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arxiv:2310.02066

De Novo Drug Design with Joint Transformers

Published on Oct 3, 2023
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Abstract

A joint generative model integrating Transformer decoder, encoder, and property predictor optimizes molecule generation for drug design beyond training data.

De novo drug design requires simultaneously generating novel molecules outside of training data and predicting their target properties, making it a hard task for generative models. To address this, we propose Joint Transformer that combines a Transformer decoder, Transformer encoder, and a predictor in a joint generative model with shared weights. We formulate a probabilistic black-box optimization algorithm that employs Joint Transformer to generate novel molecules with improved target properties and outperforms other SMILES-based optimization methods in de novo drug design.

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