AdaNovo: Towards Robust De Novo Peptide Sequencing in Proteomics against Data Biases Jun Xia
–Neural Information Processing Systems
Despite the development of several deep learning methods for predicting amino acid sequences (peptides) responsible for generating the observed mass spectra, training data biases hinder further advancements of de novo peptide sequencing. Firstly, prior methods struggle to identify amino acids with Post-Translational Modifications (PTMs) due to their lower frequency in training data compared to canonical amino acids, further resulting in unsatisfactory peptide sequencing performance. Secondly, various noise and missing peaks in mass spectra reduce the reliability of training data (Peptide-Spectrum Matches, PSMs).
Neural Information Processing Systems
Dec-27-2025, 19:09:11 GMT
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