Too large of a higher alcohol content
has negative effects on the
liquor taste and health. Revealing the key microbes and their key
driving forces is essential to regulate the higher alcohol content
in spontaneous liquor fermentation. Herein, we used high-throughput
sequencing associated with a multivariate statistical algorithm to
reveal the contributing microbes for higher alcohol production in
Chinese light-aroma-type liquor and identified that Saccharomyces and Pichia were the main contributors. In addition, the C/N ratio and microbial
interaction were found to significantly affect the production of higher
alcohols. Herein, we used response surface methodology to establish
a predictive model for higher alcohol production with the regulating
factors, and the content of total higher alcohols decreased significantly
from 328.80 ± 24.83 to 114.88 ± 5.02 mg/L with the optimized
levels of the regulators. This work would facilitate the control of
flavor production via regulating microbial communities in food fermentation.
Predominant odorants in modern and traditional types of Chinese xiaoqu liquor (Baijiu) were identified and compared by the combined use of gas chromatography−olfactometry, odor activity values (OAVs), and multivariate analyses. A total of 79 aroma compounds were identified in a typical modern type xiaoqu Baijiu (M) and a typical traditional type xiaoqu Baijiu (T), 42 of them had OAV > 1 in both M and T samples. The main differences between the two samples were obtained for the concentration of 23 aroma-active compounds. A total of 22 samples made by different brewing processes were analyzed to confirm the differences. Partial least squares discriminant analysis confirmed that 20 compounds could be used as potential markers for discrimination between modern type xiaoqu Baijiu and traditional type xiaoqu Baijiu. Their difference in content is between 1.5 and 17.9 times for modern type xiaoqu Baijiu and traditional type xiaoqu Baijiu. The results showed the aroma characteristics of modern and traditional type xiaoqu Baijiu clearly and comprehensively, which will provide guidance for modern Baijiu quality control and evaluation.
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