michiel Schreurs

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

  • Supinya Piampongsant

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

  • Miguel Roncoroni

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

  • Lloyd Cool

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR)
    KU Leuven)

  • Beatriz Herrera-Malaver

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

  • Christophe Vanderaa

    (KU Leuven)

  • Florian A. Theßeling

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

  • Łukasz Kreft

    (VIB Bioinformatics Core, VIB)

  • Alexander Botzki

    (VIB Bioinformatics Core, VIB)

  • Philippe Malcorps

    (AB InBev SA/NV)

  • Luk Daenen

    (AB InBev SA/NV)

  • Tom Wenseleers

    (KU Leuven)

  • Kevin J. Verstrepen

    (VIB—KU Leuven Center for Microbiology
    KU Leuven
    Leuven Institute for Beer Research (LIBR))

Abstract

The perception and appreciation of food flavor depends on many interacting chemical compounds and external factors, and therefore proves challenging to understand and predict. Here, we combine extensive chemical and sensory analyses of 250 different beers to train machine learning models that allow predicting flavor and consumer appreciation. For each beer, we measure over 200 chemical properties, perform quantitative descriptive sensory analysis with a trained tasting panel and map data from over 180,000 consumer reviews to train 10 different machine learning models. The best-performing algorithm, Gradient Boosting, yields models that significantly outperform predictions based on conventional statistics and accurately predict complex food features and consumer appreciation from chemical profiles. Model dissection allows identifying specific and unexpected compounds as drivers of beer flavor and appreciation. Adding these compounds results in variants of commercial alcoholic and non-alcoholic beers with improved consumer appreciation. Together, our study reveals how big data and machine learning uncover complex links between food chemistry, flavor and consumer perception, and lays the foundation to develop novel, tailored foods with superior flavors.

Suggested Citation

  • Michiel Schreurs & Supinya Piampongsant & Miguel Roncoroni & Lloyd Cool & Beatriz Herrera-Malaver & Christophe Vanderaa & Florian A. Theßeling & Łukasz Kreft & Alexander Botzki & Philippe Malcorps & L, 2024. "Predicting and improving complex beer flavor through machine learning," Nature Communications, Nature, vol. 15(1), pages 1-15, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-46346-0
    DOI: 10.1038/s41467-024-46346-0
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    References listed on IDEAS

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    1. Karin Voordeckers & Camilla Colding & Lavinia Grasso & Benjamin Pardo & Lore Hoes & Jacek Kominek & Kim Gielens & Kaat Dekoster & Jonathan Gordon & Elisa Van der Zande & Peter Bircham & Toon Swings & , 2020. "Ethanol exposure increases mutation rate through error-prone polymerases," Nature Communications, Nature, vol. 11(1), pages 1-16, December.
    2. Chinchanachokchai, Sydney & Thontirawong, Pipat & Chinchanachokchai, Punjaporn, 2021. "A tale of two recommender systems: The moderating role of consumer expertise on artificial intelligence based product recommendations," Journal of Retailing and Consumer Services, Elsevier, vol. 61(C).
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