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5 months ago

Hierarchical Graph-to-Graph Translation for Molecules

Wengong Jin; Regina Barzilay; Tommi Jaakkola

Hierarchical Graph-to-Graph Translation for Molecules

Abstract

The problem of accelerating drug discovery relies heavily on automatic tools to optimize precursor molecules to afford them with better biochemical properties. Our work in this paper substantially extends prior state-of-the-art on graph-to-graph translation methods for molecular optimization. In particular, we realize coherent multi-resolution representations by interweaving the encoding of substructure components with the atom-level encoding of the original molecular graph. Moreover, our graph decoder is fully autoregressive, and interleaves each step of adding a new substructure with the process of resolving its attachment to the emerging molecule. We evaluate our model on multiple molecular optimization tasks and show that our model significantly outperforms previous state-of-the-art baselines.

Code Repositories

wengong-jin/hgraph2graph
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
drug-discovery-on-drd2HierG2G
Diversity: 0.192
Success: 85.9%
drug-discovery-on-qedHierG2G
Diversity: 0.477
Success: 76.9%

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Hierarchical Graph-to-Graph Translation for Molecules | Papers | HyperAI