De Novo Design of Molecules with Multiaction Potential from Differential Gene Expression using Variational Autoencoder
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Author list: Nutaya Pravalphruekul, Maytus Piriyajitakonkij, Phond Phunchongharn, and Supanida Piyayotai
Publisher: American Chemical Society
Publication year: 2023
Volume number: 63
Issue number: 13
Start page: 3999
End page: 4011
Number of pages: 13
ISSN: 1549-9596
eISSN: 1549-960X
URL: https://pubs.acs.org/doi/full/10.1021/acs.jcim.3c00355
Languages: English-United States (EN-US)
Abstract
The modulating effect of chemical compounds and therapeutics on gene transcription is well-reported and has been intensively studied for both clinical and research purposes. Emerging research points toward the utility of drug-induced transcriptional alterations in de novo molecular design and highlights the idea of phenotype-matching an expression signature of interest to the structures being designed. In this work, we build an autoencoder-based generative model, BiCEV, around this concept. Our generative autoencoder has demonstrably generated a set of new molecules from gene expression input with notable validity (96%), uniqueness (98%), and internal diversity (0.77). Further, we attempted to validate BiCEV by testing the model on gene-knockdown profiles and combined signatures of synergistic drug pairs. From these investigations, we found the designed structures to be consistently high in collective quality. However, when their similarities to the supposed functional equivalents as determined by shared targets were considered, the findings were somewhat mixed. In spite of this, we believe the generative model merits further development in conjunction with in vitro corroboration to lend itself to being an assistive tool for drug discovery experts, particularly to support the initial stages of hit identification and lead optimization.
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