Multi-objective fluorescent molecule design with a data-physics dual-driven generative framework
Yanheng Li, Zhichen Pu, Lijiang Yang, Zehao Zhou, Yi Qin Gao

TL;DR
LUMOS is a novel data-physics driven framework that enables efficient, reliable, and multi-objective inverse design of fluorescent molecules by integrating neural networks, quantum calculations, and evolutionary algorithms.
Contribution
The paper introduces LUMOS, a new framework combining data-driven and physics-based methods for de novo fluorescent molecule design with multi-objective optimization.
Findings
LUMOS outperforms baseline models in property prediction accuracy.
LUMOS demonstrates superior molecular optimization capabilities.
Generated fluorophores meet diverse target specifications in validation tests.
Abstract
Designing fluorescent small molecules with tailored optical and physicochemical properties requires navigating vast, underexplored chemical space while satisfying multiple objectives and constraints. Conventional generate-score-screen approaches become impractical under such realistic design specifications, owing to their low search efficiency, unreliable generalizability of machine-learning prediction, and the prohibitive cost of quantum chemical calculation. Here we present LUMOS, a data-and-physics driven framework for inverse design of fluorescent molecules. LUMOS couples generator and predictor within a shared latent representation, enabling direct specification-to-molecule design and efficient exploration. Moreover, LUMOS combines neural networks with a fast time-dependent density functional theory (TD-DFT) calculation workflow to build a suite of complementary predictors spanning…
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Taxonomy
TopicsMachine Learning in Materials Science · Computational Drug Discovery Methods · Advanced Multi-Objective Optimization Algorithms
