Publication | Closed Access
Prediction of Molecular Electronic Transitions Using Random Forests
52
Citations
45
References
2020
Year
EngineeringFluorescent MoleculesMolecular BiologyComputational ChemistryMolecular ComputingMolecular DesignPhosphorescence ImagingSingle Molecule BiophysicsHigh Oscillator StrengthsBioimagingComputational BiochemistryPhotophysical PropertyBiophysicsOscillator StrengthsBiophotonicsQuantum ChemistrySingle-molecule DetectionNatural SciencesMolecular PropertyMolecular BiophysicsTheoretical Prediction
Fluorescent molecules, fluorophores or dyes, play essential roles in bioimaging. Effective bioimaging requires fluorophores with diverse colors and high quantum yields for better resolution. An essential computational component to design novel dye molecules is an accurate model that predicts the electronic properties of molecules. Here, we present statistical machines that predict the excitation energies and associated oscillator strengths of a given molecule using the random forest algorithm. The excitation energies and oscillator strengths of a molecule are closely related to the emission spectrum and the quantum yields of fluorophores, respectively. In this study, we identified specific molecular substructures that induce high oscillator strengths of molecules. The results of our study are expected to serve as new design principles for designing novel fluorophores.
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