Poster
PPFLOW: Target-Aware Peptide Design with Torsional Flow Matching
Haitao Lin · Odin Zhang · Huifeng Zhao · Dejun Jiang · Lirong Wu · Zicheng Liu · Yufei Huang · Stan Z Li
Hall C 4-9 #114
Therapeutic peptides have proven to have great pharmaceutical value and potential in recent decades. However, methods of AI-assisted peptide drug discovery are not fully explored. To fill the gap, we propose a target-aware peptide design method called PPFlow, based on conditional flow matching on torus manifolds, to model the internal geometries of torsion angles for the peptide structure design. Besides, we establish a protein-peptide binding dataset named PPBench2024 to fill the void of massive data for the task of structure-based peptide drug design and to allow the training of deep learning methods. Extensive experiments show that PPFlow reaches state-of-the-art performance in tasks of peptide drug generation and optimization in comparison with baseline models, and can be generalized to other tasks including docking and side-chain packing.