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Authors: Daniel Blankenberg or Matthias Fahrner

17 materials found
  • e-learning

    PAPAA PI3K_OG: PanCancer Aberrant Pathway Activity Analysis

    • beginner
    Statistics and probability Machine learning Pan-cancer Statistics and machine learning cancer biomarkers oncogenes and tumor suppressor genes
  • e-learning

    Text-mining with the SimText toolset

    • beginner
    Statistics and probability Statistics and machine learning interactive-tools
  • e-learning

    Pre-processing of 10X Single-Cell RNA Datasets

    • beginner
    10x Single Cell
  • e-learning

    MaxQuant and MSstats for the analysis of label-free data

    •• intermediate
    Proteomics label-free
  • e-learning

    Peptide and Protein Quantification via Stable Isotope Labelling (SIL)

    ••• advanced
    Proteomics DDA SILAC
  • e-learning

    Machine Learning Modeling of Anticancer Peptides

    •• intermediate
    Proteomics ML cancer
  • e-learning

    MaxQuant and MSstats for the analysis of TMT data

    • beginner
    Proteomics DDA TMT
  • e-learning

    Statistical analysis of DIA data

    •• intermediate
    Proteomics DIA
  • e-learning

    Library Generation for DIA Analysis

    •• intermediate
    Proteomics DIA
  • e-learning

    DIA Analysis using OpenSwathWorkflow

    •• intermediate
    Proteomics DIA
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