Shi Yue, Tian Jiaxin, Li Haoyuan
School of Microelectronics, Shanghai University, Shanghai 201800, China.
Key Laboratory of Advanced Display and System Applications, Ministry of Education, Shanghai University, Shanghai 200072, China.
J Chem Inf Model. 2025 Jun 23;65(12):6027-6037. doi: 10.1021/acs.jcim.5c00446. Epub 2025 Jun 5.
Two-dimensional covalent organic frameworks (2D COFs) have been historically synthesized empirically, often resulting in uncontrolled crystallization and inferior crystal sizes, which limit their performance in various applications. Recently, crystallization models tailored for 2D COFs have been developed that demonstrate great potential in facilitating their rational synthesis. Nevertheless, effective strategies to leverage these models for 2D COF synthesis remain underdeveloped, and the specialized expertise required, combined with the high computational costs of exploring the vast chemical space, poses additional barriers to their practical application. In this work, we present a machine learning framework, named MlCOFSyn, that is designed to assist in the synthesis of 2D COFs. This framework explores the application of 2D COF crystallization models by implementing three pivotal functionalities: predicting crystal sizes based on the input monomer addition sequence, reverse-engineering monomer addition sequences to achieve desired crystal sizes, and optimizing monomer addition sequences to produce larger crystals. These functionalities are critical for the controlled synthesis of 2D COFs but have been largely underexplored due to the lack of accessible theoretical tools. The MlCOFSyn framework leverages efficient machine-learning algorithms and features an intuitive graphical interface, enabling its use on consumer-grade computers by nonexperts. By addressing these gaps, the MlCOFSyn framework represents a substantial advancement in facilitating 2D COF research and synthesis.
二维共价有机框架(2D COF)一直以来都是通过经验合成的,常常导致结晶过程不受控制且晶体尺寸较小,这限制了它们在各种应用中的性能。最近,针对2D COF开发的结晶模型已展现出在促进其合理合成方面的巨大潜力。然而,利用这些模型进行2D COF合成的有效策略仍未充分发展,所需的专业知识加上探索广阔化学空间的高计算成本,为其实际应用带来了额外障碍。在这项工作中,我们提出了一个名为MlCOFSyn的机器学习框架,旨在协助2D COF的合成。该框架通过实现三个关键功能来探索2D COF结晶模型的应用:根据输入的单体添加顺序预测晶体尺寸、逆向设计单体添加顺序以实现所需的晶体尺寸,以及优化单体添加顺序以生成更大的晶体。这些功能对于2D COF的可控合成至关重要,但由于缺乏可用的理论工具,在很大程度上尚未得到充分探索。MlCOFSyn框架利用高效的机器学习算法,并具有直观的图形界面,使非专业人员也能在消费级计算机上使用。通过填补这些空白,MlCOFSyn框架在促进2D COF研究和合成方面取得了重大进展。