Datasets:
license: cc-by-4.0
tags:
- ai4science
- aidd
- virtual_screening
- pocket_matching
pretty_name: ProFSADB
ProFSADB
Dataset Description
ProFSADB is a large-scale protein-ligand interaction pretraining dataset generated by simulating pocket-ligand complexes from high-resolution protein structures. It addresses the scarcity of experimentally determined protein-ligand complexes (e.g., PDB) by extracting 5+ million non-redundant pocket-pseudo-ligand pairs through fragmentation and interaction modeling. Each complex mimics ligand-receptor interactions to enable robust pretraining for biomedical tasks like druggability prediction and ligand affinity estimation.
Dataset Structure
- Samples: Over 5 million complexes.
- Format: PDB files containing one complex per file.
- Receptor chain (
R
): Pocket residues surrounding the pseudo-ligand. - Ligand chain (
L
): Drug-like protein fragment acting as a pseudo-ligand.
- Receptor chain (
- Stratified Sampling: Aligned with the PDBBind (v2020) distribution to ensure biological relevance.
Creation Process
- Fragment Isolation: Protein structures are segmented into fragments (pseudo-ligands), with terminal corrections to address peptide bond-breaking artifacts.
- Pocket Definition: Excludes the five nearest residues on each fragment side to focus on long-range interactions. Pockets are defined as residues with ≥1 heavy atom within 6Å of the fragment.
- Quality Control: Complexes are filtered to retain only high-confidence interaction pairs.
Unique Advantages
- Scale: 50× larger than existing experimental complex datasets (e.g., PDB).
- Interaction Modeling: Contrastive pretraining aligns pocket features with pretrained small-molecule representations.
- Diversity: Leverages structural variety from protein databases to reduce data bias.
License
CC-BY-4.0
Citation
If you use ProFSADB or the ProFSA method, please cite:
@inproceedings{gao2023self,
title={Self-supervised Pocket Pretraining via Protein Fragment-Surroundings Alignment},
author={Gao, Bowen* and Jia, Yinjun* and Mo, Yuanle and Ni, Yuyan and Ma, Weiying and Ma, Zhiming and Lan, Yanyan†},
booktitle={International Conference on Learning Representations (ICLR)},
year={2023},
url={https://openreview.net/forum?id=uMAujpVi9m}
}
Links
- Paper: Self-supervised Pocket Pretraining via Protein Fragment-Surroundings Alignment
- Homepage: Project Page
ProFSA Model Weights
The weights of our best model pretrained using the ProFSADB data is located at checkpoint_best.pt
.