InstaDeepAI/instanovo-phospho-v1.0.0
InstaNovo-P is a specialized transformer-based model for de novo peptide sequencing from phosphoproteomics mass spectrometry data. This model is specifically trained and optimized for identifying phosphorylated peptides and their modification sites.
README
license: cc-by-nc-sa-4.0 libraryname: pytorch tags: proteomics mass-spectrometry peptide-sequencing de-novo-sequencing phosphoproteomics post-translational-modifications transformer biology computational-biology de-novo-peptide-sequencing pipelinetag: text-generation datasets: InstaDeepAI/InstaNovo-P InstaNovo-P: De novo Peptide Sequencing Model for Phosphoproteomics Model Description InstaNovo-P is a specialized transformer-based model for de novo peptide sequencing from phosphoproteomics mass…
Source attribution
- HuggingFace — InstaDeepAI/instanovo-phospho-v1.0.0
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