MannLabs/PeptDeep-HLA
DL model to predict HLA peptide presentation
This tool helps researchers determine if specific peptide sequences are likely to be presented by Human Leukocyte Antigen (HLA) class I molecules. You provide it with protein sequences from a FASTA file or a list of peptides, and it outputs a prediction of whether each peptide will be presented. Immunologists, cancer researchers, and drug developers can use this to identify potential targets for immune-based therapies or diagnostic markers.
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Use this if you need to predict HLA class I peptide presentation from a list of peptide sequences or protein FASTA files to identify relevant immune targets.
Not ideal if you are looking to predict other types of protein-protein interactions or cellular processes beyond HLA peptide presentation.
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Jupyter Notebook
License
Apache-2.0
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Last pushed
Jan 31, 2024
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