| Literature DB >> 33549679 |
Yu Han1, Silas D Wood2, Julianna M Wright2, Vishantie Dostal1, Edward Lau1, Maggie P Y Lam3.
Abstract
Alternative splicing is prevalent in the heart and implicated in many cardiovascular diseases, but not every alternative transcript is translated and detecting non-canonical isoforms at the protein level remains challenging. Here we show the use of a computation-assisted targeted proteomics workflow to detect protein alternative isoforms in the human heart. We build on a recent strategy to integrate deep RNA-seq and large-scale mass spectrometry data to identify candidate translated isoform peptides. A machine learning approach is then applied to predict their fragmentation patterns and design protein isoform-specific parallel reaction monitoring detection (PRM) assays. As proof-of-principle, we built PRM assays for 29 non-canonical isoform peptides and detected 22 peptides in a human heart lysate. The predictions-aided PRM assays closely mirrored synthetic peptide standards for non-canonical sequences. This approach may be useful for validating non-canonical protein identification and discovering functionally relevant isoforms in the heart.Entities:
Keywords: Alternative splicing; Heart; Machine learning; Mass spectrometry; Parallel reaction monitoring; Protein isoforms; Proteoforms; Targeted proteomics
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Year: 2021 PMID: 33549679 PMCID: PMC8722536 DOI: 10.1016/j.yjmcc.2021.01.007
Source DB: PubMed Journal: J Mol Cell Cardiol ISSN: 0022-2828 Impact factor: 5.000