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Phenotypic Profile-Informed Generation of Drug-Like Molecules via Dual-Channel Variational Autoencoders

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The de novo generation of drug-like molecules capable of inducing desirable phenotypic changes is receiving increasing attention. However, previous methods predominantly rely on expression profiles to guide molecule generation, but overlook the perturbative effect of the molecules on cellular contexts. To overcome this limitation, we propose SmilesGEN, a novel generative model based on variational autoencoder (VAE) architecture to generate molecules with potential therapeutic effects. SmilesGEN integrates a pre-trained drug VAE (SmilesNet) with an expression profile VAE (ProfileNet), jointly modeling the interplay between drug perturbations and transcriptional responses in a common latent space. Specifically, ProfileNet is imposed to reconstruct pre-treatment expression profiles when eliminating drug-induced perturbations in the latent space, while SmilesNet is informed by desired expression profiles to generate drug-like molecules. Our empirical experiments demonstrate that SmilesGEN outperforms current state-of-the-art models in generating molecules with higher degree of validity, uniqueness, novelty, as well as higher Tanimoto similarity to known ligands targeting the relevant proteins. Moreover, we evaluate SmilesGEN for scaffold-based molecule optimization and generation of therapeutic agents, and confirmed its superior performance in generating molecules with higher similarity to approved drugs. SmilesGEN establishes a robust framework that leverages gene signatures to generate drug-like molecules that hold promising potential to induce desirable cellular phenotypic changes.

Hui Liu, Shiye Tian, Xuejun Liu• 2025

Related benchmarks

TaskDatasetResultRank
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: AKT1
Affinity-5.23
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target AURKB
Affinity-6.21
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: CTSK
Affinity-4.81
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: HDAC1
Affinity-3.51
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: MTOR
Affinity-5.96
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: PIK3CA
Affinity-5.65
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: SMAD3
Affinity-3.54
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: EGFR
Affinity (pKd/pKi)-6.67
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: AKT2
Affinity-5.84
8
Phenotype-guided Molecular GenerationRCSB PDB and DTC Target: TP53
Affinity-4.56
8
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