2024
DOI: 10.1186/s13321-024-00852-x
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Generative design of compounds with desired potency from target protein sequences using a multimodal biochemical language model

Hengwei Chen,
Jürgen Bajorath

Abstract: Deep learning models adapted from natural language processing offer new opportunities for the prediction of active compounds via machine translation of sequential molecular data representations. For example, chemical language models are often derived for compound string transformation. Moreover, given the principal versatility of language models for translating different types of textual representations, off-the-beaten-path design tasks might be explored. In this work, we have investigated generative design of… Show more

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