A proteogenomic atlas of the human neural retina.
Publication year
2024Author(s)
Source
Frontiers in Genetics, 15, (2024), pp. 1451024, article 1451024ISSN
Publication type
Article / Letter to editor
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Organization
Medical Biosciences
Otorhinolaryngology
Human Genetics
Journal title
Frontiers in Genetics
Volume
vol. 15
Page start
p. 1451024
Subject
Human Genetics - Radboud University Medical Center; Human Genetics - Radboud University Medical Center - DCMN; Medical Biosciences - Radboud University Medical Center; Otorhinolaryngology - Radboud University Medical Center; Otorhinolaryngology - Radboud University Medical Center - DCMNAbstract
The human neural retina is a complex tissue with abundant alternative splicing and more than 10% of genetic variants linked to inherited retinal diseases (IRDs) alter splicing. Traditional short-read RNA-sequencing methods have been used for understanding retina-specific splicing but have limitations in detailing transcript isoforms. To address this, we generated a proteogenomic atlas that combines PacBio long-read RNA-sequencing data with mass spectrometry and whole genome sequencing data of three healthy human neural retina samples. We identified nearly 60,000 transcript isoforms, of which approximately one-third are novel. Additionally, ten novel peptides confirmed novel transcript isoforms. For instance, we identified a novel IMPDH1 isoform with a novel combination of known exons that is supported by peptide evidence. Our research underscores the potential of in-depth tissue-specific transcriptomic analysis to enhance our grasp of tissue-specific alternative splicing. The data underlying the proteogenomic atlas are available via EGA with identifier EGAD50000000101, via ProteomeXchange with identifier PXD045187, and accessible through the UCSC genome browser.
This item appears in the following Collection(s)
- Academic publications [246425]
- Electronic publications [134061]
- Faculty of Medical Sciences [93307]
- Open Access publications [107627]
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