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Integrating T-cell receptor and transcriptome for large-scale single-cell immune profiling analysis

View ORCID ProfileFelix Drost, View ORCID ProfileYang An, Lisa M Dratva, View ORCID ProfileRik GH Lindeboom, View ORCID ProfileMuzlifah Haniffa, View ORCID ProfileSarah A Teichmann, View ORCID ProfileFabian Theis, View ORCID ProfileMohammad Lotfollahi, View ORCID ProfileBenjamin Schubert
doi: https://doi.org/10.1101/2021.06.24.449733
Felix Drost
1Computational Health Center, Helmholtz Munich, Neuherberg, Germany
2School of Life Sciences Weihenstephan, Technical University of Munich, Munich, Germany
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Yang An
1Computational Health Center, Helmholtz Munich, Neuherberg, Germany
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Lisa M Dratva
3Wellcome Sanger Institute, Cambridge, UK
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Rik GH Lindeboom
3Wellcome Sanger Institute, Cambridge, UK
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Muzlifah Haniffa
3Wellcome Sanger Institute, Cambridge, UK
6Biosciences Institute, Newcastle University, Newcastle upon Tyne, UK
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Sarah A Teichmann
3Wellcome Sanger Institute, Cambridge, UK
5Department of Physics, Cavendish Laboratory, University of Cambridge, Cambridge, UK
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Fabian Theis
1Computational Health Center, Helmholtz Munich, Neuherberg, Germany
3Wellcome Sanger Institute, Cambridge, UK
4Department of Mathematics, Technical University of Munich, Munich, Germany
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Mohammad Lotfollahi
1Computational Health Center, Helmholtz Munich, Neuherberg, Germany
3Wellcome Sanger Institute, Cambridge, UK
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  • For correspondence: ml19@sanger.ac.uk benjamin.schubert@helmholtz-muenchen.de
Benjamin Schubert
1Computational Health Center, Helmholtz Munich, Neuherberg, Germany
4Department of Mathematics, Technical University of Munich, Munich, Germany
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  • For correspondence: ml19@sanger.ac.uk benjamin.schubert@helmholtz-muenchen.de
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Abstract

Recent advancements in single-cell immune profiling that enable the measurement of the transcriptome and T-cell receptor (TCR) sequences simultaneously have emerged as a promising approach to study immune responses at cellular resolution. Yet, combining these different types of information from multiple datasets into a joint representation is complicated by the unique characteristics of each modality and the technical effects between datasets. Here, we present mvTCR, a multimodal generative model to learn a unified representation across modalities and datasets for joint analysis of single-cell immune profiling data. We show that mvTCR allows the construction of large-scale and multimodal T-cell atlases by distilling modality-specific properties into a shared view, enabling unique and improved data analysis. Specifically, we demonstrated mvTCR’s potential by revealing and separating SARS-CoV-2-specific T-cell clusters from bystanders that would have been missed in individual unimodal data analysis. Finally, mvTCR can enable automated analysis of new datasets when combined with transfer-learning approaches.

Overall, mvTCR provides a principled solution for standard analysis tasks such as multimodal integration, clustering, specificity analysis, and batch correction for single-cell immune profiling data.

Competing Interest Statement

F.J.T. reports receiving consulting fees from Roche Diagnostics GmbH and Cellarity Inc., and ownership interest in Cellarity, Inc. Y.A. acknowledges financial support by JURA Bio, Inc.

Footnotes

  • Revision includes the following changes: - extended benchmark - application showcase on SARS-CoV-2 dataset - run time analysis and integration capability over multiple studies

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 4.0 International license.
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Posted October 25, 2022.
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Integrating T-cell receptor and transcriptome for large-scale single-cell immune profiling analysis
Felix Drost, Yang An, Lisa M Dratva, Rik GH Lindeboom, Muzlifah Haniffa, Sarah A Teichmann, Fabian Theis, Mohammad Lotfollahi, Benjamin Schubert
bioRxiv 2021.06.24.449733; doi: https://doi.org/10.1101/2021.06.24.449733
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Integrating T-cell receptor and transcriptome for large-scale single-cell immune profiling analysis
Felix Drost, Yang An, Lisa M Dratva, Rik GH Lindeboom, Muzlifah Haniffa, Sarah A Teichmann, Fabian Theis, Mohammad Lotfollahi, Benjamin Schubert
bioRxiv 2021.06.24.449733; doi: https://doi.org/10.1101/2021.06.24.449733

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