通过拉曼气体光谱法测量 H2 和 CO2 检测牛奶中的细菌污染

Daniele Barbiero, F. Melison, L. Cocola, M. Fedel, Cristian Andrighetto, Paola De Dea, L. Poletto
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摘要

由于传统方法费时费力,而且对这些细菌缺乏特异性,因此目前乳制品行业检测牛奶中的梭状芽孢杆菌仍然是一个具有挑战性的问题。使用微生物技术是可行的,但反应时间长,成本高,而且需要合格的人员。巴氏杀菌法对梭状芽孢杆菌无效,梭状芽孢杆菌能在巴氏杀菌法中存活下来,并在奶酪老化过程中恢复为无性形态。梭状芽孢杆菌新陈代谢的特点是产生二氧化碳和氢气,这可能会导致奶酪出现裂缝,改变奶酪的口感和结构。对气体产生情况的分析表明了梭状芽孢杆菌的存在,因此可以利用它来检测梭状芽孢杆菌的存在。本研究提出了一种基于拉曼光谱的仪器,用于快速、经济地鉴定牛奶中的梭状芽孢杆菌。该方法依赖于 Brändle 等人(2016 年)确立的、被广泛采用的最可能数量 (MPN) 方法。不过,我们的创新之处在于采用了一种基于拉曼的仪器,以加快小瓶阳性检测的速度。该仪器还能区分梭菌感染和非产氢细菌。
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Detection of bacteria contamination in milk through H2 and CO2 measurements by Raman gas spectroscopy
Nowadays the Clostridium detection in milk for the dairy industry still is a challenging problem since traditional methods are time-consuming and lack specificity towards these bacteria. The use of microbiological techniques is possible but is expensive in terms of response time and requires qualified personnel. Pasteurization is ineffective against Clostridium spores which can survive the process and later revert to their vegetative form during cheese aging. The Clostridium metabolism is characterized by the production of carbon dioxide and hydrogen, which can lead to the formation of cracks and slits in the cheese altering its taste and structure. The analysis of gas production is indicative of the presence of Clostridia; therefore, it can be exploited to detect their presence. This study presents a Raman spectroscopy-based instrument for a rapid and cost-effective identification of Clostridium in milk. The methodology relies on the widely adopted Most Probable Number (MPN) method, as established by Brändle et al. (2016). However, our innovation lies in adoption of a Raman-based instrument to speed up the vial positivity detection. The instrument also enables the discrimination Clostridia infection from non-hydrogen-producing bacteria.
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