Accelerated Design of Near-Infrared-II Molecular Fluorophores via First-Principles Understanding and Machine Learning

Shidang Xu, Pengfei Cai, Jiali Li, Xianhe Zhang, Xianglong Liu, Xiaonan Wang, Bin Liu
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Abstract

Organic molecular fluorophores in the second near-infrared window (NIR-II) have attracted much attention in the recent decade due to their great potentials in both fundamental research and practical applications. This is especially true for biomedical research, owing to their deep light penetration depth and low bioluminescence background at the long wavelength. However, the fluorescence quantum yields (QY) of most NIR-II materials are very low, which are not ideal for practical applications. Although there is a growing need to discover new NIR-II fluorophores, most of them were designed based on experience, and the structures were limited to few molecular motifs. Herein, we report the design of high QY NIR-II fluorophores in solutions based on enhancing the rigidity of the conjugated backbones, which could be quantified by the Seminario method. A deep neural network was trained to predict the HOMO-LUMO energy gaps for a chemical library of NIR-II backbone structures. Hundreds of new NIR-II cores with low energy gap were discovered, and eight of them across different acceptor cores are found to have relatively rigid conjugated backbones. With further molecular processing or formulation, the proposed new fluorophores should boost the development of NIR-II materials for applications in a wide range of fields.
基于第一性原理理解和机器学习的近红外II分子荧光团加速设计
近十年来,第二近红外窗口(NIR-II)中的有机分子荧光团因其在基础研究和实际应用中的巨大潜力而备受关注。生物医学研究尤其如此,因为它们的光穿透深度很深,在长波长下生物发光背景很低。然而,大多数NIR-II材料的荧光量子产率(QY)非常低,这对于实际应用来说并不理想。尽管人们越来越需要发现新的NIR-II荧光团,但它们中的大多数都是基于经验设计的,并且结构仅限于少数分子基序。在此,我们报道了在提高共轭主链刚性的基础上,在溶液中设计高QY NIR-II荧光团,这可以通过Semario方法进行量化。训练深度神经网络来预测NIR-II主链结构的化学库的HOMO-LUMO能隙。发现了数百个具有低能隙的新NIR-II核,其中8个跨不同受体核的核具有相对刚性的共轭主链。随着进一步的分子加工或配方,所提出的新荧光团将促进NIR-II材料在广泛领域的应用发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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