mMass 3: A Cross-Platform Software Environment for Precise Analysis of Mass Spectrometric Data

While tools for the automated analysis of MS and LC-MS/MS data are continuously improving, it is still often the case that at the end of an experiment, the mass spectrometrist will spend time carefully examining individual spectra. Current software support is mostly provided only by the instrument v...

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Veröffentlicht in:Analytical chemistry (Washington) 2010-06, Vol.82 (11), p.4648-4651
Hauptverfasser: Strohalm, Martin, Kavan, Daniel, Novák, Petr, Volný, Michael, Havlíček, Vladimír
Format: Artikel
Sprache:eng
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Zusammenfassung:While tools for the automated analysis of MS and LC-MS/MS data are continuously improving, it is still often the case that at the end of an experiment, the mass spectrometrist will spend time carefully examining individual spectra. Current software support is mostly provided only by the instrument vendors, and the available software tools are often instrument-dependent. Here we present a new generation of mMass, a cross-platform environment for the precise analysis of individual mass spectra. The software covers a wide range of processing tasks such as import from various data formats, smoothing, baseline correction, peak picking, deisotoping, charge determination, and recalibration. Functions presented in the earlier versions such as in silico digestion and fragmentation were redesigned and improved. In addition to Mascot, an interface for ProFound has been implemented. A specific tool is available for isotopic pattern modeling to enable precise data validation. The largest available lipid database (from the LIPID MAPS Consortium) has been incorporated and together with the new compound search tool lipids can be rapidly identified. In addition, the user can define custom libraries of compounds and use them analogously. The new version of mMass is based on a stand-alone Python library, which provides the basic functionality for data processing and interpretation. This library can serve as a good starting point for other developers in their projects. Binary distributions of mMass, its source code, a detailed user’s guide, and video tutorials are freely available from www.mmass.org.
ISSN:0003-2700
1520-6882
DOI:10.1021/ac100818g