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Hierarchical Generation of Molecular Graphs using Structural Motifs

About

Graph generation techniques are increasingly being adopted for drug discovery. Previous graph generation approaches have utilized relatively small molecular building blocks such as atoms or simple cycles, limiting their effectiveness to smaller molecules. Indeed, as we demonstrate, their performance degrades significantly for larger molecules. In this paper, we propose a new hierarchical graph encoder-decoder that employs significantly larger and more flexible graph motifs as basic building blocks. Our encoder produces a multi-resolution representation for each molecule in a fine-to-coarse fashion, from atoms to connected motifs. Each level integrates the encoding of constituents below with the graph at that level. Our autoregressive coarse-to-fine decoder adds one motif at a time, interleaving the decision of selecting a new motif with the process of resolving its attachments to the emerging molecule. We evaluate our model on multiple molecule generation tasks, including polymers, and show that our model significantly outperforms previous state-of-the-art baselines.

Wengong Jin, Regina Barzilay, Tommi Jaakkola• 2020

Related benchmarks

TaskDatasetResultRank
Molecular Generationparp1
Top-Hit 5% Docking Score (kcal/mol)-9.487
27
Molecular Generationjak2
Top-Hit 5% Docking Score (kcal/mol)-8.285
27
Molecular Generationfa7
Top-Hit 5% Docking Score (kcal/mol)-6.812
27
Molecular Generation5ht1b
Docking Score (Top-Hit 5%, kcal/mol)-8.081
27
Molecular Generationbraf
Top-Hit 5% Docking Score (kcal/mol)-8.978
26
Molecular Dockingjak2
Mean Docking Score-8.285
18
Molecular Dockingparp1
Mean Docking Score-9.487
18
Molecular Dockingfa7
Mean Docking Score-6.812
18
Molecular Docking5ht1b
Mean Docking Score-8.081
18
Molecular Dockingbraf
Mean Docking Score-8.978
17
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