Disentangling the Complex Multiplexed DIA Spectra in De Novo Peptide Sequencing
Data-Independent Acquisition (DIA) was introduced to improve sensitivity to cover all peptides in a range rather than only sampling high-intensity peaks as in Data-Dependent Acquisition (DDA) mass spectrometry. However, it is not very clear how useful DIA data is for de novo peptide sequencing as th...
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Zusammenfassung: | Data-Independent Acquisition (DIA) was introduced to improve sensitivity to
cover all peptides in a range rather than only sampling high-intensity peaks as
in Data-Dependent Acquisition (DDA) mass spectrometry. However, it is not very
clear how useful DIA data is for de novo peptide sequencing as the DIA data are
marred with coeluted peptides, high noises, and varying data quality. We
present a new deep learning method DIANovo, and address each of these
difficulties, and improves the previous established system DeepNovo-DIA by from
25% to 81%, averaging 48%, for amino acid recall, and by from 27% to 89%,
averaging 57%, for peptide recall, by equipping the model with a deeper
understanding of coeluted DIA spectra. This paper also provides criteria about
when DIA data could be used for de novo peptide sequencing and when not to by
providing a comparison between DDA and DIA, in both de novo and database search
mode. We find that while DIA excels with narrow isolation windows on
older-generation instruments, it loses its advantage with wider windows.
However, with Orbitrap Astral, DIA consistently outperforms DDA due to narrow
window mode enabled. We also provide a theoretical explanation of this
phenomenon, emphasizing the critical role of the signal-to-noise profile in the
successful application of de novo sequencing. |
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DOI: | 10.48550/arxiv.2411.15684 |