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Generalist Equivariant Transformer Towards 3D Molecular Interaction Learning

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Many processes in biology and drug discovery involve various 3D interactions between molecules, such as protein and protein, protein and small molecule, etc. Given that different molecules are usually represented in different granularity, existing methods usually encode each type of molecules independently with different models, leaving it defective to learn the various underlying interaction physics. In this paper, we first propose to universally represent an arbitrary 3D complex as a geometric graph of sets, shedding light on encoding all types of molecules with one model. We then propose a Generalist Equivariant Transformer (GET) to effectively capture both domain-specific hierarchies and domain-agnostic interaction physics. To be specific, GET consists of a bilevel attention module, a feed-forward module and a layer normalization module, where each module is E(3) equivariant and specialized for handling sets of variable sizes. Notably, in contrast to conventional pooling-based hierarchical models, our GET is able to retain fine-grained information of all levels. Extensive experiments on the interactions between proteins, small molecules and RNA/DNAs verify the effectiveness and generalization capability of our proposed method across different domains.

Xiangzhe Kong, Wenbing Huang, Yang Liu• 2023

Related benchmarks

TaskDatasetResultRank
Protein-ligand binding affinity predictionPDBbind Sequence Identity (30%) 2017
RMSE1.41
71
Binding affinity predictionLBA
RMSE1.331
14
High-throughput screeningPubChem AID 2258
logAUC [0.001, 0.1]34
8
High-throughput screeningPubChem AID 1798
logAUC20.8
8
High-throughput screeningPubChem AID 435034
logAUC [0.001, 0.1]0.246
8
High-throughput screeningPubChem AID 463087
logAUC (0.001, 0.1)38.9
8
High-throughput screeningPubChem AID 488997
logAUC0.319
8
High-throughput screeningPubChem AID 2689
logAUC [0.001, 0.1]0.367
8
High-throughput screeningPubChem AID 485290
logAUC [0.001, 0.1]46.3
8
High-throughput screeningPubChem AID 435008
logAUC20.3
8
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