4.7 Article

Improved Identification of Small Open Reading Frames Encoded Peptides by Top-Down Proteomic Approaches and De Novo Sequencing

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出版社

MDPI
DOI: 10.3390/ijms22115476

关键词

sORF-encoded peptides; de novo sequencing; top-down; non-ATG start codon; sequence coverage

资金

  1. Natural Science Foundation of China [21804048, 31800647]

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A strategy combining top-down and de novo sequencing was proposed to improve SEP identification and sequence coverage, leading to the discovery of new coding sORFs and highly accurate sequences of their SEPs. The use of different sequencing methods revealed important insights into the characteristics of SEPs and their encoding sORFs.
Small open reading frames (sORFs) have translational potential to produce peptides that play essential roles in various biological processes. Nevertheless, many sORF-encoded peptides (SEPs) are still on the prediction level. Here, we construct a strategy to analyze SEPs by combining top-down and de novo sequencing to improve SEP identification and sequence coverage. With de novo sequencing, we identified 1682 peptides mapping to 2544 human sORFs, which were all first characterized in this work. Two-thirds of these new sORFs have reading frame shifts and use a non-ATG start codon. The top-down approach identified 241 human SEPs, with high sequence coverage. The average length of the peptides from the bottom-up database search was 19 amino acids (AA); from de novo sequencing, it was 9 AA; and from the top-down approach, it was 25 AA. The longer peptide positively boosts the sequence coverage, more efficiently distinguishing SEPs from the known gene coding sequence. Top-down has the advantage of identifying peptides with sequential K/R or high K/R content, which is unfavorable in the bottom-up approach. Our method can explore new coding sORFs and obtain highly accurate sequences of their SEPs, which can also benefit future function research.

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