Strain-specific metabolic endpoints and predictive phase classification in gnotobiotic kimchi fermentation.

Journal: Food chemistry
Published Date:

Abstract

Fermentation is driven by dynamic interactions between substrates and microbial communities. However, the complexity of natural consortia limits their predictive control. To address this problem, we developed a gnotobiotic kimchi model via inoculation with defined lactic acid bacterial (LAB) consortia and individual strains under controlled temperatures. Consortium fermentations exhibited temperature-dependent growth and acidification, with stable proliferation under 6 °C and 10 °C, whereas 15 °C induced a rapid shift in community structure. Phase normalisation revealed convergence of microbial and metabolite profiles along a shared successional pattern. Machine learning identified a nine-metabolite signature (lactate, sucrose, fructose, glycine, glucose, succinate, threonine, choline, and glutamate) that accurately classified the fermentation phases with robust performance across internal and external datasets. Network analyses highlighted Leuconostoc mesenteroides and Lactococcus lactis as keystone metabolic species, whereas mono-association fermentation uncovered strain-specific metabolic endpoints and strategies. These findings established a predictive framework for LAB-driven kimchi fermentation.

Authors

Keywords

No keywords available for this article.