ADCNet: a unified framework for predicting the activity of antibody-drug conjugates
Liye Chen, Biaoshun Li, Yihao Chen, Mujie Lin, Shipeng Zhang, Chenxin, Li, Yu Pang, Ling Wang

TL;DR
ADCNet is a deep learning framework that integrates protein and small-molecule language models to accurately predict antibody-drug conjugate activity, aiding rational ADC design.
Contribution
This work introduces ADCNet, the first unified deep learning model combining protein and small-molecule representations for ADC activity prediction.
Findings
Achieves 87.12% prediction accuracy on test data
Outperforms baseline machine learning models across metrics
Demonstrates robustness through cross-validation and external tests
Abstract
Antibody-drug conjugate (ADC) has revolutionized the field of cancer treatment in the era of precision medicine due to their ability to precisely target cancer cells and release highly effective drug. Nevertheless, the realization of rational design of ADC is very difficult because the relationship between their structures and activities is difficult to understand. In the present study, we introduce a unified deep learning framework called ADCNet to help design potential ADCs. The ADCNet highly integrates the protein representation learning language model ESM-2 and small-molecule representation learning language model FG-BERT models to achieve activity prediction through learning meaningful features from antigen and antibody protein sequences of ADC, SMILES strings of linker and payload, and drug-antibody ratio (DAR) value. Based on a carefully designed and manually tailored ADC data…
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Taxonomy
TopicsHER2/EGFR in Cancer Research · Computational Drug Discovery Methods · Monoclonal and Polyclonal Antibodies Research
MethodsSparse Evolutionary Training
