An integrative multi-omics approach aimed to gain insight on the effect of composition, style, yeast, and wheat species on wheat craft beer flavour

Food Chem. 2024 May 30:441:138387. doi: 10.1016/j.foodchem.2024.138387. Epub 2024 Jan 6.

Abstract

This study was aimed to unravel the effect of raw materials (barley and wheat), wheat concentration (0, 25, 40, and 100 %), wheat species (common and durum), beer style (Blanche and Weiss), and yeast (US-05 and WB-06) on the chemical composition, volatiles, and sensory profile of wheat craft beers by using a multivariate statistical approach. Beer samples were analysed for their composition, volatiles and sensory profile and data were processed using unsupervised multivariate analyses, PLS regression and a multi-omics approach using multi-block PLS-DA. Multi-block variable sparsification was used as an embedded dimension reduction step. The adopted multi-omics approach permitted to correctly classify beers with different styles and wheat concentration, and to accurate classify (95 % accuracy) beers according to yeast type. Wheat species was of lower importance since it permitted a classification with 49 % accuracy which increased to 74 % in Blanche beers, thus suggesting that malting flattened differences determined by wheat species.

Keywords: Beer formulation; Multi-omics; Multivariate statistics; Sensory analysis; Volatile organic compounds; Wheat beer.

MeSH terms

  • Beer / analysis
  • Multiomics
  • Saccharomyces cerevisiae*
  • Triticum
  • Yeast, Dried*