作者
Jinning Shao, Yue Liu, Jiaqi Yan, Ze-Yi Yan, Yangyang Wu, Zhongying Ru, Jia-Yu Liao, Xiaoye Miao, Linghui Qian
发表日期
2022/3/15
期刊
Journal of Chemical Information and Modeling
卷号
62
期号
6
页码范围
1368-1375
出版商
American Chemical Society
简介
Fluorescent molecules are important tools in biological detection, and numerous efforts have been made to develop compounds to meet the desired photophysical properties. For example, tuning the wavelength allows an appropriate penetration depth with minimal interference from the autofluorescence/scattering for a better signal-to-noise contrast. However, there are limited guidelines to rationally design or computationally predict the optical properties from first principles, and factors like the solvent effects will make it more complicated. Herein, we established a database (SMFluo1) of 1181 solvated small-molecule fluorophores covering the ultraviolet–visible–near-infrared absorption window and developed new machine learning models based on deep neural networks for accurately predicting photophysical parameters. The optimal system was applied to 120 out-of-sample compounds, and it exhibited …
引用总数
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J Shao, Y Liu, J Yan, ZY Yan, Y Wu, Z Ru, JY Liao… - Journal of Chemical Information and Modeling, 2022