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Pep-TCRNet: Prediction of Multi-Class Peptides by T-cell Receptor Sequences with Deep Learning

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Version 2 2024-11-21, 07:44
Version 1 2024-11-21, 07:28
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posted on 2024-11-21, 07:44 authored by Phi Le, Leah UngLeah Ung, Hai Yang, Anwen Huang, Tao He, Peter Bruno, David Oh, Bridget Keenan, Li Zhang

Pep-TCRNet is a novel approach to constructing a prediction model that can evaluate the probability of recognition between a TCR and a peptide amino acid sequence while combining inputs such as TCR sequences, HLA types, and VJ genes.

Pep-TCRNet operates in two key steps:

  • Feature Engineering: This step processes different types of variables:
    • TCR and peptide amino acid sequencing data: The model incorporates neural network architectures inspired by language representation models and graph representation model to learn the meaningful embeddings.
    • Categorical data: Specialized encoding techniques are used to ensure optimal feature representation for HLA types and VJ genes.
  • Prediction Model: The second step involves training a prediction model to evaluate the likelihood of a TCR recognizing a specific peptide, based on the features generated in the first step.


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