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首页> 外文期刊>Journal of applied physiology >Secondary electrospray ionization-mass spectrometry (SESI-MS) breathprinting of multiple bacterial lung pathogens, a mouse model study
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Secondary electrospray ionization-mass spectrometry (SESI-MS) breathprinting of multiple bacterial lung pathogens, a mouse model study

机译:小鼠肺部多种病原体的二次电喷雾电离质谱(SESI-MS)呼吸记录

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摘要

Bacterial pneumonia is one of the leading causes of disease-related morbidity and mortality in the world, in part because the diagnostic tools for pneumonia are slow and ineffective. To improve the diagnosis success rates and treatment outcomes for bacterial lung infections, we are exploring the use of secondary electrospray ionization-mass spectrometry (SESI-MS) breath analysis as a rapid, noninvasive method for determining the etiology of lung infections in situ. Using a murine lung infection model, we demonstrate that SESI-MS breath-prints can be used to distinguish mice that are infected with one of seven lung pathogens: Haemophilus influenzae, Klebsiella pneu-moniae, Legionella pneumophila, Moraxella catarrhalis, Pjeudomo-nas aeruginosa, Staphylococcus aureus, and Streptococcus pneu-moniae, representing the primary causes of bacterial pneumonia worldwide. After applying principal components analysis, we observed that with the first three principal components (primarily comprised of data from 14 peaks), all infections were separable via SESI-MS breathprinting (P < 0.0001). Therefore, we have shown the potential of this SESI-MS approach for rapidly detecting and identifying acute bacterial lung infections in situ via breath analysis.
机译:细菌性肺炎是世界上与疾病相关的发病率和死亡率的主要原因之一,部分原因是肺炎的诊断工具缓慢而无效。为了提高细菌性肺部感染的诊断成功率和治疗结果,我们正在探索使用二次电喷雾电离质谱(SESI-MS)呼吸分析作为一种快速,无创的​​方法来原位确定肺部感染的病因。使用小鼠肺部感染模型,我们证明SESI-MS呼吸图可用于区分感染以下7种肺部病原体之一的小鼠:流感嗜血杆菌,肺炎克雷伯菌,嗜肺军团菌,卡他莫拉菌,铜绿假单胞菌,金黄色葡萄球菌和肺炎链球菌代表了全世界细菌性肺炎的主要原因。应用主成分分析后,我们观察到前三个主成分(主要包含来自14个峰的数据),所有感染均可通过SESI-MS呼吸印迹进行分离(P <0.0001)。因此,我们已经展示了这种SESI-MS方法通过呼吸分析快速检测和识别原位急性细菌性肺部感染的潜力。

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