CHEM-PHLGBMQMDec 28, 2025

QSAR-Guided Generative Framework for the Discovery of Synthetically Viable Odorants

arXiv:2512.23080v1
Originality Incremental advance
AI Analysis

This work addresses the problem of efficiently designing new odorants for the fragrance and flavor industries, representing an incremental improvement by integrating existing methods for limited data scenarios.

The authors tackled the challenge of discovering novel odorant molecules by developing a generative AI framework that combines a variational autoencoder with a QSAR model, achieving 100% syntactically valid structures, 94.8% uniqueness, and 74.4% novel core frameworks in generated candidates.

The discovery of novel odorant molecules is key for the fragrance and flavor industries, yet efficiently navigating the vast chemical space to identify structures with desirable olfactory properties remains a significant challenge. Generative artificial intelligence offers a promising approach for \textit{de novo} molecular design but typically requires large sets of molecules to learn from. To address this problem, we present a framework combining a variational autoencoder (VAE) with a quantitative structure-activity relationship (QSAR) model to generate novel odorants from limited training sets of odor molecules. The self-supervised learning capabilities of the VAE allow it to learn SMILES grammar from ChemBL database, while its training objective is augmented with a loss term derived from an external QSAR model to structure the latent representation according to odor probability. While the VAE demonstrated high internal consistency in learning the QSAR supervision signal, validation against an external, unseen ground truth dataset (Unique Good Scents) confirms the model generates syntactically valid structures (100\% validity achieved via rejection sampling) and 94.8\% unique structures. The latent space is effectively structured by odor likelihood, evidenced by a Fréchet ChemNet Distance (FCD) of $\approx$ 6.96 between generated molecules and known odorants, compared to $\approx$ 21.6 for the ChemBL baseline. Structural analysis via Bemis-Murcko scaffolds reveals that 74.4\% of candidates possess novel core frameworks distinct from the training data, indicating the model performs extensive chemical space exploration beyond simple derivatization of known odorants. Generated candidates display physicochemical properties ....

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