Three-Dimensional Convolutional Neural Networks and
a Cross-Docked Data Set for Structure-Based Drug Design
Posted on 2020-09-10 - 10:03
One
of the main challenges in drug discovery is predicting protein–ligand
binding affinity. Recently, machine learning approaches have made
substantial progress on this task. However, current methods of model
evaluation are overly optimistic in measuring generalization to new
targets, and there does not exist a standard data set of sufficient
size to compare performance between models. We present a new data
set for structure-based machine learning, the CrossDocked2020 set,
with 22.5 million poses of ligands docked into multiple similar binding
pockets across the Protein Data Bank, and perform a comprehensive
evaluation of grid-based convolutional neural network (CNN) models
on this data set. We also demonstrate how the partitioning of the
training data and test data can impact the results of models trained
with the PDBbind data set, how performance improves by adding more
lower-quality training data, and how training with docked poses imparts
pose sensitivity to the predicted affinity of a complex. Our best
performing model, an ensemble of five densely connected CNNs, achieves
a root mean squared error of 1.42 and Pearson R of
0.612 on the affinity prediction task, an AUC of 0.956 at binding
pose classification, and a 68.4% accuracy at pose selection on the
CrossDocked2020 set. By providing data splits for clustered cross-validation
and the raw data for the CrossDocked2020 set, we establish the first
standardized data set for training machine learning models to recognize
ligands in noncognate target structures while also greatly expanding
the number of poses available for training. In order to facilitate
community adoption of this data set for benchmarking protein–ligand
binding affinity prediction, we provide our models, weights, and the
CrossDocked2020 set at https://github.com/gnina/models.
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Francoeur, Paul G.; Masuda, Tomohide; Sunseri, Jocelyn; Jia, Andrew; Iovanisci, Richard B.; Snyder, Ian; et al. (2020). Three-Dimensional Convolutional Neural Networks and
a Cross-Docked Data Set for Structure-Based Drug Design. ACS Publications. Collection. https://doi.org/10.1021/acs.jcim.0c00411