BMAILGDec 28, 2023

AdaMR: Adaptable Molecular Representation for Unified Pre-training Strategy

arXiv:2401.06166v2h-index: 11
AI Analysis

This work addresses the need for adaptable pre-training in computational chemistry, offering incremental improvements for drug discovery applications.

The authors tackled the problem of unified pre-training for small-molecule drugs by proposing AdaMR, a strategy with adjustable molecular granularity, achieving state-of-the-art results on five out of eight downstream tasks including property prediction and generative tasks.

We propose Adjustable Molecular Representation (AdaMR), a new large-scale uniform pre-training strategy for small-molecule drugs, as a novel unified pre-training strategy. AdaMR utilizes a granularity-adjustable molecular encoding strategy, which is accomplished through a pre-training job termed molecular canonicalization, setting it apart from recent large-scale molecular models. This adaptability in granularity enriches the model's learning capability at multiple levels and improves its performance in multi-task scenarios. Specifically, the substructure-level molecular representation preserves information about specific atom groups or arrangements, influencing chemical properties and functionalities. This proves advantageous for tasks such as property prediction. Simultaneously, the atomic-level representation, combined with generative molecular canonicalization pre-training tasks, enhances validity, novelty, and uniqueness in generative tasks. All of these features work together to give AdaMR outstanding performance on a range of downstream tasks. We fine-tuned our proposed pre-trained model on six molecular property prediction tasks (MoleculeNet datasets) and two generative tasks (ZINC250K datasets), achieving state-of-the-art (SOTA) results on five out of eight tasks.

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