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Molecule Joint Auto-Encoding: Trajectory Pretraining with 2D and 3D Diffusion

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Recently, artificial intelligence for drug discovery has raised increasing interest in both machine learning and chemistry domains. The fundamental building block for drug discovery is molecule geometry and thus, the molecule's geometrical representation is the main bottleneck to better utilize machine learning techniques for drug discovery. In this work, we propose a pretraining method for molecule joint auto-encoding (MoleculeJAE). MoleculeJAE can learn both the 2D bond (topology) and 3D conformation (geometry) information, and a diffusion process model is applied to mimic the augmented trajectories of such two modalities, based on which, MoleculeJAE will learn the inherent chemical structure in a self-supervised manner. Thus, the pretrained geometrical representation in MoleculeJAE is expected to benefit downstream geometry-related tasks. Empirically, MoleculeJAE proves its effectiveness by reaching state-of-the-art performance on 15 out of 20 tasks by comparing it with 12 competitive baselines.

Weitao Du, Jiujiu Chen, Xuecang Zhang, Zhiming Ma, Shengchao Liu• 2023

Related benchmarks

TaskDatasetResultRank
Molecular property predictionQM9 (test)
mu0.027
174
Force PredictionMD17 (test)
Aspirin Force Error1.289
24
Unconditional Molecule GenerationQM9 (test)
Validity97.65
13
Unconditional Molecule GenerationGEOM
Mol Stability Score84.5
3
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