4.7 Article

Identification of Microorganisms by Liquid Chromatography-Mass Spectrometry (LC-MS1) and in Silico Peptide Mass Libraries

Journal

MOLECULAR & CELLULAR PROTEOMICS
Volume 19, Issue 12, Pages -

Publisher

ELSEVIER
DOI: 10.1074/mcp.TIR120.002061

Keywords

Bacteria; microbiology; bioinformatics software; diagnostics; mass spectrometry; identification of microorganisms; LC-MS1; diagnostic

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Over the past decade, modern methods of MS (MS) have emerged that allow reliable, fast and cost-effective identification of pathogenic microorganisms. Although MALDI-TOF MS has already revolutionized the way microorganisms are identified, recent years have witnessed also substantial progress in the development of liquid chromatography (LC)-MS based proteomics for microbiological applications. For example, LC-tandem MS (LC-MS2) has been proposed for microbial characterization by means of multiple discriminative peptides that enable identification at the species, or sometimes at the strain level. However, such investigations can be laborious and time-consuming, especially if the experimental LC-MS2 data are tested against sequence databases covering a broad panel of different microbiological taxa. In this proof of concept study, we present an alternative bottom-up proteomics method for microbial identification. The proposed approach involves efficient extraction of proteins from cultivated microbial cells, digestion by trypsin and LC-MS measurements. Peptide masses are then extracted from MS1 data and systematically tested against an in silico library of all possible peptide mass data compiled in-house. The library has been computed from the UniProt Knowledgebase covering Swiss-Prot and TrEMBL databases and comprises more than 12,000 strain-specific in silico profiles, each containing tens of thousands of peptide mass entries. Identification analysis involves computation of score values derived from correlation coefficients between experimental and strain-specific in silico peptide mass profiles and compilation of score ranking lists. The taxonomic positions of the microbial samples are then determined by using the best-matching database entries. The suggested method is computationally efficient - less than 2 mins per sample - and has been successfully tested by a test set of 39 LC-MS1 peak lists obtained from 19 different microbial pathogens. The proposed method is rapid, simple and automatable and we foresee wide application potential for future microbiological applications. The last years have witnessed substantial progress toward the application of mass spectrometry in microbiology. Although MALDI-TOF MS has already revolutionized clinical microbiology, substantial progress has been achieved also in the development of LC-MS for microbiological applications. Here we suggest LC-MS1 fingerprinting as a rapid and accurate microbial identification technique. Experimental MS1 data are tested against a library of strain-specific in silico mass profiles generated from publicly available proteome resources. The results highlight the potentials of LC-MS1 in microbiology.

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