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Identification of tumor-specific MHC ligands through improved biochemical isolation and incorporation of machine learning

Shima Mecklenbräuker, Piotr Skoczylas, Paweł Biernat, Badeel Zaghla, Bartłomiej Król-Józaga, Maciej Jasiński, Victor Murcia Pienkowski, Anna Sanecka-Duin, Oliver Popp, Rafał Szatanek, Philipp Mertins, Jan Kaczmarczyk, Agnieszka Blum, Martin Klatt
doi: https://doi.org/10.1101/2023.06.08.544182
Shima Mecklenbräuker
1Department of Hematology, Oncology and Tumor Immunology, Campus Benjamin Franklin, Charité - University Medicine Berlin, Berlin, Germany
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Piotr Skoczylas
2Ardigen S.A., Krakow, Poland
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Paweł Biernat
2Ardigen S.A., Krakow, Poland
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Badeel Zaghla
1Department of Hematology, Oncology and Tumor Immunology, Campus Benjamin Franklin, Charité - University Medicine Berlin, Berlin, Germany
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Bartłomiej Król-Józaga
2Ardigen S.A., Krakow, Poland
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Maciej Jasiński
2Ardigen S.A., Krakow, Poland
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Victor Murcia Pienkowski
3Aix Marseille Univ, INSERM, Marseille Medical Genetics, MMG, Marseille, France
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Anna Sanecka-Duin
2Ardigen S.A., Krakow, Poland
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Oliver Popp
4Max-Delbrück-Center for Molecular Medicine and Berlin Institute of Health, Berlin, Germany
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Rafał Szatanek
2Ardigen S.A., Krakow, Poland
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Philipp Mertins
4Max-Delbrück-Center for Molecular Medicine and Berlin Institute of Health, Berlin, Germany
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Jan Kaczmarczyk
2Ardigen S.A., Krakow, Poland
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Agnieszka Blum
2Ardigen S.A., Krakow, Poland
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  • For correspondence: martin.klatt@charite.de agnieszka.blum@ardigen.com
Martin Klatt
1Department of Hematology, Oncology and Tumor Immunology, Campus Benjamin Franklin, Charité - University Medicine Berlin, Berlin, Germany
5German Cancer Research Center (DKFZ) and German Cancer Consortium (DKTK), Heidelberg, Germany
6Berlin Institute of Health at Charité – Universitätsmedizin Berlin, BIH Biomedical Innovation Academy, BIH Charité Clinician Scientist Program, Berlin, Germany
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  • For correspondence: martin.klatt@charite.de agnieszka.blum@ardigen.com
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Abstract

Isolation of MHC ligands and subsequent analysis by mass spectrometry is considered the gold standard for defining targets for TCR-T immunotherapies. However, as many targets of high tumor-specificity are only presented at low abundance on the cell surface of tumor cells, the efficient isolation of these peptides is crucial for their successful detection. Here, we demonstrate how different isolation strategies, which consider hydrophobicity and post-translational modifications, can improve the detection of MHC ligands, including cysteinylated MHC ligands from cancer germline antigens or point-mutated neoepitopes. Furthermore, we developed a novel MHC class I ligand prediction algorithm (ARDisplay-I) that outperforms the current state-of-the-art and facilitates the assignment of peptides to the correct MHC allele. The model has other applications, such as the identification of additional MHC ligands not detected from mass spectrometry or determining whether the MHC ligands can be presented on the cell surface via MHC alleles not included in the study. The implementation of these strategies can augment the development of T cell receptor-based therapies (i.a. TIL1-derived T cells, genetically engineered T cells expressing tumor recognizing receptors or TCR-mimic antibodies) by facilitating the identification of novel immunotherapy targets and by enriching the resources available in the field of computational immunology.

Significance: This study demonstrates how the isolation of different tumor-specific MHC ligands can be optimized when considering their hydrophobicity and post-translational modification status. Additionally, we developed a novel machine-learning model for the probability prediction of the MHC ligands’ presentation on the cell surface. The algorithm can assign these MHC ligands to their respective MHC alleles which is essential for the design of TCR-T immunotherapies.

Competing Interest Statement

MGK is a consultant to Ardigen.

Footnotes

  • https://huggingface.co/spaces/ardigen/ardisplay-i

  • ↵1 tumor-infiltrating lymphocytes

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-ND 4.0 International license.
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Posted June 10, 2023.
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Identification of tumor-specific MHC ligands through improved biochemical isolation and incorporation of machine learning
Shima Mecklenbräuker, Piotr Skoczylas, Paweł Biernat, Badeel Zaghla, Bartłomiej Król-Józaga, Maciej Jasiński, Victor Murcia Pienkowski, Anna Sanecka-Duin, Oliver Popp, Rafał Szatanek, Philipp Mertins, Jan Kaczmarczyk, Agnieszka Blum, Martin Klatt
bioRxiv 2023.06.08.544182; doi: https://doi.org/10.1101/2023.06.08.544182
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Identification of tumor-specific MHC ligands through improved biochemical isolation and incorporation of machine learning
Shima Mecklenbräuker, Piotr Skoczylas, Paweł Biernat, Badeel Zaghla, Bartłomiej Król-Józaga, Maciej Jasiński, Victor Murcia Pienkowski, Anna Sanecka-Duin, Oliver Popp, Rafał Szatanek, Philipp Mertins, Jan Kaczmarczyk, Agnieszka Blum, Martin Klatt
bioRxiv 2023.06.08.544182; doi: https://doi.org/10.1101/2023.06.08.544182

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