2024
DOI: 10.1101/2024.11.06.622193
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A Multi-Modal Deep Learning Framework with Both Sequence and Structure for Tumor Antigens Prediction

Ruofan Jin,
Jingxuan Ge,
Guanqiao Zhang
et al.

Abstract: Tumor antigens are key targets in cancer immunotherapies that can be recognized by T cell receptor and induce immune responses. However, precision screening of immunogenic tumor antigens remains a great challenge due to human leukocyte antigen (HLA) restriction and tumor antigen escape. Here, we introduce MultiTAP (Multi-modal Tumor Antigen Predictor), a pioneering multi-modal framework with TCR-peptide-HLA sequence and structure features incorporating an attention mechanism designed to accurately identify tum… Show more

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