4.7 Article

Dinosaur: A Refined Open-Source Peptide MS Feature Detector

期刊

JOURNAL OF PROTEOME RESEARCH
卷 15, 期 7, 页码 2143-2151

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.jproteome.6b00016

关键词

proteomics; mass spectrometry; electrospray ionization; feature detection; chimeric spectra; algorithm; software

资金

  1. Swedish Research Council [2008:3356, 621-2012-3559]
  2. Swedish Foundation for Strategic Research [FFL4]
  3. Crafoord Foundation [20100892]
  4. Stiftelsen Olle Engkvist Byggmastare
  5. Wallenberg Academy Fellow KAW [2012.0178]
  6. European Research Council [ERC-2012-StG-309831]
  7. Swedish Foundation for Strategic Environmental Research

向作者/读者索取更多资源

In bottom-up mass spectrometry (MS)-based proteomics, peptide isotopic and chromatographic traces (features) are frequently used for label-free quantification in data-dependent acquisition MS but can also be used for the improved identification of chimeric spectra or sample complexity characterization. Feature detection is difficult because of the high complexity of MS proteomics data from biological samples, which frequently causes features to intermingle. In addition, existing feature detection algorithms commonly suffer from compatibility issues, long computation times, or poor performance on high-resolution data. Because of these limitations, we developed a new tool, Dinosaur, with increased speed and versatility. Dinosaur has the functionality to sample algorithm computations through quality-control plots, which we call a plot trail. From the evaluation of this plot trail, we introduce several algorithmic improvements to further improve the robustness and performance of Dinosaur, with the detection of features for 98% of MS/MS identifications in a benchmark data set, and no other algorithm tested in this study passed 96% feature detection. We finally used Dinosaur to reimplement a published workflow for peptide identification in chimeric spectra, increasing chimeric identification from 26% to 32% over the standard workflow. Dinosaur is operating-system-independent and is freely available as open source on https://github.com/fickludd/dinosaur.

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