4.6 Article

Adaptive language model training for molecular design

Journal

JOURNAL OF CHEMINFORMATICS
Volume 15, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13321-023-00719-7

Keywords

Masked language model; Drug discovery; Genetic algorithm

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The vast chemical space requires computational approaches to automate molecular sequence design for drug discovery. Genetic algorithms and masked language models are used to generate mutations in known chemical structures. The adaptive strategy of training the language model on new generations of molecules selected for target properties improves fitness optimization compared to the fixed pre-trained model. The application of language models to molecular design tasks is empowered by the adaptive strategy and demonstrates significant improvements in fitness optimization.
The vast size of chemical space necessitates computational approaches to automate and accelerate the design of molecular sequences to guide experimental efforts for drug discovery. Genetic algorithms provide a useful framework to incrementally generate molecules by applying mutations to known chemical structures. Recently, masked language models have been applied to automate the mutation process by leveraging large compound libraries to learn commonly occurring chemical sequences (i.e., using tokenization) and predict rearrangements (i.e., using mask prediction). Here, we consider how language models can be adapted to improve molecule generation for different optimization tasks. We use two different generation strategies for comparison, fixed and adaptive. The fixed strategy uses a pre-trained model to generate mutations; the adaptive strategy trains the language model on each new generation of molecules selected for target properties during optimization. Our results show that the adaptive strategy allows the language model to more closely fit the distribution of molecules in the population. Therefore, for enhanced fitness optimization, we suggest the use of the fixed strategy during an initial phase followed by the use of the adaptive strategy. We demonstrate the impact of adaptive training by searching for molecules that optimize both heuristic metrics, drug-likeness and synthesizability, as well as predicted protein binding affinity from a surrogate model. Our results show that the adaptive strategy provides a significant improvement in fitness optimization compared to the fixed pre-trained model, empowering the application of language models to molecular design tasks.

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