PTMGPT2: An Interpretable Protein Language Model for Enhanced Post-Translational Modification Prediction
PTMGPT2 uses GPT-based architecture and prompt-based fine-tuning to predict post-translational modifications. It outperforms existing methods across 19 PTM types, offering interpretability and mutation analysis. This advances the understanding of protein function and disease research.
Published in Cell & Molecular Biology and Computational Sciences
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Protein Biochemistry
Life Sciences > Biological Sciences > Molecular Biology > Protein Biochemistry
Artificial Intelligence
Mathematics and Computing > Computer Science > Artificial Intelligence
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