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DIAMetAlyzer allows automated false-discovery rate-controlled analysis for data-independent acquisition in metabolomics.

Oliver AlkaPremy ShanthamoorthyMichael WittingKarin KleigreweOliver KohlbacherHannes L Röst
Published in: Nature communications (2022)
The extraction of meaningful biological knowledge from high-throughput mass spectrometry data relies on limiting false discoveries to a manageable amount. For targeted approaches in metabolomics a main challenge is the detection of false positive metabolic features in the low signal-to-noise ranges of data-independent acquisition results and their filtering. Another factor is that the creation of assay libraries for data-independent acquisition analysis and the processing of extracted ion chromatograms have not been automated in metabolomics. Here we present a fully automated open-source workflow for high-throughput metabolomics that combines data-dependent and data-independent acquisition for library generation, analysis, and statistical validation, with rigorous control of the false-discovery rate while matching manual analysis regarding quantification accuracy. Using an experimentally specific data-dependent acquisition library based on reference substances allows for accurate identification of compounds and markers from data-independent acquisition data in low concentrations, facilitating biomarker quantification.
Keyphrases
  • high throughput
  • electronic health record
  • mass spectrometry
  • big data
  • machine learning
  • healthcare
  • data analysis
  • small molecule
  • liquid chromatography
  • high resolution
  • single cell
  • ms ms
  • capillary electrophoresis