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Predicting Emission Spectra of Heteroleptic Iridium Complexes Using Artificial Chemical Intelligence. | LitMetric

Predicting Emission Spectra of Heteroleptic Iridium Complexes Using Artificial Chemical Intelligence.

Chemphyschem

Theoretical Chemistry Institute and Department of Chemistry, University of Wisconsin-Madison, 1101 University Avenue, Madison, WI 53706, United States.

Published: August 2024

AI Article Synopsis

  • A deep learning method is developed to predict the emission spectra of phosphorescent Ir(III) complexes, aiding the discovery of novel chromophores for applications like organic light-emitting diodes and solar fuel cells.
  • The models use graph neural networks to account for the structural features of the complexes, leading to efficient training and accurate predictions of emission spectra, even with low-quality experimental data.
  • This approach not only enhances the accuracy over traditional methods but also facilitates exploring a vast chemical space with limited experimental data, minimizing the need for extensive high-throughput screening efforts.

Article Abstract

We report a deep learning-based approach to accurately predict the emission spectra of phosphorescent heteroleptic [Ir( )( )] complexes, enabling the rapid discovery of novel Ir(III) chromophores for diverse applications including organic light-emitting diodes and solar fuel cells. The deep learning models utilize graph neural networks and other chemical features in architectures that reflect the inherent structure of the heteroleptic complexes, composed of and ligands, and are thus geared towards efficient training over the dataset. By leveraging experimental emission data, our models reliably predict the full emission spectra of these complexes across various emission profiles, surpassing the accuracy of conventional DFT and correlated wavefunction methods, while simultaneously achieving robustness to the presence of imperfect (noisy, low-quality) training spectra. We showcase the potential applications for these and related models for in silico prediction of complexes with tailored emission properties, as well as in "design of experiment" contexts to reduce the synthetic burden of high-throughput screening. In the latter case, we demonstrate that the models allow us to exploit a limited amount of experimental data to explore a wide range of chemical space, thus leveraging a modest synthetic effort.

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Source
http://dx.doi.org/10.1002/cphc.202400176DOI Listing

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