Centre for Microbial Innovation, School of Biological Sciences, The University of Auckland, Auckland 1142, New Zealand.
Appl Environ Microbiol. 2011 Nov;77(21):7605-10. doi: 10.1128/AEM.00469-11. Epub 2011 Sep 2.
The early detection of microbial contamination is crucial to avoid process failure and costly delays in fermentation industries. However, traditional detection methods such as plate counting and microscopy are labor-intensive, insensitive, and time-consuming. Modern techniques that can detect microbial contamination rapidly and cost-effectively are therefore sought. In the present study, we propose gas chromatography-mass spectrometry (GC-MS)-based metabolic footprint analysis as a rapid and reliable method for the detection of microbial contamination in fermentation processes. Our metabolic footprint analysis detected statistically significant differences in metabolite profiles of axenic and contaminated batch cultures of microalgae as early as 3 h after contamination was introduced, while classical detection methods could detect contamination only after 24 h. The data were analyzed by discriminant function analysis and were validated by leave-one-out cross-validation. We obtained a 97% success rate in correctly classifying samples coming from contaminated or axenic cultures. Therefore, metabolic footprint analysis combined with discriminant function analysis presents a rapid and cost-effective approach to monitor microbial contamination in industrial fermentation processes.
早期发现微生物污染对于避免发酵工业过程失败和昂贵的延误至关重要。然而,传统的检测方法,如平板计数和显微镜检查,既费力、不敏感又耗时。因此,人们正在寻求能够快速、经济有效地检测微生物污染的现代技术。在本研究中,我们提出基于气相色谱-质谱(GC-MS)的代谢足迹分析作为一种快速可靠的方法,用于检测发酵过程中的微生物污染。我们的代谢足迹分析早在污染后 3 小时就检测到了无菌和污染批次培养的微藻代谢物图谱的统计学显著差异,而传统的检测方法只能在 24 小时后才能检测到污染。数据通过判别函数分析进行分析,并通过留一法交叉验证进行验证。我们在正确分类来自污染或无菌培养的样品方面取得了 97%的成功率。因此,代谢足迹分析结合判别函数分析为监测工业发酵过程中的微生物污染提供了一种快速、经济有效的方法。