The prediction of single-molecule magnet properties via deep learning

IF 2.9 2区 材料科学 Q2 CHEMISTRY, MULTIDISCIPLINARY IUCrJ Pub Date : 2024-03-01 DOI:10.1107/S2052252524000770
Yuji Takiguchi , Daisuke Nakane , Takashiro Akitsu , C.-Y. Su (Editor)
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Abstract

This work involves extraction of salen metal complexes from the Cambridge Structural Database for deep learning to examine the 3D structural features that allow such complexes to act as single-molecule magnets. This research attempts to link a crystal structure database as big data with the molecular design of nanomaterials using artificial intelligence. The approach pioneers the future secondary use of similar crystal structure data.

This paper uses deep learning to present a proof-of-concept for data-driven chemistry in single-molecule magnets (SMMs). Previous discussions within SMM research have proposed links between molecular structures (crystal structures) and single-molecule magnetic properties; however, these have only interpreted the results. Therefore, this study introduces a data-driven approach to predict the properties of SMM structures using deep learning. The deep-learning model learns the structural features of the SMM molecules by extracting the single-molecule magnetic properties from the 3D coordinates presented in this paper. The model accurately determined whether a molecule was a single-molecule magnet, with an accuracy rate of approximately 70% in predicting the SMM properties. The deep-learning model found SMMs from 20 000 metal complexes extracted from the Cambridge Structural Database. Using deep-learning models for predicting SMM properties and guiding the design of novel molecules is promising.

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通过深度学习预测单分子磁特性。
本文利用深度学习提出了单分子磁体(SMM)中数据驱动化学的概念验证。之前的单分子磁体研究讨论提出了分子结构(晶体结构)与单分子磁性之间的联系;然而,这些讨论只是对结果进行了解释。因此,本研究引入了一种数据驱动的方法,利用深度学习预测 SMM 结构的特性。深度学习模型通过从本文介绍的三维坐标中提取单分子磁性来学习 SMM 分子的结构特征。该模型能准确判断分子是否为单分子磁体,预测 SMM 特性的准确率约为 70%。该深度学习模型从剑桥结构数据库中提取的 20,000 个金属复合物中发现了单分子磁体。利用深度学习模型预测单分子磁体特性并指导新型分子的设计前景广阔。
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来源期刊
IUCrJ
IUCrJ CHEMISTRY, MULTIDISCIPLINARYCRYSTALLOGRAPH-CRYSTALLOGRAPHY
CiteScore
7.50
自引率
5.10%
发文量
95
审稿时长
10 weeks
期刊介绍: IUCrJ is a new fully open-access peer-reviewed journal from the International Union of Crystallography (IUCr). The journal will publish high-profile articles on all aspects of the sciences and technologies supported by the IUCr via its commissions, including emerging fields where structural results underpin the science reported in the article. Our aim is to make IUCrJ the natural home for high-quality structural science results. Chemists, biologists, physicists and material scientists will be actively encouraged to report their structural studies in IUCrJ.
期刊最新文献
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