LGJan 12

Transformer-Based Approach for Automated Functional Group Replacement in Chemical Compounds

arXiv:2601.07930v1
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem in cheminformatics for designing novel compounds, offering an incremental improvement over existing transformer-based methods by ensuring structural similarity.

The paper tackled the problem of functional group replacement in chemical compounds by developing a two-stage transformer model that generates removals and replacements sequentially, resulting in chemically valid transformations and diverse chemical space exploration.

Functional group replacement is a pivotal approach in cheminformatics to enable the design of novel chemical compounds with tailored properties. Traditional methods for functional group removal and replacement often rely on rule-based heuristics, which can be limited in their ability to generate diverse and novel chemical structures. Recently, transformer-based models have shown promise in improving the accuracy and efficiency of molecular transformations, but existing approaches typically focus on single-step modeling, lacking the guarantee of structural similarity. In this work, we seek to advance the state of the art by developing a novel two-stage transformer model for functional group removal and replacement. Unlike one-shot approaches that generate entire molecules in a single pass, our method generates the functional group to be removed and appended sequentially, ensuring strict substructure-level modifications. Using a matched molecular pairs (MMPs) dataset derived from ChEMBL, we trained an encoder-decoder transformer model with SMIRKS-based representations to capture transformation rules effectively. Extensive evaluations demonstrate our method's ability to generate chemically valid transformations, explore diverse chemical spaces, and maintain scalability across varying search sizes.

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