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Molecular representation learning with language models and domain-relevant auxiliary tasks

About

We apply a Transformer architecture, specifically BERT, to learn flexible and high quality molecular representations for drug discovery problems. We study the impact of using different combinations of self-supervised tasks for pre-training, and present our results for the established Virtual Screening and QSAR benchmarks. We show that: i) The selection of appropriate self-supervised task(s) for pre-training has a significant impact on performance in subsequent downstream tasks such as Virtual Screening. ii) Using auxiliary tasks with more domain relevance for Chemistry, such as learning to predict calculated molecular properties, increases the fidelity of our learnt representations. iii) Finally, we show that molecular representations learnt by our model `MolBert' improve upon the current state of the art on the benchmark datasets.

Benedek Fabian, Thomas Edlich, H\'el\'ena Gaspar, Marwin Segler, Joshua Meyers, Marco Fiscato, Mohamed Ahmed• 2020

Related benchmarks

TaskDatasetResultRank
Molecular property predictionMoleculeNet BBBP (scaffold)
ROC AUC76.2
117
Molecular property predictionMoleculeNet BACE (scaffold)
ROC-AUC86.6
87
Molecular property predictionMoleculeNet HIV (scaffold)
ROC AUC78.3
66
Regression-based molecular property predictionFreeSolv (random split)
RMSE0.941
5
Regression-based molecular property predictionESOL (random split)
RMSE0.531
5
Regression-based molecular property predictionLipophilicity (random split)
RMSE0.561
5
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