TY - JOUR
T1 - A modular artificial intelligence framework to facilitate fluorophore design
AU - Zhu, Yuchen
AU - Fang, Jiebin
AU - Ahmed, Shadi Ali Hassen
AU - Zhang, Tao
AU - Zeng, Su
AU - Liao, Jia-Yu
AU - Ma, Zhongjun
AU - Qian, Linghui
N1 - This work was supported by the National Natural Science Foundation of China (82473881 and 82273887 to L.Q.), the Joint Funds of the Zhejiang Provincial Natural Science Foundation of China (LTZ22B020001 to J.L.), Key Research and Development Program of Zhejiang Province (2025C02087 to Z.M.), and Zhejiang University. We also thank Prof. Tingjun Hou for providing the server for computation and Prof. Chang-Yu Hsieh for helpful discussions throughout this work. The computational calculations were also supported by the HPC Center of Zhejiang University (Zhoushan Campus) and the High-performance Computing Platform of YZBSTCACC.
Publisher Copyright:
© The Author(s) 2025
PY - 2025/4/16
Y1 - 2025/4/16
N2 - Fluorescence imaging, indispensable for fundamental research and clinical practice, has been driven by advances in fluorophores. Despite fast growth over the years, many available fluorophores suffer from insufficient performances, and their development is highly dependent on trial-and-error experiments due to subtle structure-property effects and complicated solvent effects. Herein, FLAME (FLuorophore design Acceleration ModulE), an artificial intelligence framework with a modular architecture, is built by integrating open-source databases, multiple prediction models, and the latest molecule generators to facilitate fluorophore design. First, we constructed the largest open-source fluorophore database to date (FluoDB), containing 55,169 fluorophore-solvent pairs. Then FLSF (FLuorescence prediction with fluoroScaFfold-driven model) with a domain-knowledge-derived fingerprint for characterizing fluorescent scaffolds (called fluoroscaffold) was designed and demonstrated to predict optical properties quickly and accurately, whose reliability and potential have been verified via molecular and atomistic interpretability analysis. Further, a molecule generator was incorporated to provide new compounds with desired fluorescence. Representative 3,4-oxazole-fused coumarins were synthesized and evaluated, creating an unreported compound with bright fluorescence.
AB - Fluorescence imaging, indispensable for fundamental research and clinical practice, has been driven by advances in fluorophores. Despite fast growth over the years, many available fluorophores suffer from insufficient performances, and their development is highly dependent on trial-and-error experiments due to subtle structure-property effects and complicated solvent effects. Herein, FLAME (FLuorophore design Acceleration ModulE), an artificial intelligence framework with a modular architecture, is built by integrating open-source databases, multiple prediction models, and the latest molecule generators to facilitate fluorophore design. First, we constructed the largest open-source fluorophore database to date (FluoDB), containing 55,169 fluorophore-solvent pairs. Then FLSF (FLuorescence prediction with fluoroScaFfold-driven model) with a domain-knowledge-derived fingerprint for characterizing fluorescent scaffolds (called fluoroscaffold) was designed and demonstrated to predict optical properties quickly and accurately, whose reliability and potential have been verified via molecular and atomistic interpretability analysis. Further, a molecule generator was incorporated to provide new compounds with desired fluorescence. Representative 3,4-oxazole-fused coumarins were synthesized and evaluated, creating an unreported compound with bright fluorescence.
U2 - 10.1038/s41467-025-58881-5
DO - 10.1038/s41467-025-58881-5
M3 - Journal article
SN - 2041-1723
VL - 16
SP - 1
EP - 13
JO - Nature Communications
JF - Nature Communications
ER -