荧光性质的集成机器学习和适用域估计及其在结构设计中的应用

Yuki Sugawara, Masaaki Kotera, Kenichi Tanaka, K. Funatsu
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引用次数: 3

摘要

荧光物质有着广泛的应用,需要有效设计具有理想吸收和发射波长的分子的方法。本研究以硼-二吡咯甲烷(BODIPY)化合物为例,利用系综学习技术构建了高精度的波长预测模型。利用RDKit描述符和Morgan指纹提高了叠加模型的预测精度。与分子骨架和共轭长度相关的变量被证明是重要的。我们还提出了一种直接使用基于谷本距离的描述符的适用性域估计模型。AD模型的性能优于基于ocsvm的模型。利用我们提出的叠加模型和AD模型对新生成的化合物进行筛选,得到602个在吸收波长和发射波长上都在AD内的化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Machine Learning and Applicability Domain Estimation for Fluorescence Properties and its Application to Structural Design
Fluorescent substances are used in a wide range of applications, and the method that effectively design molecules having desirable absorption and emission wavelength is required. In this study, we used boron-dipyrromethene (BODIPY) compounds as a case study, and constructed high precision wavelength prediction model using ensemble learning. Prediction accuracy improved in stacking model using RDKit descriptors and Morgan fingerprint. The variables related to the molecular skeleton and the conjugation length were shown to be important. We also proposed an applicability domain (AD) estimation model that directly use the descriptors based on Tanimoto distance. The performance of the AD models was shown better than the OCSVM-based model. Using our proposed stacking model and AD model, newly generated compounds were screened and we obtained 602 compounds which were estimated inside the AD in both absorption wavelength and emission wavelength.
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来源期刊
Journal of Computer Aided Chemistry
Journal of Computer Aided Chemistry CHEMISTRY, MULTIDISCIPLINARY-
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