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Automated and rapid bacterial identification using LC-mass spectrometry with a relational database management system

机译:使用LC-质谱法和相关数据库管理系统自动快速鉴定细菌

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We have developed an integrated and automated software application for rapid bacterial identification using a relational database management system and liquid chromatography-electrospray-ion trap mass spectrometry (LC-ESl-MS). LC-ESI-MS is used to generate chromatographic profiles of proteins in a bacterial sample along with a software program that automates the data analysis. The software program ProMAPDB automates the data collection, peak identification, spectral purification, mass spectral integration of scans in a peak, and assignment of molecular weights for observed proteins by using a deconvolution algorithm described by Zhang and Marshall. The approach generates a list of biomarker masses along with retention time and relative abundance for all masses obtained by the algorithm. The list of masses is stored in a relational database as a reference library including the sample information such as growth conditions and experimental information. The identification of unknown samples is performed by correlation to the relational database. The bacterial database includes E. coli, Bacillus subtilis, B. thuringiensis, and B. megaterium. The approach has been tested for bacterial discrimination and identification from the mass spectra of mixtures of microorganisms and from mass spectra of organisms at different growth conditions. Experimental factors such as sample preparation, reproducibility, mass range and mass accuracy tolerance are also addressed and evaluated. This approach has the potential for reliable and accurate automated data analysis.
机译:我们已经开发了一个集成的自动化软件应用程序,以使用关系数据库管理系统和液相色谱-电喷雾-离子阱质谱(LC-ES1-MS)快速鉴定细菌。 LC-ESI-MS用于生成细菌样品中蛋白质的色谱图以及自动进行数据分析的软件程序。通过使用Zhang和Marshall描述的反卷积算法,软件程序ProMAPDB可以自动进行数据收集,峰识别,光谱纯化,峰扫描质谱积分,以及为观察到的蛋白质分配分子量。该方法生成生物标志物质量的列表,以及该算法获得的所有质量的保留时间和相对丰度。质量列表存储在关系数据库中作为参考库,其中包括样本信息(例如生长条件和实验信息)。通过与关系数据库的关联来执行未知样本的识别。细菌数据库包括大肠杆菌,枯草芽孢杆菌,苏云金芽孢杆菌和巨大芽孢杆菌。该方法已经过测试,可从微生物混合物的质谱图和在不同生长条件下的生物体质谱图进行细菌判别和鉴定。还讨论并评估了诸如样品制备,可重复性,质量范围和质量准确度公差等实验因素。这种方法具有进行可靠,准确的自动化数据分析的潜力。

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