LGOct 2, 2023

Drug Discovery with Dynamic Goal-aware Fragments

arXiv:2310.00841v321 citationsh-index: 15Has Code
Originality Incremental advance
AI Analysis

This work addresses the challenge of generating drug candidates with target-specific properties in molecular design, representing an incremental improvement over existing fragment-based methods.

The authors tackled the problem of fragment-based drug discovery by proposing GEAM, a generative framework that dynamically updates goal-aware fragments, resulting in effective discovery of drug candidates across various tasks.

Fragment-based drug discovery is an effective strategy for discovering drug candidates in the vast chemical space, and has been widely employed in molecular generative models. However, many existing fragment extraction methods in such models do not take the target chemical properties into account or rely on heuristic rules. Additionally, the existing fragment-based generative models cannot update the fragment vocabulary with goal-aware fragments newly discovered during the generation. To this end, we propose a molecular generative framework for drug discovery, named Goal-aware fragment Extraction, Assembly, and Modification (GEAM). GEAM consists of three modules, each responsible for goal-aware fragment extraction, fragment assembly, and fragment modification. The fragment extraction module identifies important fragments contributing to the desired target properties with the information bottleneck principle, thereby constructing an effective goal-aware fragment vocabulary. Moreover, GEAM can explore beyond the initial vocabulary with the fragment modification module, and the exploration is further enhanced through the dynamic goal-aware vocabulary update. We experimentally demonstrate that GEAM effectively discovers drug candidates through the generative cycle of the three modules in various drug discovery tasks. Our code is available at https://github.com/SeulLee05/GEAM.

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