HUPO 2025 workshop: What AI-ready proteomics data should look like

A recap of the HUPO 2025 Bioinformatics Hub workshop on AI-readiness

community
workshop
Recap of the HUPO 2025 Bioinformatics Hub workshop on AI-readiness, covering raw data, identification, and quantification.
Authors
Affiliations

Ralf Gabriels

VIB-UGent Center for Medical Biotechnology, VIB, Belgium

Department of Biomolecular Medicine, Ghent University, Belgium

Samuel Wein

University of Tübingen, Germany

OpenMS

Tine Claeys

VIB-UGent Center for Medical Biotechnology, VIB, Belgium

Department of Biomolecular Medicine, Ghent University, Belgium

Published

February 4, 2026

Introduction

At the HUPO 2025 Bioinformatics Hub session on proteomics AI-readiness, participants split into three parallel discussions: quantification, raw data, and identification, to identify the main hurdles for data reuse within their respective groups. This discussion would serve as a practical guide for PSI-AI’s next steps. The consistent theme was that AI-readiness is primarily a data engineering and standards problem: structured data representations, explicit provenance, and machine-checkable metadata matter at least as much as AI model development itself.

HUPO 2025 Bioinformatics Hub, 11 November 2025

Raw data: define “mzPeak minimum information” so reprocessing is feasible

The raw-data group focused on the minimum metadata needed to make peak-level representations reprocessable and interoperable at scale. In light of the development of the new mzPeak format (Van Den Bossche et al. 2025), the discussion centred on capturing (a) per run, essential acquisition context (instrument model and software version; separation technology details including LC gradient/mobile phases/column information; ion mobility or imaging parameters where relevant; ionization type; acquisition mode) and, (b) per scan, the key analytical settings (mass analyzer, scan range, collision energy/type, MS level, precursor and isolation window where applicable). The point was pragmatic: without these elements, it becomes difficult to compare datasets, reproduce processing choices, or support systematic reprocessing—regardless of whether the downstream consumer is a human or an ML pipeline.

NotePSI-AI action points

For PSI-AI, the immediate step is to translate this minimum-information set into a machine-checkable checklist aligned to controlled vocabularies and to explore how much can be recovered from existing submissions versus what must be captured earlier (during acquisition / before submission). Coordination with the mzPeak team and with ProteomeXchange (Eric W. Deutsch et al. 2025) stakeholders was viewed as important to ensure any checklist can be validated and incentivized in real deposition workflows.

Quantification: An “mzQuant” container that records how numbers were produced

The quantification group discussed the limitation of downstream reuse by the absence of quantitative tables that preserve the full data processing history. A proposed direction, informally termed mzQuant, is a multi-layer quantitative matrix container inspired by the AnnData format (Virshup et al. 2024), where a declared primary matrix (PSM/peptide/protein/protein group) can be accompanied by additional layers (raw, normalized, batch-corrected, imputed, summarized, statistical outputs). The critical requirement is that each layer carries structured descriptions of methods and assumptions, parameters, and software versions - so results are not just shareable, but auditable and reproducible.

Participants emphasized that the container must embed experimental design in an SDRF-compatible form (Dai et al. 2021) (groups, contrasts, blocking/randomization, and explicit linkage to raw files), and that adoption hinges on low-friction integration with existing and frequently used environments including search engines, statistical tools, etc.

In parallel, the group saw a clear opportunity for AI-based added value of such a format by (i) using LLMs to generate SDRF files based on experimental design; (ii) automatically complete mzQuant by extracting e.g. normalization methods directly from the code; (iii) use the layers of mzQuant and SDRF to automatically generate Materials and Methods sections and describe the computational analysis process in a human readable format.

NotePSI-AI action points

Short-term PSI-AI action items are to draft a minimal schema and reference layout for mzQuant, to run a controlled vocabulary/ontology gap analysis (the PSI-MS controlled vocabulary (Mayer et al. 2013) and broader biomedical data ontologies), and to deliver reference implementations in common programming languages, a validator, and practical examples including deliberate “bad” cases.

