基于拉曼光谱技术的乳酸菌和酵母菌快速筛选鉴定策略及其在发酵食品中的应用

IF 7 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY Food Research International Pub Date : 2024-10-24 DOI:10.1016/j.foodres.2024.115249
Shijie Liu , Lijun Zhao , Miaoyun Li , Jong-Hoon Lee , Yaodi Zhu , Yanxia Liu , Lingxia Sun , Yangyang Ma , Qiancheng Tu , Gaiming Zhao , Dong Liang
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摘要

益生菌资源开发迫切需要快速、灵敏、全面、低成本的初步筛选和快速鉴定方法。本文基于拉曼光谱技术构建了一种无需培养、准确灵敏的 "分离-富集-检测 "发酵食品中益生菌快速评价与鉴定方法,并以 "热点 "均匀、信号增强能力强的AgNPs纳米结构阵列芯片作为SERS基底,建立了乳酸菌和酵母菌的拉曼光谱参考。系统聚类分析可以清晰地区分不同属的乳酸菌和酵母菌,并能显示同属乳酸菌和同属酵母菌之间的亲和性和差异性。卷积神经网络的识别准确率为 100%,识别灵敏度小于 10 CFU/mL。我们利用速度梯度离心法和密度梯度差速离心法构建了一种益生菌分离富集方法,在实际应用中乳酸菌和酵母菌的平均回收率大于 98%,验证分类的准确率为 100%。总之,本研究建立了 "先筛选后培养 "的乳酸菌和酵母菌初筛策略,突破了目前传统的 "先培养后筛选 "范式的原理限制。它可以大大提高发酵食品中益生菌的初筛率,为从环境或复杂基质样品中挖掘益生菌资源提供良好的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Rapid screening and identification strategy of lactic acid bacteria and yeasts based on Ramanomes technology and its application in fermented food
There is an urgent need for quick, sensitive, thorough, and low-cost preliminary screening and rapid identification method for probiotic resource development. Here, we constructed a culture-free, accurate and sensitive “separation-enrichment-detection” rapid evaluation and identification method of probiotics in fermented food based on Ramanomes technology, and established a Ramanome reference of lactic acid bacteria and yeasts by AgNPs nanostructure array (AgNPs NSA) chips with uniform “hot spots” and high signal enhancement ability as SERS substrates. Systematic cluster analysis could clearly distinguish among different genera of lactic acid bacteria and yeast, and could indicate the affinity and difference between lactic acid bacteria of the same genus and yeast of the same genus. The recognition accuracy of convolutive neural networks was 100 %, and the recognition sensitivity was less than 10 CFU/mL. We constructed a probiotic isolation and enrichment method by velocity gradient centrifugation and density gradient differential centrifugation, and the average recoveries of lactobacilli and yeasts were greater than 98 % in the practical application, and the accuracy of the verified classification was 100 %. In conclusion, this study has established a preliminary screening strategy of “screening before cultivating” for lactic acid bacteria and yeasts, which breaks through the principle limitation of the current traditional paradigm of “cultivating before screening”. It can greatly improve the preliminary screening rate of probiotics in fermented foods, and provide a good technical support for the mining of probiotic resources from environmental or complex matrix samples.
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来源期刊
Food Research International
Food Research International 工程技术-食品科技
CiteScore
12.50
自引率
7.40%
发文量
1183
审稿时长
79 days
期刊介绍: Food Research International serves as a rapid dissemination platform for significant and impactful research in food science, technology, engineering, and nutrition. The journal focuses on publishing novel, high-quality, and high-impact review papers, original research papers, and letters to the editors across various disciplines in the science and technology of food. Additionally, it follows a policy of publishing special issues on topical and emergent subjects in food research or related areas. Selected, peer-reviewed papers from scientific meetings, workshops, and conferences on the science, technology, and engineering of foods are also featured in special issues.
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