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Volatile Compound Fingerprinting of Mixed-Culture Fermentations

机译:混合培养物中挥发性化合物的指纹图谱

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With the advent of the -omics era, classical technology platforms, such as hyphenated mass spectrometry, are currently undergoing a transformation toward high-throughput application. These novel platforms yield highly detailed metabolite profiles in large numbers of samples. Such profiles can be used as fingerprints for the accurate identification and classification of samples as well as for the study of effects of experimental conditions on the concentrations of specific metabolites. Challenges for the application of these methods lie in the acquisition of high-quality data, data normalization, and data mining. Here, a high-throughput fingerprinting approach based on analysis of headspace volatiles using ultrafast gas chromatography coupled to time of flight mass spectrometry (ultrafast GC/TOF-MS) was developed and evaluated for classification and screening purposes in food fermentation. GC-MS mass spectra of headspace samples of milk fermented by different mixed cultures of lactic acid bacteria (LAB) were collected and preprocessed in MetAlign, a dedicated software package for the preprocessing and comparison of liquid chromatography (LC)-MS and GC-MS data. The Random Forest algorithm was used to detect mass peaks that discriminated combinations of species or strains used in fermentations. Many of these mass peaks originated from key flavor compounds, indicating that the presence or absence of individual strains or combinations of strains significantly influenced the concentrations of these components. We demonstrate that the approach can be used for purposes like the selection of strains from collections based on flavor characteristics and the screening of (mixed) cultures for the presence or absence of strains. In addition, we show that strain-specific flavor characteristics can be traced back to genetic markers when comparative genome hybridization (CGH) data are available.
机译:随着组学时代的到来,诸如联用质谱法之类的经典技术平台目前正在向高通量应用领域转变。这些新颖的平台可在大量样品中产生高度详细的代谢产物概况。这样的概况可以用作指纹图谱,以准确鉴定和分类样品,以及研究实验条件对特定代谢物浓度的影响。这些方法的应用面临的挑战在于高质量数据的获取,数据规范化和数据挖掘。在此,开发了一种高通量指纹分析方法,该方法基于使用超快速气相色谱与飞行时间质谱联用(超快速GC / TOF-MS)分析顶空挥发物的方法,并针对食品发酵中的分类和筛选目的进行了评估。收集了由乳酸菌(LAB)的不同混合培养物发酵的牛奶顶空样品的GC-MS质谱图,并在MetAlign进行了预处理,该软件包是用于液相色谱(LC)-MS和GC-MS的预处理和比较的专用软件包数据。随机森林算法用于检测能区分发酵中使用的物种或菌株组合的质量峰。这些质量峰中的许多源自关键风味化合物,表明单个菌株或菌株组合的存在与否会显着影响这些组分的浓度。我们证明该方法可用于多种目的,例如根据风味特征从馆藏中选择菌株,以及筛选(混合)培养物是否存在菌株。此外,我们显示当比较基因组杂交(CGH)数据可用时,菌株特异性风味特征可以追溯到遗传标记。

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