What PSI-AI takes forward

Across all three tracks, participants repeatedly asked for (i) explicit provenance, (ii) structured, machine-checkable metadata—especially experimental design, (iii) validator tooling with actionable error messages, and (iv) alignment with existing PSI standards rather than parallel reinvention. In collaboration with other PSI working groups and stakeholders, PSI-AI will use these workshop outcomes to prioritize minimal schemas/checklists, CV mappings, reference conversions, and validation/reporting tools, and to package the results as worked examples that can be adopted by software developers, repositories, and researchers.

To join the effort, contact .

References

Dai, Chengxin, Anja Füllgrabe, Julianus Pfeuffer, Elizaveta M. Solovyeva, Jingwen Deng, Pablo Moreno, Selvakumar Kamatchinathan, et al. 2021. “A Proteomics Sample Metadata Representation for Multiomics Integration and Big Data Analysis.” Nature Communications 12 (1). https://doi.org/10.1038/s41467-021-26111-3.
Deutsch, Eric W, Nuno Bandeira, Yasset Perez-Riverol, Vagisha Sharma, Jeremy J Carver, Luis Mendoza, Deepti J Kundu, et al. 2025. “The ProteomeXchange Consortium in 2026: Making Proteomics Data FAIR.” Nucleic Acids Research 54 (D1): D459–69. https://doi.org/10.1093/nar/gkaf1146.
Deutsch, Eric W., Yasset Perez-Riverol, Jeremy Carver, Shin Kawano, Luis Mendoza, Tim Van Den Bossche, Ralf Gabriels, et al. 2021. “Universal Spectrum Identifier for Mass Spectra.” Nature Methods 18 (7): 768–70. https://doi.org/10.1038/s41592-021-01184-6.
Klein, Joshua, Henry Lam, Tytus D. Mak, Wout Bittremieux, Yasset Perez-Riverol, Ralf Gabriels, Jim Shofstahl, et al. 2024. “The Proteomics Standards Initiative Standardized Formats for Spectral Libraries and Fragment Ion Peak Annotations: mzSpecLib and mzPAF.” Analytical Chemistry 96 (46): 18491–501. https://doi.org/10.1021/acs.analchem.4c04091.
LeDuc, Richard D., Eric W. Deutsch, Pierre-Alain Binz, Ryan T. Fellers, Anthony J. Cesnik, Joshua A. Klein, Tim Van Den Bossche, et al. 2022. “Proteomics Standards Initiative’s ProForma 2.0: Unifying the Encoding of Proteoforms and Peptidoforms.” Journal of Proteome Research 21 (4): 1189–95. https://doi.org/10.1021/acs.jproteome.1c00771.
Mayer, G., L. Montecchi-Palazzi, D. Ovelleiro, A. R. Jones, P.-A. Binz, E. W. Deutsch, M. Chambers, et al. 2013. “The HUPO Proteomics Standards Initiative- Mass Spectrometry Controlled Vocabulary.” Database 2013 (0): bat009–9. https://doi.org/10.1093/database/bat009.
Van Den Bossche, Tim, Theodore Alexandrov, Aivett Bilbao, Wout Bittremieux, Federico Ivan Brigante, Matthew Chase Chambers, Joshua Charkow, et al. 2025. “mzPeak: Designing a Scalable, Interoperable, and Future-Ready Mass Spectrometry Data Format.” Journal of Proteome Research 24 (11): 5329–35. https://doi.org/10.1021/acs.jproteome.5c00435.
Virshup, Isaac, Sergei Rybakov, Fabian J. Theis, Philipp Angerer, and F. Alexander Wolf. 2024. “Anndata: Access and Store Annotated Data Matrices.” Journal of Open Source Software 9 (101): 4371. https://doi.org/10.21105/joss.04371.

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Citation

BibTeX citation:
@online{gabriels2026,
  author = {Gabriels, Ralf and Wein, Samuel and Claeys, Tine},
  title = {HUPO 2025 Workshop: {What} {AI-ready} Proteomics Data Should
    Look Like},
  date = {2026-02-04},
  url = {https://www.psi-ai.org/blog/posts/2026-02-04-hupo-workshop/},
  langid = {en-US}
}
For attribution, please cite this work as:
Gabriels, Ralf, Samuel Wein, and Tine Claeys. 2026. “HUPO 2025 Workshop: What AI-Ready Proteomics Data Should Look Like.” February 4, 2026. https://www.psi-ai.org/blog/posts/2026-02-04-hupo-workshop/.