基于生物标记物和关键风味化合物筛选的机器学习识别和预测酱香型白酒的不同质量等级

IF 6.5 1区 农林科学 Q1 CHEMISTRY, APPLIED
Shuai Li , Tao Li , Yueran Han , Pei Yan , Guohui Li , Tingting Ren , Ming Yan , Jun Lu , Shuyi Qiu
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引用次数: 0

摘要

基酒的质量等级直接决定了酱香型白酒的最终质量。然而,这些等级的传统评估方法往往依赖于主观经验,缺乏客观性和准确性。本研究采用 GC-FID,结合定量描述性分析(QDA)和气味活性值(OAV),确定了醋酸、丙酸、油酸乙酯和异戊醇等 27 种关键风味化合物是造成质量等级差异的关键因素。此外,还确定了 16 种细菌生物标志物(包括 Komagataeibacter 和 Acetobacter 等)和 7 种真菌生物标志物(包括曲霉和 Monascus 等),它们是影响这些差异的关键微生物。此外,降低九陂酒的含糖量也会对白酒基酒的品质产生显著影响。最后,对 11 个机器学习分类模型和 9 个预测模型进行了评估,从而为准确的质量等级分类和预测选择了最佳模型。这项研究为改进酱香型白酒的评价体系和确保质量的一致性奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning discrimination and prediction of different quality grades of sauce-flavor baijiu based on biomarker and key flavor compounds screening

Machine learning discrimination and prediction of different quality grades of sauce-flavor baijiu based on biomarker and key flavor compounds screening
The quality grade of base Baijiu directly determines the final quality of sauce-flavor Baijiu. However, traditional methods for assessing these grades often rely on subjective experience, lacking objectivity and accuracy. This study used GC-FID, combined with quantitative descriptive analysis (QDA) and odor activity value (OAV), to identify 27 key flavor compounds, including acetic acid, propionic acid, ethyl oleate, and isoamyl alcohol etc., as crucial contributors to quality grade differences. Sixteen bacterial biomarkers, including Komagataeibacter and Acetobacter etc., and 7 fungal biomarkers, including Aspergillus and Monascus etc., were identified as key microorganisms influencing these differences. Additionally, reducing sugar content in Jiupei significantly impacted base Baijiu quality. Finally, 11 machine learning classification models and 9 prediction models were evaluated, leading to the selection of the optimal model for accurate quality grade classification and prediction. This study provides a foundation for improving the evaluation system of sauce-flavor Baijiu and ensuring consistent quality.
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来源期刊
Food Chemistry: X
Food Chemistry: X CHEMISTRY, APPLIED-
CiteScore
4.90
自引率
6.60%
发文量
315
审稿时长
55 days
期刊介绍: Food Chemistry: X, one of three Open Access companion journals to Food Chemistry, follows the same aims, scope, and peer-review process. It focuses on papers advancing food and biochemistry or analytical methods, prioritizing research novelty. Manuscript evaluation considers novelty, scientific rigor, field advancement, and reader interest. Excluded are studies on food molecular sciences or disease cure/prevention. Topics include food component chemistry, bioactives, processing effects, additives, contaminants, and analytical methods. The journal welcome Analytical Papers addressing food microbiology, sensory aspects, and more, emphasizing new methods with robust validation and applicability to diverse foods or regions.
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