Kuznetsova Vera, Coogan Áine, Botov Dmitry, Gromova Yulia, Ushakova Elena V, Gun'ko Yurii K
School of Chemistry, CRANN and AMBER Research Centres, Trinity College Dublin, College Green, Dublin, D02 PN40, Ireland.
Everypixel Media Innovation Group, 021 Fillmore St., PMB 15, San Francisco, CA, 94115, USA.
Adv Mater. 2024 May;36(18):e2308912. doi: 10.1002/adma.202308912. Epub 2024 Feb 3.
Machine learning holds significant research potential in the field of nanotechnology, enabling nanomaterial structure and property predictions, facilitating materials design and discovery, and reducing the need for time-consuming and labor-intensive experiments and simulations. In contrast to their achiral counterparts, the application of machine learning for chiral nanomaterials is still in its infancy, with a limited number of publications to date. This is despite the great potential of machine learning to advance the development of new sustainable chiral materials with high values of optical activity, circularly polarized luminescence, and enantioselectivity, as well as for the analysis of structural chirality by electron microscopy. In this review, an analysis of machine learning methods used for studying achiral nanomaterials is provided, subsequently offering guidance on adapting and extending this work to chiral nanomaterials. An overview of chiral nanomaterials within the framework of synthesis-structure-property-application relationships is presented and insights on how to leverage machine learning for the study of these highly complex relationships are provided. Some key recent publications are reviewed and discussed on the application of machine learning for chiral nanomaterials. Finally, the review captures the key achievements, ongoing challenges, and the prospective outlook for this very important research field.
机器学习在纳米技术领域具有重大的研究潜力,能够实现纳米材料结构和性能的预测,推动材料设计与发现,并减少对耗时且费力的实验和模拟的需求。与非手性纳米材料相比,机器学习在手性纳米材料中的应用仍处于起步阶段,迄今为止相关出版物数量有限。尽管机器学习在推动具有高光学活性、圆偏振发光和对映选择性的新型可持续手性材料的开发,以及通过电子显微镜分析结构手性方面具有巨大潜力,但情况依然如此。在本综述中,我们首先分析了用于研究非手性纳米材料的机器学习方法,随后为将这项工作应用于手性纳米材料提供指导。本文概述了合成 - 结构 - 性能 - 应用关系框架内的手性纳米材料,并就如何利用机器学习研究这些高度复杂的关系提供了见解。我们回顾并讨论了一些近期关于机器学习在手性纳米材料应用方面的关键出版物。最后,本综述总结了这一非常重要的研究领域的关键成就、当前面临的挑战以及未来展望。