T-SCAPE: T-cell immunogenicity scoring via cross-domain aided predictive engine
收藏NIAID Data Ecosystem2026-05-10 收录
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http://datadryad.org/dataset/doi%253A10.5061%252Fdryad.s7h44j1k7
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资源简介:
T-cell immunogenicity is a critical determinant of safety and efficacy for protein therapeutics and vaccines, but prediction is hampered by data scarcity. We present T-SCAPE, a multi-domain deep learning framework that uses adversarial domain adaptation to integrate diverse immunologically relevant data sources, including MHC presentation, peptide-MHC binding affinity, TCR-pMHC interaction, source organism information, and T-cell activation. Validated through rigorous leakage-controlled benchmarks, T-SCAPE shows exceptional performance in predicting T-cell activation for specific peptide-MHC pairs. Remarkably, it also accurately predicts the anti-drug antibody-inducing potential of therapeutic antibodies without MHC inputs, a success attributed to its biologically grounded pretraining. Confirmed by extensive case studies and ablation studies, T-SCAPE’s flexible architecture also supports broader tasks like molecular binding prediction. Its robust performance highlights its potential to advance the development of safer and more effective biologics.
创建时间:
2025-11-20



