2023
DOI: 10.1002/advs.202206674
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Molecular Generative Model via Retrosynthetically Prepared Chemical Building Block Assembly

Abstract: Deep generative models are attracting attention as a smart molecular design strategy. However, previous models often render molecules with low synthesizability, hindering their real-world applications. Here, a novel graph-based conditional generative model which makes molecules by tailoring retrosynthetically prepared chemical building blocks until achieving target properties in an auto-regressive fashion is proposed. This strategy improves the synthesizability and property control of the resulting molecules a… Show more

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Cited by 14 publications
(10 citation statements)
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“…Another test case for linker generation is to optimize the linker within the protein-binding site, aiming to increase the binding affinity. Usually, the docking score is used as a surrogate for binding affinity with the target protein, and it has been widely employed as the objective for conditional molecular generation in de novo drug design . Here, we integrated the docking score in the reward function of RL to fine-tune the prior model to generate molecules with improved binding affinity.…”
Section: Resultsmentioning
confidence: 99%
“…Another test case for linker generation is to optimize the linker within the protein-binding site, aiming to increase the binding affinity. Usually, the docking score is used as a surrogate for binding affinity with the target protein, and it has been widely employed as the objective for conditional molecular generation in de novo drug design . Here, we integrated the docking score in the reward function of RL to fine-tune the prior model to generate molecules with improved binding affinity.…”
Section: Resultsmentioning
confidence: 99%
“…To effectively apply generative approaches in live drug discovery projects, it is essential to incorporate goal-directed generation, guiding generation of novel molecules towards specic properties. Therefore, we follow established methodologies 37,38 to assess the model's ability for goal-directed generation using simple molecular properties. More precisely, we optimize toward specic values for key molecular properties, including Topological Polar Surface Area (TPSA), Molecular Weight (MW), Calculated LogP (CLOGP), and Quantitative Estimation of Druglikeness (QED).…”
Section: Goal-directed Generative Capabilitiesmentioning
confidence: 99%
“…By using these motifs as building blocks in the generation process, the accuracy of the generation process can be effectively improved, especially for large molecules such as polymers . The main methods for building motif vocabulary are (1) defined by functional groups; (2) constructed based on heuristic rules; (3) using retrosynthetically prepared chemical building blocks; (4) mining connection-aware motifs . Motif-level building blocks can also be used in conjunction with atom-level building blocks to better utilize the information in the motifs …”
Section: Molecular Generation Strategiesmentioning
confidence: 99%