tags:
- molecules
- chemistry
- SMILES
How to use the data sets
This dataset contains 1.9M unique pairs of protein sequences and ligand SMILES with experimentally determined binding affinities. It can be used for fine-tuning a language model.
The data comes from the following sources:
- BindingDB
- PDBbind-cn
- BioLIP
- BindingMOAD
Use the already preprocessed data
Load a test/train split using
from datasets import load_dataset
train = load_dataset("jglaser/binding_affinity",split='train[:90%]')
validation = load_dataset("jglaser/binding_affinity",split='train[90%:]')
Optionally, datasets with certain protein sequences removed are available. These can be used to test the predictive power for specific proteins even when these are not part of the training data.
train_no_kras
(no KRAS proteins)
Loading the data manually
The file data/all.parquet
contains the preprocessed data. To extract it,
you need download and install [git LFS support] https://git-lfs.github.com/].
Pre-process yourself
To manually perform the preprocessing, download the data sets from
- BindingDB
In bindingdb
, download the database as tab separated values
https://bindingdb.org > Download > BindingDB_All_2021m4.tsv.zip
and extract the zip archive into bindingdb/data
Run the steps in bindingdb.ipynb
- PDBBind-cn
Register for an account at https://www.pdbbind.org.cn/, confirm the validation email, then login and download
- the Index files (1)
- the general protein-ligand complexes (2)
- the refined protein-ligand complexes (3)
Extract those files in pdbbind/data
Run the script pdbbind.py
in a compute job on an MPI-enabled cluster
(e.g., mpirun -n 64 pdbbind.py
).
Perform the steps in the notebook pdbbind.ipynb
- BindingMOAD
Go to https://bindingmoad.org and download the files every.csv
(All of Binding MOAD, Binding Data) and the non-redundant biounits
(nr_bind.zip
). Place and extract those files into binding_moad
.
Run the script moad.py
in a compute job on an MPI-enabled cluster
(e.g., mpirun -n 64 moad.py
).
Perform the steps in the notebook moad.ipynb
- BioLIP
Download from https://zhanglab.ccmb.med.umich.edu/BioLiP/ the files
- receptor1.tar.bz2 (Receptor1, Non-redudant set)
- ligand_2013-03-6.tar.bz2 (Ligands)
- BioLiP.tar.bz2 (Annotations)
and extract them in
biolip/data
.
The following steps are optional, they do not result in additional binding affinity data.
Download the script
- download_all_sets.pl from the Weekly update subpage.
Update the 2013 database to its current state
perl download_all-sets.pl
Run the script biolip.py
in a compute job on an MPI-enabled cluster
(e.g., mpirun -n 64 biolip.py
).
Perform the steps in the notebook biolip.ipynb
- Final concatenation and filtering
Run the steps in the notebook combine_dbs.ipynb