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实验与理论协作揭示的配位自组装过程:迈向分子自组装的动力学控制

Coordination Self-Assembly Processes Revealed by Collaboration of Experiment and Theory: Toward Kinetic Control of Molecular Self-Assembly.

作者信息

Hiraoka Shuichi, Takahashi Satoshi, Sato Hirofumi

机构信息

Department of Basic Science, Graduate School of Arts and Sciences, The University of Tokyo, 3-8-1 Komaba, Meguro-ku, Tokyo, 153-8902, Japan.

Department of Molecular Engineering, Kyoto University, Kyoto, 615-8510, Japan.

出版信息

Chem Rec. 2021 Mar;21(3):443-459. doi: 10.1002/tcr.202000124. Epub 2020 Nov 26.

Abstract

The importance of the collaboration of experiment and theory has been proven in many examples in science and technology. Here, such a new example is shown in the investigation of molecular self-assembly process, which is a complicated multi-step chemical reaction occurring in the reaction network composed of a huge number of intermediates. An experimental method, QASAP (quantitative analysis of self-assembly process), developed by us and a numerical approach, NASAP (numerical analysis of self-assembly process), that analyzes the experimental data obtained by QASAP to draw detail molecular self-assembly pathways, which was also developed by us, are introduced, and their application to the investigation of Pd(II)-mediated coordination assemblies are presented. Further, the possibility of the prediction of the outcomes of molecular self-assembly by varying the reaction conditions is also demonstrated. Finally, a future direction in the field of artificial molecular self-assembly based on pathway-dependent self-assembly, that is, kinetic control of molecular self-assembly is discussed.

摘要

实验与理论协作的重要性在许多科技实例中都得到了证明。在此,分子自组装过程的研究展示了这样一个新例子,分子自组装过程是在由大量中间体组成的反应网络中发生的复杂多步化学反应。我们介绍了一种实验方法——QASAP(自组装过程定量分析)以及一种数值方法——NASAP(自组装过程数值分析),NASAP用于分析QASAP获得的实验数据以绘制详细的分子自组装途径,这两种方法均由我们开发,并展示了它们在钯(II)介导的配位组装研究中的应用。此外,还证明了通过改变反应条件预测分子自组装结果的可能性。最后,讨论了基于依赖途径的自组装即分子自组装动力学控制的人工分子自组装领域的未来方向。

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