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Untargeted metabolomics workflow for data processing and analysis written in Jupyter notebooks (Python)

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pyOpenMS: Jupyter Notebook implementation of UmetaFlow

This is a workflow for untargeted metabolomics data preprocessing and analysis tailored in Jupyter notebooks by Eftychia Eva Kontou and Axel Walter using pyOpenMS which are python bindings to the cpp OpenMS alogithms. The workflow is compatible for Linux, Windows and MacOS operating systems.

Publication DOI: https://doi.org/10.1186/s13321-023-00724-w

Workflow overview

The pipeline consists of seven interconnected steps:

  1. File conversion (optional): Simply add your Thermo raw files in data/raw/ and they will be converted to centroid mzML files. If you have Agilent or Bruker files, skip that step - convert them independently using proteowizard (see https://proteowizard.sourceforge.io/) and add them to the data/mzML/ directory.

  2. Pre-processing: Converting your raw data to a table of metabolic features with a series of algorithms.

  3. Re-quantification: Re-quantify all raw files to avoid missing values resulted by the pre-processing workflow for statistical analysis and data exploration (optional step).

  4. GNPSexport: generate all the files necessary to create a FBMN or IIMN job at GNPS.

  5. Structural and formula predictions with SIRIUS and CSI:FingerID.

  6. Annotations: annotate the feature tables with #1 ranked SIRIUS and CSI:FingerID predictions (MSI level 3), spectral matches from a local MGF file (MSI level 2).

  7. Data integration: Integrate the #1 ranked SIRIUS and CSI:FingerID predictions to the graphml file from GNPS FBMN for visualization. Optionally, annotate the feature tables with GNPS MSMS library matching annotations (MSI level 2).

Overview

dag

Usage

Step 1: Clone the workflow

git clone https://github.com/biosustain/pyOpenMS_UmetaFlow.git

Step 2: Install all dependencies in a conda environment

It is recommended to install all dependencies in a conda environment via the provided environment.yml file:

cd pyOpenMS_UmetaFlow
conda env create -f environment.yml
conda activate umetaflow-pyopenms

Step 3 (optional): Get example data from zenodo

This data can be used for testing the workflow:

wget https://zenodo.org/record/6948449/files/Commercial_std_raw.zip -O Commercial_std_raw.zip
unzip Commercial_std_raw.zip -d Commercial_std_raw
mv Commercial_std_raw/*.* data/raw/
rm Commercial_std_raw.zip
rm -rf Commercial_std_raw

Otherwise, the user can simply transfer their own data under the directory data/raw/ or data/mzML/.

Step 4: Run all notebooks and investigate the results

Each processing step is implemented in a separate notebook.

jupyter notebook

All the results are in a .TSV format and can be opened simply with excel or using pandas dataframes.

Citations

  • Kontou, E.E., Walter, A., Alka, O. et al. UmetaFlow: an untargeted metabolomics workflow for high-throughput data processing and analysis. J Cheminform 15, 52 (2023). https://doi.org/10.1186/s13321-023-00724-w

  • Pfeuffer J, Sachsenberg T, Alka O, et al. OpenMS – A platform for reproducible analysis of mass spectrometry data. J Biotechnol. 2017;261:142-148. doi:10.1016/j.jbiotec.2017.05.016

  • Dührkop K, Fleischauer M, Ludwig M, et al. SIRIUS 4: a rapid tool for turning tandem mass spectra into metabolite structure information. Nat Methods. 2019;16(4):299-302. doi:10.1038/s41592-019-0344-8

  • Dührkop K, Shen H, Meusel M, Rousu J, Böcker S. Searching molecular structure databases with tandem mass spectra using CSI:FingerID. Proc Natl Acad Sci. 2015;112(41):12580-12585. doi:10.1073/pnas.1509788112

  • Nothias LF, Petras D, Schmid R, et al. Feature-based molecular networking in the GNPS analysis environment. Nat Methods. 2020;17(9):905-908. doi:10.1038/s41592-020-0933-6

Test Data (only for testing the workflow with the example dataset)

  • The current test data are built from known metabolite producer strains or standard samples that have been analysed with a Thermo IDX mass spectrometer. The presence of the metabolites and their fragmentation patterns has been manually confirmed using TOPPView.

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Untargeted metabolomics workflow for data processing and analysis written in Jupyter notebooks (Python)

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