Genome Biology (Mar 2022)

Enhanced protein isoform characterization through long-read proteogenomics

  • Rachel M. Miller,
  • Ben T. Jordan,
  • Madison M. Mehlferber,
  • Erin D. Jeffery,
  • Christina Chatzipantsiou,
  • Simi Kaur,
  • Robert J. Millikin,
  • Yunxiang Dai,
  • Simone Tiberi,
  • Peter J. Castaldi,
  • Michael R. Shortreed,
  • Chance John Luckey,
  • Ana Conesa,
  • Lloyd M. Smith,
  • Anne Deslattes Mays,
  • Gloria M. Sheynkman

DOI
https://doi.org/10.1186/s13059-022-02624-y
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 28

Abstract

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Abstract Background The detection of physiologically relevant protein isoforms encoded by the human genome is critical to biomedicine. Mass spectrometry (MS)-based proteomics is the preeminent method for protein detection, but isoform-resolved proteomic analysis relies on accurate reference databases that match the sample; neither a subset nor a superset database is ideal. Long-read RNA sequencing (e.g., PacBio or Oxford Nanopore) provides full-length transcripts which can be used to predict full-length protein isoforms. Results We describe here a long-read proteogenomics approach for integrating sample-matched long-read RNA-seq and MS-based proteomics data to enhance isoform characterization. We introduce a classification scheme for protein isoforms, discover novel protein isoforms, and present the first protein inference algorithm for the direct incorporation of long-read transcriptome data to enable detection of protein isoforms previously intractable to MS-based detection. We have released an open-source Nextflow pipeline that integrates long-read sequencing in a proteomic workflow for isoform-resolved analysis. Conclusions Our work suggests that the incorporation of long-read sequencing and proteomic data can facilitate improved characterization of human protein isoform diversity. Our first-generation pipeline provides a strong foundation for future development of long-read proteogenomics and its adoption for both basic and translational research.

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