2022
DOI: 10.1101/2022.08.03.502594
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Multienzyme deep learning models improve peptide de novo sequencing by mass spectrometry proteomics

Abstract: Generating and analyzing overlapping peptides through multienzymatic digestion is an efficient procedure for de novo protein using from bottom-up mass spectrometry (MS). Despite improved instrumentation and software, de novo MS data analysis remains challenging. In recent years, deep learning models have represented a performance breakthrough. Incorporating that technology into de novo protein sequencing workflows require machine-learning models capable of handling highly diverse MS data. In this study, … Show more

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