SOGCN:利用图卷积神经网络预测 MR-TADF 材料的关键特性

IF 4.1 3区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY ACS Chemical Neuroscience Pub Date : 2024-11-14 DOI:10.1016/j.cej.2024.157676
Yingfu Li, Bohua Zhang, Aimin Ren, Dongdong Wang, Jun Zhang, Changming Nie, Zhongmin Su, Luyi Zou
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引用次数: 0

摘要

利用多重共振热激活延迟荧光(MR-TADF)探索 OLED 器件中发光材料的结构和特性受到了周期长和实验成本高等挑战的制约,成为开发新材料的关键障碍。为应对这一挑战,我们提出了一种创新方法,即构建一个名为 SOGCN 的图卷积神经网络模型,以快速判断一种未合成材料是否具有成为 MR 材料的潜力,并准确预测其能隙和半峰宽,从而加快 MR-TADF 材料的开发进程。我们根据 220 个实验报告的 MR-TADF 分子构建了 MR220 数据集,用于训练模型。为了确保 SOGCN 模型在预测新样品时的可靠性,我们建立了一套严格的理论计算评估标准,为模型提供了重要参考。在对 37 个 MR-TADF 分子新样品的性质预测中,SOGCN 成功地预测了一些样品的单线-三线能隙(ΔEST),并在 FWHM 预测中表现出良好的趋势。最后,我们合成了设计分子 Design3(DtCzB-Boz),基于 DtCzB-Boz 的有机发光二极管在 508 nm 处显示出发射峰,其 FWHM 为 27 nm。光物理表征结果与 SOGCN 的预测值高度一致。值得注意的是,我们的模型预测值与实验/计算值之间的平均绝对误差(MAE)分别低至 0.037 eV 和 12 nm。这表明,SOGCN 在预测 MR-TADF 材料性能方面表现出更高的效率和准确性。
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SOGCN: Prediction of key properties of MR-TADF materials using graph convolutional neural networks
The exploration of the structure and properties of the luminescent materials in OLED devices using Multiple Resonance Thermally Activated Delayed Fluorescence (MR-TADF) is constrained by challenges related to long cycles and high experimental costs, making it a key obstacle in the development of new materials. In response to this challenge, we propose an innovative approach by constructing a graph convolutional neural network model named SOGCN to quickly determine whether an unsynthesized material has the potential to become an MR material, and accurately predict its energy gap and half-peak width, thereby expediting the development process of MR-TADF materials. We constructed the MR220 dataset for training the model based on 220 MR-TADF molecules reported in experiments. To ensure the reliability of the SOGCN model in predicting new samples, we have established a rigorous set of theoretical calculation evaluation standards, providing crucial references for the model. In the prediction of the properties of 37 new samples of MR-TADF molecules, SOGCN successfully predicted the singlet–triplet energy gap (ΔEST) of some samples, demonstrating a good trend in FWHM prediction as well. Finally, we have synthesized our designed molecule, Design3 (DtCzB-Boz), the organic light-emitting diodes based on DtCzB-Boz exhibit an emission peak at 508 nm, with the FWHM is 27 nm. The result of photophysical characterization is highly consistent with the predicted value of SOGCN. Notably, the mean absolute errors (MAE) between our model predictions and experimental/computational values were as low as 0.037 eV and 12 nm, respectively. This indicates that SOGCN exhibits higher efficiency and accuracy in predicting the properties of MR-TADF materials.
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来源期刊
ACS Chemical Neuroscience
ACS Chemical Neuroscience BIOCHEMISTRY & MOLECULAR BIOLOGY-CHEMISTRY, MEDICINAL
CiteScore
9.20
自引率
4.00%
发文量
323
审稿时长
1 months
期刊介绍: ACS Chemical Neuroscience publishes high-quality research articles and reviews that showcase chemical, quantitative biological, biophysical and bioengineering approaches to the understanding of the nervous system and to the development of new treatments for neurological disorders. Research in the journal focuses on aspects of chemical neurobiology and bio-neurochemistry such as the following: Neurotransmitters and receptors Neuropharmaceuticals and therapeutics Neural development—Plasticity, and degeneration Chemical, physical, and computational methods in neuroscience Neuronal diseases—basis, detection, and treatment Mechanism of aging, learning, memory and behavior Pain and sensory processing Neurotoxins Neuroscience-inspired bioengineering Development of methods in chemical neurobiology Neuroimaging agents and technologies Animal models for central nervous system diseases Behavioral research
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