PIGNet: A physics-informed deep learning model toward generalized
drug-target interaction predictions
- URL: http://arxiv.org/abs/2008.12249v2
- Date: Mon, 13 Dec 2021 06:43:45 GMT
- Title: PIGNet: A physics-informed deep learning model toward generalized
drug-target interaction predictions
- Authors: Seokhyun Moon, Wonho Zhung, Soojung Yang, Jaechang Lim and Woo Youn
Kim
- Abstract summary: We propose two key strategies to enhance generalization in the DTI model.
The first is to predict the atom-atom pairwise interactions via physics-informed equations parameterized with neural networks.
We further improved the model generalization by augmenting a range of binding poses and to broader training data.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, deep neural network (DNN)-based drug-target interaction (DTI)
models were highlighted for their high accuracy with affordable computational
costs. Yet, the models' insufficient generalization remains a challenging
problem in the practice of in-silico drug discovery. We propose two key
strategies to enhance generalization in the DTI model. The first is to predict
the atom-atom pairwise interactions via physics-informed equations
parameterized with neural networks and provides the total binding affinity of a
protein-ligand complex as their sum. We further improved the model
generalization by augmenting a broader range of binding poses and ligands to
training data. We validated our model, PIGNet, in the comparative assessment of
scoring functions (CASF) 2016, demonstrating the outperforming docking and
screening powers than previous methods. Our physics-informing strategy also
enables the interpretation of predicted affinities by visualizing the
contribution of ligand substructures, providing insights for further ligand
optimization.
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