PEPerMINT: peptide abundance imputation in mass spectrometry-based proteomics using graph neural networks

Author:

Pietz Tobias1,Gupta Sukrit12ORCID,Schlaffner Christoph N13ORCID,Ahmed Saima3ORCID,Steen Hanno3ORCID,Renard Bernhard Y14ORCID,Baum Katharina145ORCID

Affiliation:

1. Hasso Plattner Institute, Digital Engineering Faculty, University of Potsdam , Potsdam, 14482, Germany

2. Department of Computer Science and Engineering, Indian Institute of Technology , Ropar, Rupnagar, 140001, India

3. Department of Pathology, Boston Children’s Hospital and Harvard Medical School , Boston, MA, 02115, United States

4. Windreich Department for Artificial Intelligence and Human Health and Hasso Plattner Institute at Mount Sinai, Icahn School of Medicine at Mount Sinai , New York City, NY, 10029, United States

5. Department of Mathematics and Computer Science, Free University Berlin , Berlin, 14195, Germany

Abstract

Abstract Motivation Accurate quantitative information about protein abundance is crucial for understanding a biological system and its dynamics. Protein abundance is commonly estimated using label-free, bottom-up mass spectrometry (MS) protocols. Here, proteins are digested into peptides before quantification via MS. However, missing peptide abundance values, which can make up more than 50% of all abundance values, are a common issue. They result in missing protein abundance values, which then hinder accurate and reliable downstream analyses. Results To impute missing abundance values, we propose PEPerMINT, a graph neural network model working directly on the peptide level that flexibly takes both peptide-to-protein relationships in a graph format as well as amino acid sequence information into account. We benchmark our method against 11 common imputation methods on 6 diverse datasets, including cell lines, tissue, and plasma samples. We observe that PEPerMINT consistently outperforms other imputation methods. Its prediction performance remains high for varying degrees of missingness, different evaluation approaches, and differential expression prediction. As an additional novel feature, PEPerMINT provides meaningful uncertainty estimates and allows for tailoring imputation to the user’s needs based on the reliability of imputed values. Availability and implementation The code is available at https://github.com/DILiS-lab/pepermint.

Funder

Klaus Tschira Foundation gGmbH

Deutsche Forschungsgemeinschaft

Publisher

Oxford University Press (OUP)

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