PLINDER: The Protein-Ligand INteraction Dataset and Evaluation Resource
Project description
The Protein Ligand INteractions Dataset and Evaluation Resource
📚 About
PLINDER, short for protein ligand interactions dataset and evaluation resource, is a comprehensive, annotated, high quality dataset and resource for training and evaluation of protein-ligand docking algorithms:
- > 400k PLI systems across > 11k SCOP domains and > 50k unique small molecules
- 500+ annotations for each system, including protein and ligand properties, quality, matched molecular series and more
- Automated curation pipeline to keep up with the PDB
- 14 PLI metrics and over 20 billion similarity scores
- Unbound (apo) and predicted Alphafold2 structures linked to holo systems
- train-val-test splits and ability to tune splitting based on the learning task
- Robust evaluation harness to simplify and standard performance comparison between models.
The PLINDER project is a community effort, launched by the University of Basel, SIB Swiss Institute of Bioinformatics, VantAI, NVIDIA, MIT CSAIL, and will be regularly updated.
To accelerate community adoption, PLINDER will be used as the field’s new Protein-Ligand interaction dataset standard as part of an exciting competition at the upcoming 2024 Machine Learning in Structural Biology (MLSB) Workshop at NeurIPS, one of the field's premiere academic gatherings. More details about the competition and other helpful practical tips can be found at our recent workshop repo: Moving Beyond Memorization.
👋 Join the P(L)INDER user group Discord Server!
🔢 Plinder versions
We version the plinder
dataset with two controls:
PLINDER_RELEASE
: the month stamp of the last RCSB syncPLINDER_ITERATION
: value that enables iterative development within a release
We version the plinder
application using an automated semantic
versioning scheme based on the git
commit history.
The plinder.data
package is responsible for generating a dataset
release and the plinder.core
package makes it easy to interact
with the dataset.
Changelog:
-
2024-06/v2 (Current):
- New systems added based on the 2024-06 RCSB sync
- Updated system definition to be more stable and depend only on ligand distance rather than PLIP
- Added annotations for crystal contacts
- Improved ligand handling and saving to fix some bond order issues
- Improved covalency detection and annotation to reference each bond explicitly
- Added linked apo/pred structures to v2/links and v2/linked_structures
- Added binding affinity annotations from BindingDB
- Added statistics requirement and other changes in the split to enrich test set diversity
-
2024-04/v1: Version described in the preprint, with updated redundancy removal by protein pocket and ligand similarity.
-
2024-04/v0: Version used to re-train DiffDock in the paper, with redundancy removal based on <pdbid>_<ligand ccd codes>
🏅 Gold standard benchmark sets
As part of PLINDER resource we provide train, validation and test splits that are
curated to minimize the information leakage based on protein-ligand interaction
similarity.
In addition, we have prioritized the systems that has a linked experimental apo
structure or matched molecular series to support realistic inference scenarios for hit
discovery and optimization.
Finally, a particular care is taken for test set that is further prioritized to contain
high quality structures to provide unambiguous ground-truths for performance
benchmarking.
Moreover, as we enticipate this resource to be used for benchmarking a wide range of methods, including those simultaneously predicting protein structure (aka. co-folding) or those generating novel ligand structures, we further stratified test (by novel ligand, pocket, protein or all) to cover a wide range of tasks.
👨💻 Getting Started
The PLINDER dataset is provided in two ways:
- You can either use the files from the dataset directly using your preferred tooling by downloading the data from the public bucket,
- or you can utilize the dedicated
plinder
Python package for interfacing the data.
Downloading the dataset
The dataset can be downloaded from the bucket with gsutil.
$ export PLINDER_RELEASE=2024-06 # Current release
$ export PLINDER_ITERATION=v2 # Current iteration
$ mkdir -p ~/.local/share/plinder/${PLINDER_RELEASE}/${PLINDER_ITERATION}/
$ gsutil -m cp -r "gs://plinder/${PLINDER_RELEASE}/${PLINDER_ITERATION}/*" ~/.local/share/plinder/${PLINDER_RELEASE}/${PLINDER_ITERATION}/
For details on the sub-directories, see Documentation.
Installing the Python package
plinder
is available on PyPI.
pip install plinder
📝 Documentation
A more detailed description is available on the documentation website.
📃 Citation
Durairaj, Janani, Yusuf Adeshina, Zhonglin Cao, Xuejin Zhang, Vladas Oleinikovas, Thomas Duignan, Zachary McClure, Xavier Robin, Gabriel Studer, Daniel Kovtun, Emanuele Rossi, Guoqing Zhou, Srimukh Prasad Veccham, Clemens Isert, Yuxing Peng, Prabindh Sundareson, Mehmet Akdel, Gabriele Corso, Hannes Stärk, Gerardo Tauriello, Zachary Wayne Carpenter, Michael M. Bronstein, Emine Kucukbenli, Torsten Schwede, Luca Naef. 2024. “PLINDER: The Protein-Ligand Interactions Dataset and Evaluation Resource.” bioRxiv ICML'24 ML4LMS
Please see the citation file for details.
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