LGQMJun 27, 2021

DGL-LifeSci: An Open-Source Toolkit for Deep Learning on Graphs in Life Science

arXiv:2106.14232v1208 citationsHas Code
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This toolkit addresses the problem of complex GNN modeling for researchers in chemistry and biology, offering an incremental improvement in usability and performance.

The authors tackled the challenge of applying graph neural networks (GNNs) in life sciences by developing DGL-LifeSci, an open-source toolkit that simplifies GNN-based modeling for tasks like molecular property prediction, achieving up to 6x speedup compared to previous implementations.

Graph neural networks (GNNs) constitute a class of deep learning methods for graph data. They have wide applications in chemistry and biology, such as molecular property prediction, reaction prediction and drug-target interaction prediction. Despite the interest, GNN-based modeling is challenging as it requires graph data pre-processing and modeling in addition to programming and deep learning. Here we present DGL-LifeSci, an open-source package for deep learning on graphs in life science. DGL-LifeSci is a python toolkit based on RDKit, PyTorch and Deep Graph Library (DGL). DGL-LifeSci allows GNN-based modeling on custom datasets for molecular property prediction, reaction prediction and molecule generation. With its command-line interfaces, users can perform modeling without any background in programming and deep learning. We test the command-line interfaces using standard benchmarks MoleculeNet, USPTO, and ZINC. Compared with previous implementations, DGL-LifeSci achieves a speed up by up to 6x. For modeling flexibility, DGL-LifeSci provides well-optimized modules for various stages of the modeling pipeline. In addition, DGL-LifeSci provides pre-trained models for reproducing the test experiment results and applying models without training. The code is distributed under an Apache-2.0 License and is freely accessible at https://github.com/awslabs/dgl-lifesci.

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